* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Download Effect of Investor Sentiment on Market Response to Stock Splits
Trading room wikipedia , lookup
Private equity secondary market wikipedia , lookup
Financial economics wikipedia , lookup
Business valuation wikipedia , lookup
Technical analysis wikipedia , lookup
Investment management wikipedia , lookup
Beta (finance) wikipedia , lookup
Algorithmic trading wikipedia , lookup
163 Effect of Investor Sentiment on Market Response to Stock Splits 김근수(경희대) 변진호(이화여대) 165 Effect of Investor Sentiment on Market Response to Stock Splits Keun-Soo Kim Kyung Hee University Graduate School of Pan-Pacific International Studies E-mail: [email protected] Jinho Byun Ewha Womans University School of Business E-mail: [email protected] Feb. 2009 Preliminary Draft This work was supported by FnGuide as the second research support project of Korea Securities Association in 2008 and FnGuide provided research data. 166 Abstract This paper examines whether the investor sentiment affects the market response to stock split announcement and the market response reverses over 12 subsequent months following stock splits. By using stock splits from 1999 to 2006, the paper reports three major empirical results. First, the market response to stock split announcement is positively related to the sentiment. Second, the market response is more pronounced especially for small, young and high volatile stocks, the valuations of which are highly subjective and difficult to arbitrage. Third, we find negative long-term performance of splitting stocks, consistent with empirical evidence of Byun and Jo (2007). Further, the long-term performance is negatively correlated with the sentiment controlled for business cycle in the month prior to stock split announcement and positively with firm size, implying that the initial market response overreacts to stock split announcement, depending on firm size and the sentiment condition. 167 I. Introduction A large number of earlier event studies have assumed that stock price reaction to a corporate news event is independent of investor sentiment based on the efficient market hypothesis. This assumption, however, is challenged by recent behavioral finance studies. They commonly imply that stocks tend to be overpriced (underpriced) during periods of high (low) sentiment which leads to predictable low (high) subsequent returns (Baker and Wurgler (2006, 2007), Kumar and Lee (2006), Franzzini and Lamont (2005), Baker and Stein (2004), Lee, Shleifer, and Thaler (1991), Qui and Welch (2006), and Derrien (2005)). In addition, Barber and Odean (2008) suggest the hypothesis that individual investors are net buyers of attention grabbing stocks such as stocks in the news, stocks experiencing high abnormal trading volume and stocks with extreme one day returns. Attention-driven buying results from the difficulty that investors have searching the thousands of stocks they can potentially buy. This paper refers the hypothesis to the attention bias hypothesis. Combined with theoretic and empirical analysis of the investor sentiment, the attention-bias hypothesis implies that investors may overreact (underreact) to corporate events in the hot (cold) sentiment period. This paper is motivated to test whether the sentiment affects market response to stock split announcement. We select the stock split event for two reasons. First, stock split is a relatively uncomplicated event. A stock split increases the number of outstanding equity shares but has no effect on both the firm’s value and shareholders’ proportional ownership of shares. As such, information implications probably can be gauged rather easily by investors. For stock split event, there are only two dominant hypotheses such as trading range hypothesis (Lakonishok and Lev(1987)) and signaling hypothesis (Grinblatt et al. (1984), Asquith et al. (1989), and McNichols and Dravid(1990)). Given the stylized fact that the 168 market positively responds to a sock split announcement, the announcement is commonly believed to convey favorable private information for future firm’s value. As such, this paper can mainly focus on whether the positive market response is mainly due to the true signal of the future value or the sentiment combined with investor’s other behavioral bias. Second, earlier studies about stock splits in Korean stock markets document that the signaling hypothesis does not appear to explain positive market response to stock split announcement (Nam (2000) and Byun (2003)). Further, Byun and Jo (2007) find that longterm performance of splitting firms’ stocks turns out to be negative, suggesting that the longterm poor performance may result from initial market overreaction to split announcement. This finding is contrary to overseas empirical evidence. For example, it is obvious that there is no evidence in U.S. market suggesting that the market initially overreact to stock split (Ikenberry and Ramnath (2002) and Byun and Rozeff (2003)). As such, we reexamine stock split phenomena and attempt to explain the empirical results of stock splits in Korean stock markets from the view points of behavioral finance. Following Baker and Wurgler (2006)’s principal components analysis, the paper calculates monthly investor sentiment index of 1999 through 2007 by using 6 individual sentiment proxies; monthly trading unbalance of individual investors (Kumar and Lee (2006)), stock fund flows (Franzzini and Lamont(2005)), Customer Expectation Index for business cycle (Qiu and Welch (2006)), relative equity issuance, and turnover ratio (Baker and Wurgler (2006, 2007). This study uses the sentiment index without controlling business cycle and the index controlled business cycle. By using stock splits from 1999 to 2006, we report three major empirical results. First, the market response to stock split announcement is positively related to the sentiment. Second, the market response is more pronounced especially for small, young and high volatile stocks 169 the valuations of which are highly subjective and difficult to arbitrage. Third, we find negative long-term performance of splitting stocks, consistent with empirical evidence of Byun and Jo (2007). Further, the long-term performance is negatively correlated with the sentiment controlled for business cycle in the month prior to stock split announcement and positively with firm size, implying that the initial market response overreacts to stock split announcement, depending on firm size and the sentiment condition. However, long-term performance of split stocks is not negatively correlated to the investor sentiment without controlling business cycle at 10% significance level. Mian and Sankaraguruswamy (2008) report that market-wide investor sentiment influences the stock market response to earnings, dividend changes and stock split announcement in the U.S. market by using Baker and Wurgler’s monthly sentiment index. They, however, do not analyze either long-term performance of stock splits or the effect of splitting firm’s characteristics on the market response. Section II discusses the literature review of investor sentiment and stock splits and explains our empirical hypotheses. Section III describes data of investor sentiment and stock split. Section IV presents the main empirical tests and results. Section V concludes. II. Literature Review and Hypothesis Recent advances in behavioral financial literature, however, have yielded reliable proxies of investor sentiment that appear to influence not only cross-sectional variation but also time series variation in stock returns. They commonly imply that stocks tend to be overpriced (underpriced) during periods of high (low) sentiment which leads to predictable low (high) subsequent returns. In this chapter, we review several investor proxies and provide existing evidence of that investor sentiment influences stock returns. 170 Baker and Stein (2004) build a model where high liquidity is a symptom of the fact that the stock market is dominated by irrational investors and hence overvalued. They find that increases in liquidity, measured by share turnover, have predictive power for future CRSP equal-weighted market returns. By using a data base of more than 1.85 million retail investor transaction over 1991- 1996, Kumar and Lee (2006) show that these trades have common directional component and systematic trading of retail investors explains comovements in stock returns, suggesting that investor sentiment based on the direction of these retail trades influence returns on stocks with high retail concentration. Frazzini and Lamont (2005) show that high sentiment predicts low future returns at long horizon by using mutual fund flows as a measure for individual investor sentiment for different stocks. Baker and Wurgler (2000) document that the share of equity issues in total new equity and debt issues is a strong predictor of U.S. stock market returns between 1928 and 1997. In particular, firms issue relatively more equity than debt just before periods of low market returns, suggesting that the relative issues of new equities including IPOs and SEOs will forecast market returns. Qui and Welch (2006) find that the although consumers polled for the University of Michigan Consumer Confidence Index are not asked directly for their views on securities prices, changes in the consumer confidence index correlate highly with small stock returns and the returns of firms held disproportionately by retail investors, supporting the view that sentiment plays a role in financial markets. They provide evidence that consumer confidence index is a better proxy of investor sentiment than the closed-end fund discount suggested by Lee, Shleifer, and Thaler (1991). In addition, the IPO market is often viewed as sensitive to sentiment, with high first day returns on IPOs cited as a measure of investor enthusiasm (Ritter (1991)). Moreover, Derrien (2005) shows that investor demand of IPOs tends to increase with investor sentiment and 171 influence IPO’s initial returns. Baker and Wurgler (2004) use the dividend premium defined as the difference of the average market-to-book ratios of dividend paying stocks and nondividend paying stocks as the sentiment proxy. Since dividend paying stocks resemble bonds in that their predictable income stream represents a salient characteristic of safety, investors prefer dividend payers to non-payers at the low investor sentiment. Thus, payers are priced at premium in the low sentiment period, resulting in high dividend premium. Barber and Odean (2008) provide the hypothesis that individual investors are net buyers of attention grabbing stocks such as stocks in the news, stocks experiencing high abnormal trading volume and stocks with extreme one day returns. Attention-driven buying results from the difficulty that investors have searching the thousands of stocks they can potentially buy. Consistent with their hypothesis, they find that individual investors are net buyers on high volume days, following both extremely negative and extremely positive one day returns, and when stocks are in the news. We refer this hypothesis to the attention-bias hypothesis. In short, behavioral finance literature provides substantial evidence that sentiment influences stock returns. Since investors are more likely to buy stocks than to sell them in the hot sentiment period, they will buy more stocks that attract their attention if the attention-bias hypothesis holds. Thus, we can expect the investor sentiment may substantially affect returns on firms’ stocks at the time when they announce financial events such as stock splits, dividend increase or decrease, earnings surprise, stock repurchase and so on. To test our expectation, we select the stock split event for two reasons. First, stock split is a relatively uncomplicated event. A stock split increases the number of outstanding equity shares but has no effect on both the firm’s value and shareholders’ proportional ownership of shares. As such, information implications probably can be gauged rather easily by investors. For the simplicity of stock split event, there are only two dominant hypotheses such as 172 trading range hypothesis (McNichols and Dravid (1990), and Lakonishok and Lev(1987)) and signaling hypothesis (Grinblatt et al. (1984), Asquith et al. (1989), and McNichols and Dravid(1990)). As pointed out by Ikenberry et al. (1996), these two hypotheses are not mutually exclusive. If managers believe that there are benefits from share prices trading within some range, but also perceive that is costly for prices to trade below some lower limit, the decision to split will be made conditional on managers’ expectation about future performance. Thus, stock splits can convey a signal of firms’ future performance in the context of the trading range hypothesis. Ikenberry et al. refers this idea to the self-selection hypothesis and they show evidence consistent with the hypothesis. Second, although stock split announcement effect is positive in Korean stock markets like in U.S. stock markets, the positive market response does not appear to be explained by the signaling hypothesis or the self-selection hypothesis. Byun (2003) provides the empirical results that stock split does not convey a favorable signal of splitting firms’ future earnings. Further, Byun and Jo (2007) find that long-term performance of splitting firms’ stocks turns out to be negative, suggesting that the long-term poor performance may result from initial overreaction of the market to split announcement. Although long-term performance of stock splits is controversial, it is obvious that there is no evidence in U.S. market suggesting that the market initially overreact to stock split.1 As such, we reexamine stock split phenomena and attempt to explain the empirical results of stock splits in Korea from the view points of behavioral finance. 1 Ikenberry et al. (2002) report a drift of 9% in the year following stock split announcement by using stock split data from 1988 to 1997. On the contrary, Byun and Rozeff (2003) find that there is no significant long-term abnormal returns by using 12,747 stock splits from 1927 to 1996. 173 Three hypotheses are proposed here from the analysis of the above literature review. Hypothesis 1: The market response to stock splits will be positively related to the investor sentiment in the month preceding the split announcement. Hypothesis 1 is supported by two theoretic and empirical analyses as discussed above; investor sentiment has an effect on stock returns, and such an effect will be stronger at the time of stock split announcement if the attention bias hypothesis holds. By following Baker and Wurgler(2006)’s principal components analysis, this paper will create the investor sentiment index that will be discussed in chapter III. Hypothesis 2: The market response will be stronger for small, young, high volatile, or low profitable stocks in the hot sentiment period in the month preceding stock split announcement. A body of theoretical and empirical research shows the impact of behavioral biases is not uniform across all stocks and stronger for young, small, unprofitable, extreme growths, or distressed stocks. Such stocks are more difficult to value and harder to arbitrage because of high idiosyncratic risk and high transaction costs (Shleifer and Vishny (1997) and Baker and Wurgler (2006)). Since the market interprets stock split announcement as a good signal, the positive market response will be stronger for those stocks in the low investor sentiment period. Hypothesis 3: The post-split performance will be negatively correlated to the investor sentiment in the month preceding stock split announcement and the post-split performance will be poorer for small, young, high volatile, or low profitable stocks if the investor sentiment is high. The investor sentiment drives stock split announcement returns and the post-split performance will be negatively related to the initial investment sentiment. This prediction is supported by substantial evidence of earlier studies that beginning of period proxies for 174 sentiment is negatively correlated with subsequent returns. (Baker and Wurgler (2000, 2006), Frazzini and Lamont (2005)). According to the hypothesis 2, the split announcement return will be stronger for small, young, high volatile, or low profitable stocks in the hot sentiment period. If then, the post-split performance of those stocks will be poorer in the future. The following two chapter will discuss how to test these hypotheses and show the empirical results. III. Data of Investor Sentiment and Stock Split 1. Sentiment Index Prior work suggests a number of proxies to use as time-series conditioning variables. Considering the limit of data availability, Baker and Wurgler (2006, 2007) form a composite index of sentiment based on the common variation in six underlying proxies of sentiment: the closed-end fund discount, NYSE share turnover, the number and average first-day returns on IPOs, the equity share in new issues, and the dividend premium. We create sentiment index by following their method. Only their three proxies such as share turnover, the equity share, and the dividend premium are monthly available in case of Korea.2 The dividend premium does not appear to be significant variable in Korea since dividend amounts that most of firms pay are negligible. Therefore, four other proxies for sentiment are added to the list of individual sentiment proxies. First, we consider monthly trading unbalance of individual investors (BSI) that Kumar and Lee (2006) use. BSI is defined as the net buying volume of retail investors divided by their total trading volume. 3 They show that retail investors’ trading are systematically 2 IPOs were not issued in a number of months from 1999 to 2006 and closed-end fund were not listed as well. 3 , where Dt is the number of days in month t; VBijt (VSijt) is the currency-denomenated 175 correlated and this systematic retail trading explains return comovements particularly for stocks with high retail concentration such as small-cap, value, lower institutional ownership, and lower-priced stocks. Their empirical results imply that when BSI becomes high, retail investors tends to be optimistic. They suggest BSI as retail sentiment. We create monthly BSI for all firms by aggregating individual investor’s daily trading from FnGuide. Second, sock fund flows can be a sentiment proxy. Franzzini and Lamont(2005) argue that fund flows of individual investors can be used as sentiment since they consider economic prospect when they reallocate their funds between different type of funds4. Thus, we can conjecture that when investors expect that economic prospect is promising, the stock fund flows relatively increase. This paper calculates stock fund flow by using monthly Net Asset Value (NAV) of Funds and their monthly returns from ZEROIN. Fund is defined as NAVt – NAVt-1 (1+Rt) where Rt is monthly return on fund from t-1 to t. Since stock fund flow shows positive trend over times, Fund Flow is detrended by the 2 year moving average. Third, Customer Expectation Index for business cycle, from Korea National Statistic Office, is added to the list of sentiment proxy. UBS/Gallop Index is made by directly asking randomly- selected investor households how optimistic they are in stock markets, which may be the best proxy for investor sentiment. According to Qiu and Welch (2006), the University of Michigan Consumer Confidence Index is highly correlated with UGS/Gallop Index although the Confidence Index is not directly made by consumers’ views on securities prices. Like Michigan Consumer Confidence Index, Korea National Statistic Office monthly provides Customer Expectation Index by surveying consumers’ expectation about business buy (sell) volume for stock i on day j of month t. By using mutual fund flows of individual investors from 1980 to 2003, Franzzini and Lamont show that individual investors tend to reallocate their money to the funds whose future performance becomes poor. They claim that individual investors indirectly buy more stocks of a specific company via inflows of mutual fund that own the high proportion of the company’s stocks, resulting in overvaluation of these stocks. As a result, the future performance of mutual fund which their money flows into becomes poor in the process of correcting overvaluation of their stocks. 176 conditions, their financial situation and consumption expenditure in 6 month. This paper uses the natural log of Customer Expectation Index, referred to CEI for sentiment index. Fourth, customer’s deposit for stock investment, from Korea National Statistic Office, is used as a sentiment proxy variable. Since the customer’s deposit is regarded as temporary deposit for buying stocks, practitioners or media frequently consider an increase in customer’s deposits a signal of investors’ optimism about stock markets. We define CD as current month’s customer deposits minus the 2 year moving average of customer deposits, divided by current month’s customer deposits. Positive CD may indicate that the market becomes more optimistic. Following Baker and Wurgler (2006, 2007), we define TURN as the natural log of turnover ratio in Korea Stock Exchange and SR as the amount of gross equity issuance divided by the amount of gross equity issuance plus gross bond issuance using data from Korea National Statistic Office.5 As Baker and Wurgler (2006) point out, these six proxies are likely to include sentiment components as well as idiosyncratic, non-sentiment-related components. We use principle components analysis to isolate the common component. By following Baker and Wurgler’s two-stage method, we define SENT as the first principal component of the correlation matrix of six variables including BSIt-1, FUNDt-1, CEIt-1, CDt-1, TURNt-1, and SRt-1. Two-stage principal component analysis leads to the following sentiment index. SENTt = 0.219 BSIt-1 + 0.209 FUNDt-1 + 0.571 CEIt-1 + 0.583 CDt-1 +0.141 TURNt-1 +0.472 SRt-1 (1) 5 Baker and Stein (2004) suggest that turnover, or more generally liquidity, can serve as a sentiment index. In a market with short-sales constraints, irrational investors participate, and thus add liquidity, only when they are optimistic. Thus, high liquidity is a symptom of overvaluation. Baker and Wurgler (2000) find that high values of the equity share predict low market returns. 177 where the sentiment index is standardized with mean=0 and standard deviation=0. The first principal component explains 40 percent of the sample variance. The coefficient of each proxy variable in equation (1) is consistent with the expected sign. For example, when the individual investors buy stocks more than sell in the preceding month, Sentiment Index in the current month increases as well. Likewise, when fund flow, customer’s deposit, turnover ratio, and equity issuance relatively increase in the preceding month, Sentiment Index rises. Unlike Baker and Wurgler (2006)’s results, the share of equity issuance in total equity and bond that is firm’s supply variable is not leaded by the other proxies indicating investor behavior.6 The monthly sentiment index may be difficult in capturing the expected timing of individual proxy variables related to the investor sentiment since it may take several months for the firm to reflect the investor sentiment by increasing equity supply. Baker and Wurgler (2006) also consider the possibility that the principal components analysis may not distinguish between a common sentiment component and a common business cycle component. To avoid this possibility, they construct a second sentiment index that explicitly removes business cycle variation from each of the six raw proxies prior to the principal components analysis. Following their methodology, we construct the sentiment index controlled for business cycle by regressing each of the six proxies on the six business cycle related variables: growths of industrial production index, durable sales index, semidurables sales index, and non-durable sales index, service production index, and coincident composite index for business cycle change (Korea National Statistic Office). The residuals from these regressions may be cleaner sentiment proxies. We construct the sentiment index by using these residuals that are orthogonal to business cycle variables. We 6 While investor behavior immediately reflects sentiment in stock markets, firm’s supply may reflect the sentiment with time lags. 178 refer this sentiment index to BSENT. The same procedure as before provides BSENT as follows. BSENTt = 0.303 RBSIt-1 + 0.118 RFUNDt-1 + 0.537 CEIt + 0.574 CDt-1 +0.061 TURNt-1 +0.522 SRt-1 (2) where all independent variables indicate the residuals from regression of the 6 individual proxies on the six business cycle variables. The first principal component explains about 39 percent of the sample variance of the orthogonalized variables. All residuals of the 6 variables are positively associated with the sentiment index controlled for business cycle which is consistent with expected signs. Figure 1 shows the sentiment indices graphically. These two indices move similarly although SENT changes smoothly. They were high in 1999 when IT bubble rose to the peak and low in the late of 2000 when IT bubble burst. The sentiment level, however, is not necessarily high when the stock price is high. For instance, BSENT reached the lowest level in November of 2006, when KOSPI index was 1,295. Thereafter, KOSPI index sharply rose up to higher than 2,000 at the end of October, 2007, suggesting that the sentiment index may have predictability power of future stock returns. Figure 1 also shows that the sentiment does not sharply change over short time and tends to persist at least over several months. In Figure 2, SENT and BSENT are divided into four groups based on their level in ascending order. We refer these sentiment quartiles to SENT4 and BSENT4. When SENT4=1 (4), the sentiment index is the lowest (highest). When SENT4 and BSEN4 are equal to 1, siz month buy and hold returns are on average 18.48 percent, and 18.81 percent, respectively. On the contrary, when SENT4 and BSENT4 are equal to 4, the subsequent six month buy and hold returns are averaged to -4.69 percent and -3.47 percent, respectively. These results suggest that the sentiment index may have predictability of future stock returns. 179 2. Stock Splits We manually collected stock split sample including the stock split company’s name, code, announcement date, and split factor from Korea Exchange. The sample is formed by identifying all KSE and KOSDAQ stocks from 1999 to 2006. We also require that the firm’s daily return be reported for at least 10 trading days around the announcement date, resulting in 608 stock split sample. FnGuide provided all firm’s daily returns, closing prices, and equity market value (size). Size is calculated by the number of outstanding ordinary stocks multiplied by the closing price at the end of each month. Financial data such as equity book value 7 and operating earnings were downloaded from the data base of Korea Listed Companies Association. The number of sample, however, varies depending on the availability of data such as the firm’s size (n=551) and equity book value (n=519). Table 1 displays the number of stock splits based on announcement year, the sentiment index and split factor. Monthly sentiment quintile SENT4 (BSENT4) is formed on the basis of SENT (BSENT) in the month prior to split announcement from January of 1999 to December of 2006. More than 50 percent stock splits occur in the month after the sentiment is the highest (SENT4=4, BSENT4=4). 8 This result suggests that a company tends to conduct stock splits at the time of high investor sentiment. It, however, does not necessarily imply that the company recognizes high sentiment time or uses it as a good opportunity of stock split. The trading range hypothesis suggests that splits realign per-share prices to a preferred price range (McNichols and Dravid(1990)). Since the need to realign share prices 7 Negative book value is treated as missing value since such a book to market ratio is not comparable. 8 The number of sample for BSENT4 is 38 less than that for SENT4 since BSENT is not available in January of 1999 for the lack of one business cycle variable 180 usually stems from a presplit price runup (Laknoishok an Lev(1987)), the trading range hypothesis links splits more to past performance than to future performance. Since the sentiment index is positively correlated with stock price, the high sentiment comes with high stock price. Concentration of stock splits on high sentiment time is consistent with the trading range hypothesis as well. 73 percent of stock splits are ten-for-one stock splits in Korea as shown in <Table 1>, while two-for-one stock splits are dominant in U.S.(Byun and Rozeff(2003)). There are 6 cases with more than 10-for-one stock splits. Two-for-one or five-for-one stock splits are common in case of less than ten-for-one stock split in Korea. IV. Market Reaction to Split Announcement and Sentiment The market reaction to split announcements is examined by computing 11-day market adjusted returns from five days before to two days after the split announcement. Marketadjusted returns are calculated by subtracting the 11 day holding period return on the valueweighted market portfolio from 11 day holding period return for the splitting firms. The market-adjusted returns is referred to as MAR(-5,5). 1. Univariate Analysis Table 2 reports the market reaction to the split announcements for all splitting firms by the sentiment index quartile in the month preceding the split announcements. The mean announcement return of 12.22 percent (t=7.90) for all splitting cases (608) indicates that the market interprets split announcements as good news. The mean announcement return for 588 splitting cases (excluding data in January of 1999) is 12.70 percent (t=7.96). Partitioning the sample by the sentiment index quintile shows that the market adjusted returns significantly vary across the sentiment index quintile groups. When the split 181 announcement belongs to SENT4=1 or 2, the market adjusted return of 5.66 percent (t=1.29) and 1.89 percent (t=0.62) respectively is much less than the mean announcement return and not statistically significant. The split announcement return at SENT4=4 is 18.72 percent (t=8.09), much higher than the mean announcement return of 12.70 percent. The return difference between the highest sentiment quintile group and the lowest sentiment group is 13.06 percent (t=2.63). The market adjusted return by the sentiment quintile controlled for business cycle also shows the similar result and consistently increases as BSENT4 increases. Thus, the market response to the split announcement is only statistically significant when the sentiment is high. In Table 3, the market reaction is reported for the splitting firms by firm size, book to market ratio, post split quintile and split factors. The firm size and book to market quintiles are formed in ascending order at the end of the month preceding stock split announcement. Post split price is calculated by taking the closing price for the month preceding the split announcement, and dividing the price by split factor within the same size quintile. The post split price quintile is formed in ascending order as well. The number of splitting firms with the largest size quintile is only 57, while that of the other splitting firms is at least over 110. The small number of stock splits with large firm is contrary to the evidence of Ikenberry et al. (1996) that large firm usually undertakes stock splits in the U.S. market. The announcement return is 12.37 percent (t=3.24) for the smallest size quintile, and 1.88 percent for the largest size quintile. The return difference of 10.49 percent (t=2.25) is consistent with evidence of Brennan and Copeland (1988), and Grinblatt et al. (1984) that split announcement returns are higher for small firms. If split announcement contains new information about the firm’s value, the announcement is more informative for small firms since less information about small firms generally is available to investors. 182 The negative relation between size and announcement return, however, can be explained by the attention bias suggested by Barber and Odean (2006). They argue that individual investors are net buyers of attention grabbing stocks, e.g., stocks in the news, stocks experiencing high abnormal trading volume, and stocks with extreme one day returns. Such an attention bias results from the fact that investors have time to weigh the merits of only a limited number of stocks. We conjecture that the attention bias of the investors can be more serious for small stocks since the investors usually do not have information even about their names. As such, although stock splits do not convey any valuable information, individual investors may buy more small firms’ stocks than large firms’ at split announcement event. The buying pressure would be higher in the hot sentiment period, resulting in substantial increase in the stock price. Table 3 also reports the relation between stock split and book-to-market quintile. About 37 percent of splitting firms fall in low book-to-market quintile, which is consistent with the finding of earlier studies that splitting firms’ usually experienced the stock price runup prior to stock split (McNichols and Dravid (1990), Lakonishok and Lev (1987)). Lakonishok, et al. (1994) and Haugen (1995) suggest book-to-market ratio as a measure of undervaluation, with high book-to-market firms being more likely to be undervalued. As the signaling hypothesis suggests, if a stock split is a signal of undervaluation, and if book-to-market is a good proxy of the degree of undervaluation, the book-to-market quintile is expected to have positive association with the market response to stock splits. However, the book-to-market quintile does not appear to be a significant factor in determining the market response to split announcement, while the empirical results of Ikenberry et al. (1996) reveals the negative relation between the market response and book-to-market quintile, contrary to the expectation 183 of the signaling hypothesis combined with the argument that book-to-market is a good proxy of the degree of undervaluation. Brennan and Hughes (1991) argue that splits resulting in low post-split share prices provide more credible signals of management’s private information, suggesting that the announcement returns should be negatively related to post-split share prices. Contrary to their argument, the result of Table 3 reveals that the largest announcement return is observed for the lowest post-split price firms, which is not consistent with the signaling hypothesis. More than 50 percent of the sample falls in the lowest post-price quintile because high split factor such as ten-for-one split is dominant in Korea. Table 3 also reports the positive relation between the market response and the split factor. The highest announcement return of 26.19 percent (t=1.08) is observed in the split factor group that is higher than ten-for-one split. The announcement return for the high split factor group, however, is not statistically significant and its number is only 6. The return difference between the low split factor and middle split factor groups is 9.76 percent (t=3.55), indicating that the market response to ten-for-one split announcement is higher than for two-for-one or five-for one split announcement. McNichols and Dravid (1990) argue that the firm signals their private information about future earnings by their choice of split factor. They find that split factors are increasing in earnings forecast errors, implying that higher split factor signals more promising private information about future earnings. The positive relation between the market response and the split factor reported by Table 3 is consistent with this signaling hypothesis. The positive relation, however, is also consistent with the attention bias hypothesis since higher split factor can attract more attention of investors. 2. Multivariate Analysis 184 The market response is regressed on those variables mentioned in the univariate analysis to control their interaction in Table 4. Sentiment index and split factor are positively related to the market response, and firm size is negatively related to the market response. The positive relation between investor sentiment (SENT4 or BSENT4) and the market response (MAR(-5,5)) is consistent with the first hypothesis that the market response to stock splits will be positively related to the investor sentiment. All these results are consistent with the univariate evidence. Book-to-market does not appear to contribute to explaining the split announcement returns, which is also consistent with the result of the univariate analysis. The positive relation between the post-split price and the announcement return is opposite to not only the evidence of Ikenberry et al. (1996) but also the signal related argument suggested by Brennan and Hughes (1991). Since high split factor such as ten-for-one split is common in Korea, the market may not interpret low post split as favorable private information. It, however, is not clear why there is positive correlation between the post split share price and announcement return. Behavioral finance literature documents that the impact of behavioral biases is not uniform across all stocks. Small, young, volatile, unprofitable, extreme growth, and nondividend paying stocks are more likely to vulnerable to the sentiment since they are more difficult to hedge and to arbitrage (See, for example, Shleifer and Vishny (1997) and Baker and Wurgler (2006)). Thus, we expect the second hypothesis that the market response would be greater for these stocks when the sentiment is high. To test the validity of this hypothesis, we include additional variables such as age, stock return volatility and low profits of the firms in the sample. Age quintile is determined in ascending order on the basis of the trading days from the firm’s first appearance on Korea Stock Exchange or KOSDAQ Exchange to the last trading days of the month prior to split 185 announcement. When firm’s age belongs to age quintile 1 or 2, it is classified as the young firm. Stock return volatility is measured as the standard deviation of monthly returns over the preceding 12 months. Firms are referred to high volatile firm when their stock return volatility belongs to the first and second highest volatility group. Profits are measured as ROE in terms of operating earnings divided by total equity book value. Low profitable firm is indentified when its ROE belongs to the first or second lowest ROE quintile. Table 5 includes four additional dummy variables such as Small Size-D, Young-D, High Vol.-D, and Low Profit-D. These four dummies are equal to one when two conditions are satisfied. First, SENT4 (BSENT4) should be equal to 4. Second, Young-D, High Vol.-D, and Low Profit-D should be classified as young firms, high volatile firms, and low profitable firms as discussed above, respectively. Similarly, Small Size-D is one when firms belong to SZ=1 or 2 with SENT4 (BSENT4)=1. If both conditions are not satisfied, these dummies are zero. Table 5 shows that the effect of sentiment on the announcement returns depends on the firm’s characteristics such as size, age and return volatility. In R1 of Table 5, the coefficient of Small Size-D is 12.69 percent (t=2.44). The market response to stock split announcement is stronger for small firms in the hot sentiment period. The coefficient of SZ becomes not statistically significant when Small Size-D is added to regression equation. This result implies that the effect of firm size on the market response is statistically significant only in the hot sentiment period. Young-D and High Vol.-D have significant effects on the market response, indicating that the effect of the sentiment on announcement returns is stronger for both young firms and high volatile firms particularly in the hot sentiment. Further, the investor sentiment does not significantly affect the market response when Young-D is added to the equation in R2 of Table 5. This result suggests that the sentiment effect concentrate on young firms. The market 186 response, however, is not significantly higher for low profitable firms in the hot sentiment. Thus, except low profitable stocks, the results of Table 5 are consistent with our second hypothesis. All these results are same regardless of whether the sentiment is measured as SENT4 or BSENT4. The coefficients of the other variables are similar to those of Table 4 Since the signaling hypothesis does not claim that stock split announcement is more positively informative for small stocks in the hot sentiment period than in the other sentiment period, the empirical results of Table 5 is hardly reconciled with the signaling hypothesis. Except Low Profit-D, the significant effects of the other dummies on the announcement returns are consistent with evidence of Baker and Wurgler (2006) that a wave of investor sentiment has larger effect on securities whose valuation are highly subjective and difficult to hedge. Our findings are also consistent with the attention bias hypothesis of Barber and Odean (2008) that investors tend to buy the attention grabbing stocks that have event announcement. As such, we conjecture that the market response may overreact to stock split announcement particularly in the hot investor sentiment period. Further, stock split announcement may not contain any favorable signal of firm’s value but investors may misinterpret the announcement as favorable signal particularly in the hot sentiment period. To test our conjecture, we undertake long-term performance test for splitting stocks in regard to the sentiment index. 3. Analysis on Long-term Performance The long-term performance subsequent to the split announcements is calculated in a manner similar to the buy-and-hold used by Ikenberry, et al. (1996). We calculate the buy-and-hold return beginning in the month following the split announcement. If a splitting firm stops trading for some reason, the investment in the splitting firm is maintained through the month trading ceases. The 187 remaining months are assumed to be invested to the reference portfolios. The reference portfolio is formed using size and book-to-market benchmarks. Benchmarks are determined by sorting all eligible KRX firms each month into size quintiles on the basis of market value. Within each size quintile, firms are further sorted into book-to-market quintiles. Thus, for each month in the sample period, all eligible KRX firms are sorted into one of 25 possible size and book-to-market portfolios. Each split firm is matched with one of the 25 reference portfolios formed in the month of split announcement. The overall reference portfolio return is computed assuming both equal-weighting and valueweighting and monthly rebalancing among the portfolios matched with each of the split firms. Excess performance (EBHAR or VBHAR) is defined as the difference between the annual return to split firms and the concurrent mean return to the matched size and book-to-market reference portfolios. BHAR(1,12) is classified by the sentiment quintiles that are formed in the month preceding split declaration. Table 6 reports the long-term abnormal returns for the stock split firms by the sentiment index quartile in the month preceding the split announcements. Panel A reports the both equally-weighted buy-and-hold abnormal returns (EBHARs) and value-weighted buy-andhold abnormal returns (VBHARs) for 12 months after the announcement. In order to minimize the effect of extreme values, we winsorize the data at 1% in Panel B. The mean long-term abnormal return of -13.92% (t=-2.46) to -20.82% (t=-3.98) for all splitting cases indicate that the market overreacts to split announcements. These results are consistent with previous studies of Byun and Jo (2007) which show the negative long-term performance of stock splits in Korean stock market. The mean buy-and-hold abnormal returns for winsorizing sample also show the similar results which are -7.79% (t=-2.41) to -18.81% (t=4.66). Partitioning the sample by the sentiment index quintile shows that the long-term BHARs significantly vary across the sentiment index quintile groups. When the split announcement 188 belongs to SENT4=1 or 4, the mean of BHARs is much less than the mean BHARs of SENT4=2 or 3. The long-term performance of stock splits is worse in low or high investor sentiment than in the middle sentiment. However, the statistical reliability of the long-term performance in low investor sentiment consistently is lower than that in high investor sentiment. Particularly in case of the sentiment quartile controlled for business cycle, EBHAR(1,12) is statistically significant only at 10%, while all BHAR (1,12) are significant at 1%. Nevertheless, we fail to find strong negative correlation between the sentiment and long-term performance in univariate analysis since poor long-term performance is observed in low investor sentiment. The result of cross sectional regression of long-term performance is presented in Table 7. We test with both equally-weighted and value-weighted returns as dependent variables. The regression result shows that size quintile is positively related to the long-term performance of splits. It means as size increases the long-term BHAR also increases, reversing initial negative relation between firm size and the market response. The sentiment quintile controlled for business cycle also shows significant negative relation to the performance. Thus, the negative relation of the post-split performance with the sentiment controlled for business cycle is consistent with our third hypothesis discussed in Section II. However, the third hypothesis is not valid for investor sentiment without controlling business cycle. In Table 8, we regress long-term BHAR (EBHARs) to BSENT4, SZ, and four dummy variables of firm characteristics. Dummy variables are Small Size-D (size quintile=1 and 2, others=0), Young-D (tradingdays=1 and 2, others=0), High Vol.-D (stand5=1 and 2, others=0), and Low Profit-D (ROE5=1 and 2, others=0). When we include small size dummy, the individual effect of sentiment index is disappeared. Interaction of small size and sentiment becomes the most significant factor in determining long-term performance of split stocks. 189 This result implies that the market tends to overreact to split announcement for small stocks in the hot sentiment (Table 5) by dramatic increases in return announcement and market overreaction be reversed over the following 12 months. Unlike Table 5, however, long-term under-performance of split firms seems to be subject to small firm effect without its interaction of investor sentiment. In short, long-term under-performance of split firms over 12 months following stock split announcement is consistent with the previous empirical results documented by Byun and Jo (2007). In addition, long-term performance of split firms is negatively related to the investor sentiment controlled for business cycle and stronger for small firms combined with investor sentiment, consistent with our third hypothesis. However, investment sentiment without controlling business cycle, young or volatile firms do not appear to explain long-term performance of split stocks. According to Byun and Jo (2007) who use stock split data from 1998 to 2002, 12 month buy and hold returns do not appear to be significantly negative while 24 month returns to be significantly negative. As such, one possible explanation about such weak results except small firms may be due to shorter holding period months. V. Conclusion This paper examines whether the investor sentiment affects the market response to stock split announcement and the market response reverses over 12 subsequent months following stock splits. By using stock splits from 1999 to 2006, the paper reports three major empirical results. First, the market response to stock split announcement is positively related to the sentiment. Second, the market response is more pronounced especially for small, young and high volatile stocks the valuations of which are highly subjective and difficult to arbitrage. Third, we find negative long-term performance of splitting stocks, consistent with empirical 190 evidence of Byun and Jo (2007). Further, the long-term performance is negatively correlated with the sentiment controlled for business cycle in the month prior to stock split announcement and positively with firm size, implying that the initial market response overreacts to stock split announcement, depending on firm size and the sentiment condition. However, long-term performance of split stocks is not negatively correlated to the investor sentiment without controlling business cycle at 10% significance level and not stronger for young, high volatile stocks. Our empirical studies contribute to the recent financial research in the following ways. Our evidence improves understanding of stock market response to stock split announcement by showing that investor sentiment tends to influence the market response in Koreas stock markets. In addition, poor long-term performance related to the sentiment generally suggests that long-term post-announcement return as well as short-term announcement return may depend on investor sentiment condition at the time corporate events announcement. For instance, when corporate events convey favorable signs to the market in hot (low) sentiment period, the market response may overreact (underreact) to the events, long-term performance may reverse (continue in the same direction of market response) later. In conclusion, our evidence shows that investor sentiment plays an important role in determining stock prices in case of stock split event. It, however, is still questionable whether the sentiment can affect short-term announcement return and long-term post- announcement return in case of other events. Further, a large body of behavioral finance literature documents that retail or individual investors are more vulnerable to the sentiment but we still do not know how they behave in high or low sentiment period especially at the time of corporate announcement events. Future research will be needed to better understand how investor sentiment can change their trading behaviors. 191 Figure 1. Monthly Sentiment Index: 1999 to 2007 SENT is the sentiment index that is the first principal component of levels and changes in six measures of sentiment: trading unbalance of individual investors (BSI), stock fund flow (FUND), customer expectation index for business cycle (CEI), customer’s deposit for stock investment (CD), log of turnover ratio (TURN), and the equity share in new issues (SR). BSENT is another sentiment index that is the first principal component of levels and changes in the 6 residuals generated by regression of the above 6 measures of sentiment on growths of industrial production index, durable sales index, semi-durables sales index, and non-durable sales index, service production index, and coincident composite index for business cycle change (Korea National Statistic Office). SENTt = 0.219 BSIt-1 + 0.209 FUNDt-1 + 0.571 CEIt-1 + 0.583 CDt-1 +0.141 TURNt-1 +0.472 SRt-1 BSENTt = 0.303 RBSIt-1 + 0.118 RFUNDt-1 + 0.537 RCEIt + 0.574 RCDt-1 +0.061 RTURNt-1 +0.522 RSRt-1 ZKHUHWLQGLFDWHVPRQWK 192 Figure 2. Predictability of the sentiment index quintile on KOSPI Returns Monthly sentiment quintile SENT4 (BSENT4) is formed on the basis of monthly sentiment index in the ascending order from January of 1999 to December of 2006. For instance, the lowest quartile is SENT4(BSENT4)= 1 and the highest quartile is SENT4(BSENT$)= 4. Likewise, P6 is six month buy and hold return quintile in ascending order on the basis of six month buy and hold return from t-5 to t=0 where t indicates month. Six month buy and hold returns on KOSPI from t=1 to t=6 are calculated. 193 Table 1. Number of Stock Splits based on Year, Sentiment Index Quartile, and Split Factor from 1999-2006 The table indicates the number of stock splits by announcement year, the sentiment index and split factor. Monthly sentiment quintile SENT4 (BSENT4) is formed on the basis of SENT (BSENT) from January of 1999 to December of 2006. More than 50 percent stock splits occur in the month after the sentiment is the highest (SENT4=4, BSENT4=4).9 Spilt factor is divided into three groups. The first group’s split factor is less than 10-for-1 stock split, and the second (third) group is equal to (higher than) 10-for-1 stock splits. Year 1999 2000 2001 2002 2003 2004 2005 2006 Total SENT4 0 (0) 4 (0) 41 (16) 1 (1) 9 (12) 5 (14) 7 (22) 8 (10) 75 (75) Sentiment Index Quartile SENT4 SENT4 0 0 (0) (8) 2 2 (3) (5) 28 1 (32) (19) 0 15 (16) (22) 37 6 (30) (6) 34 0 (25) (0) 10 26 (2) (19) 2 43 (7) (30) 113 93 (115) (109) SENT4 142 (114) 108 (108) 0 (3) 77 (54) 0 (4) 0 (0) 0 (0) 0 (6) 327 (289) <10 Split Factor =10 >10 18 121 3 142 (122) 13 103 1 116 17 53 0 70 28 63 2 93 20 32 0 52 16 23 0 39 20 22 1 43 26 27 0 53 158 444 6 608 (588) Total Parenthesis indicates the number of BSENT4 covering Feb. 1999 through Dec. 2006. The number of sample for BSENT4 is 38 less than that for SENT4 since BSENT is not available in January of 1999 for the lack of one business cycle variable 9 194 Table 2. Announcement Returns for Stock Splits by Sentiment Index Quartile: 1999 to 2006 The market reaction to split announcements is examined by computing 11-day market adjusted returns from five days before to two days after the split announcement. Market-adjusted returns are calculated by subtracting the 11 day holding period return on the value-weighted market portfolio from 11 day holding period return for the splitting firms. The market-adjusted returns is referred to as MAR(-5,5). MAR (-5,5) is classified by the sentiment quintiles that are formed in the month preceding split declaration. Sentiment Index Quartile SENT4=1 SENT4=2 Sentiment SENT4=3 Index SENT4=4 Total Sentiment BSENT4=1 BSENT4=2 Index controlled BSENT4=3 Business BSENT4=4 Cycle Total N MAR(-5,5) 75 113 93 327 608 75 115 109 289 588 5.66 1.89 7.19 18.72 12.22 1.82 5.58 6.79 20.59 12.70 *, **, *** indicate 10%, 5% and 1% statistical significance. t-Stat. 1.29 0.62 2.78*** 8.09*** 7.90*** 0.47 1.60 3.32*** 8.00*** 7.96*** 195 Table 3. Announcement Returns for Stock Splits by Size, B/M, Post Split Quintile and Split Factor: 1999 to 2006 The market reaction to split announcements is examined by computing 11-day market adjusted returns from five days before to two days after the split announcement. Market-adjusted returns are calculated by subtracting the 11 day holding period return on the value-weighted market portfolio from 11 day holding period return for the splitting firms. The market-adjusted returns is referred to as MAR(-5,5). MAR(-5,5) of the splitting stocks are classified by firm size, book to market ratio, post split quintile and split factors. The firm size and book to market quintile are formed in ascending order at the end of the month preceding stock split announcement. Post split price is calculated by taking the closing price for the month preceding the split announcement, and dividing the price by split factor within the same size quintile. Post split price quintile is formed in an ascending order within the same quintile. Spilt factor is divided into three groups. The first group’s split factor is less than 10-for-1 stock split, and the second (third) group is equal to (higher than) 10-for-1 stock splits. By Size Quintile (551) Book to Market Quintile (519) Post Split Quintile (551) Split Factor (608) SubGroup SZ=1 SZ=2 SZ=3 SZ=4 SZ=5 BM=1 BM=2 BM=3 BM=4 BM=5 PP=1 PP=2 PP=3 PP=4 PP=5 SF=1 SF=2 SF=3 N MAR(-5,5) 112 121 130 131 57 194 119 91 73 42 300 120 72 40 19 158 444 6 12.37 15.79 12.60 9.27 1.88 11.60 11.89 8.15 11.92 12.82 8.18 14.99 9.00 19.00 30.95 4.88 14.64 26.19 *, **, *** indicate 10%, 5% and 1% statistical significance. t-Stat. 3.24*** 3.90*** 3.63*** 3.43*** 0.71 4.31*** 3.18*** 3.02*** 3.58*** 1.93* 4.20*** 4.22*** 2.30** 2.40** 2.25** 2.55** 7.43*** 1.08 196 Table 4. Cross Sectional Regressions of the Announcement Reaction to Stock Split: 1999 to 2006 This table reveals regression coefficients from regressing the announcement return on sentiment quartile(SENT4 and BSENT4), size quintile, book-to-market quintile, post-split quintile, and split factor. The market reaction to split announcements is examined by computing 11-day market adjusted returns from five days before to two days after the split announcement. Market-adjusted returns are calculated by subtracting the 11 day holding period return on the value-weighted market portfolio from 11 day holding period return for the splitting firms. The market-adjusted returns is referred to as MAR(-5,5). The firm size (SZ) and book to market quintile (BM) are formed in ascending order at the end of the month preceding stock split announcement. Post split price is calculated by taking the closing price for the month preceding the split announcement, and dividing the price by split factor within the same size quintile. Post split price quintile (PP) is formed in an ascending order within the same quintile. Spilt factor is divided into three groups (SF). The first group’s split factor is less than 10-for-1 stock split, and the second (third) group is equal to (higher than) 10-for-1 stock splits. Mar (-5,5)i = Į + ȕ1 SENT4 (or BSENT4) + ȕ2 SZi + ȕ3 BMi + ȕ4 PPi + ȕ5 SFi + İi splitting stock. Į Intercept SENT4 R1 -13.14 (-1.29) 4.64 (3.18)*** R2 -18.96 (-2.32)** 5.16 (3.57)*** BSENT4 SZ ȕj BM PP SF 2 Adj-R N -4.10 (-3.15)*** 0.35 (0.27) 3.57 (2.50)** 8.13 (2.36)** 4.70% 519 -3.72 (-2.97)*** 5.15 (3.57)*** 8.83 (2.55)** 5.59% 551 R3 -12.55 (-1.22) R4 -18.75 (-2.28)** 4.92 (3.28)*** -3.90 (-2.86)*** 0.31 (0.23) 3.06 (2.06)** 7.93 (2.22)** 4.63% 499 5.57 (3.74)*** -3.52 (-2.68)*** Parenthesis indicates t-value. *, **, *** indicate 10%, 5% and 1% statistical significance. where i indicates 4.64 (3.11)*** 8.58 (2.40)** 5.60% 531 197 Table 5. Cross Sectional Regressions of the Announcement Reaction to Stock Split in regard to small, young, volatile, or low profitable firms in the hot sentiment: 1999 to 2006 This table reveals regression coefficients from regressing the announcement return on sentiment quartile(SENT4 and BSENT4), size quintile, post-split quintile, and split factor, and four additional dummy variables. All variables except four dummies are same in Table 4. Four dummies are Small Size-D, Young-D, High Vol.-D, and Low Profit-D. They are equal to one when two conditions are satisfied. First, BSENT4 should be equal to 4. Second, splitting firms should be classified as small firms, young firms, high volatile firms, and low profitable firms defined as below. Small firm is identified when they belong to the first or second smallest size quintile. Young firms are identified when their trading days up to the last trading day of the month prior to split announcement belong to the first and second shortest trading day quintile. High volatile firms are firms whose monthly stock return standard deviation, over the preceding 12 months, belong to the first or second highest standard deviation quintile. When the firms’ ROE, defined as operating earnings divided by equity book value, belong to the first or second lowest ROE quintile, they are called as low profitable firms. If these two conditions are not satisfied, all these dummies are zero. Mar (-5,5)i = Į + ȕ1 SENT4 (or BSENT4) + ȕ2 SZi + ȕ3 BMi + ȕ4 PPi + ȕ5 SFi + ȕ6 Dummy + İi where i indicates splitting stock and Dummy is Small Size-D, Young-D, High Vol.-D or Low Profit-D. Į Intercept BSENT4 SZ PP SF ȕj Small Size-D YoungD High Vol.-D Low Profit-D Adj-R2 N R1 -20.94 (-2.55)** 3.24 (1.90)* -1.47 (-0.98) 4.86 (3.27)*** 8.94 (2.51)** 15.06 (2.76)*** R2 -8.20 (-0.92) 0.72 (0.33) -3.48 (-2.67)*** 4.35 (2.93)*** 7.63 (2.14)** R3 -16.14 (-1.95)* 3.97 (2.41)** -3/49 (-2.66)*** 4.88 (3.27)*** 8.40 (2.35)** R4 -16.81 (-2.02)** 4.57 (2.80)*** -3.51 (-2.67)*** 4.72 (3.17)*** 8.38 (2.34)** 14.79 (3.0)*** 10.12 (2.24)** 6.78% 531 7.00% 531 6.31% 531 Parenthesis indicates t-value. *, **, *** indicate 10%, 5% and 1% statistical significance. 6.84 (1.49) 5.81% 531 198 Table 6. Long-term Abnormal Returns (12 month) for Stock Splits by Sentiment Index Quartile: 1999 to 2006 The long-term performance subsequent to the split announcements is calculated in a manner similar to the buy-and-hold used by Ikenberry, et al. (1996). We calculate the buy-and-hold return beginning in the month following the split announcement. If a splitting firm stops trading for some reason, the investment in the splitting firm is maintained through the month trading ceases. The remaining months are assumed to be invested to the matching portfolios. The reference portfolio is formed using size and book-to-market benchmarks. Benchmarks are determined by sorting all eligible KRX firms each month into size quintiles on the basis of market value. Within each size quintile, firms are further sorted into book-to-market quintiles. Thus, for each month in the sample period, all eligible KRX firms are sorted into one of 25 possible size and book-to-market portfolios. Each split firm is matched with one of the 25 reference portfolios formed in the month of split announcement. The overall reference portfolio return is computed assuming both equal-weighting and value-weighting and monthly rebalancing among the portfolios matched with each of the split firms. Excess performance (EBHAR or VBHAR) is defined as the difference between the annual return to split firms and the concurrent mean return to the matched size and book-to-market reference portfolios. BHAR(1,12) is classified by the sentiment quintiles that are formed in the month preceding split declaration. In order to minimize the effect of extreme values, we also winsorize the data at 1%. Sentiment Index Quartile SENT4=1 SENT4=2 Sentiment Index SENT4=3 SENT4=4 Total Sentiment Index controlled Business Cycle BSENT4 =1 BSENT4 =2 BSENT4 =3 BSENT4 =4 Total EBHAR(1,12) -21.56 (-1.93)* -14.89 (-2.29)** -5.61 (-0.85) -21.88 (-2.30)** -17.96 (-3.26)*** -20.42 (-1.84)* -9.80 (-1.54) 15.88 (0.99) -39.02 (-5.11)*** -20.82 (-3.98)*** VBHAR(1,12) -21.56 (-1.93)* -14.89 (-2.29)** -5.61 (-0.85) -23.47 (-3.64)*** -18.81 (-4.66)*** -11.04 (-1.24) -8.24 (-1.36) 8.51 (0.74) -15.29 (-3.93)*** -8.97 (-2.71)*** winsorize at 1% EBHAR(1,12) VBHAR(1,12) -18.44 -18.64 (-1.79)* (-1.80)* -13.90 -13.90 (-2.19)** (-2.19)** -4.59 -4.59 (-0.72) (-0.72) -17.23 -13.92 (-2.91)*** (-1.52) -14.75 -12.99 (-3.95)*** (-2.46)** -9.98 -17.00 (1.14) (-1.65) -7.88 -9.03 (-1.34) (-1.47) 9.03 18.84 (0. 83) (1.11) -13.52 -31.88 (-3.46)*** (-4.78)*** -7.79 -16.16 (-2.41)** (-3.26)*** Parenthesis indicates t-value. *, **, *** indicate 10%, 5% and 1% statistical significance. 199 Table 7. Cross Sectional Regressions of the long-term BHAR to Stock Split: 1999 to 2006 This table reveals regression coefficients from regressing the long-term performance on sentiment quartile(SENT4 and BSENT4), size quintile, post-split quintile, and split factor. The long-term performance to split announcements is calculated by 12 month buy-and-hold abnormal returns after the split announcement month. The reference portfolio is formed using benchmark returns corresponding to each particular split sample. The overall reference portfolio return is computed assuming both equal-weighting and value-weighting and monthly rebalancing among the portfolios matched with each of the split firms. Excess performance (EBHAR or VBHAR) is defined as the difference between the annual return to split firms and the concurrent mean return to the matched size and book-to-market reference portfolios. The firm size (SZ) is formed in ascending order at the end of the month preceding stock split announcement. Post split price is calculated by taking the closing price of for the month preceding the split announcement, dividing the price within the same size quintile. Post split price quintile (PP) is formed in an ascending order within the same quintile. Spilt factor is divided into three groups (SF). The first group’s split factor is less than 10-for-1 stock split, and the second (third) group is equal to (higher than) 10-for-1 stock splits. BHAR (1, 12)i = Į + ȕ1 SENT4 (or BSENT4) + ȕ2 SZi + ȕ3 PPi + ȕ4 SFi + İi where i indicates splitting stock. ǹ Intercept SENT4 EBHAR -0.426 (-2.31) -0.030 (-0.83) VBHAR -0.366 (-2.12) -0.013 (-0.38) BSENT4 ȕj SZ PP SF Adj-R2 N 0.208 (6.64)*** 0.004 (0.10) -0.048 (-0.56) 7.89% 519 0.165 (5.64)*** -0.005 (-0.15) -0.027 (-0.34) 5.42% 519 EBHAR -0.430 (-2.49) -0.081 (-2.33)** 0.235 (7.75)*** 0.006 (0.17) -0.021 (-0.25) 11.63% 499 Parenthesis indicates t-value. *, **, *** indicate 10%, 5% and 1% statistical significance. VBHAR -0.357 (-2.20) -0.065 (-1.98)** 0.188 (6.55)*** -0.001 (-0.03) 0.004 (0.03) 8.26% 499 200 Table 8. Cross Sectional Regressions of the long-term BHAR to Stock Split in regard to small, young, volatile, or low profitable firms: 1999 to 2006 This table reveals regression coefficients from regressing the 12 month long-term buy-and-hold abnormal return on sentiment quartile(SENT4 and BSENT4), size quintile, post-split quintile, and split factor, and four additional dummy variables. All variables except four dummies are same in Table 4. Four dummies are Small Size-D, Young-D, High Vol.-D, and Low Profit-D. They are equal to one when two conditions are satisfied. First, BSENT4 should be equal to 4. Second, splitting firms should be classified as small firms, young firms, high volatile firms, and low profitable firms defined as below. Small firm is identified when they belong to the first or second smallest size quintile. Young firms are identified when their trading days up to the last trading day of the month prior to split announcement belong to the first and second shortest trading day quintile. High volatile firms are firms whose monthly stock return standard deviation, over the preceding 12 months, belong to the first or second highest standard deviation quintile. When the firms’ ROE, defined as operating earnings divided by equity book value, belong to the first or second lowest ROE quintile, they are called as low profitable firms. If these two conditions are not satisfied, all these dummies are zero. EBHAR (1, 12)i = Į + ȕ1 BSENT4 + ȕ2 SZi + ȕ3 Dummy + İi where i indicates splitting stock and Dummy is Small Size-D, Young-D, High Vol.-D or Low Profit-D. ǹ Intercept BSENT4 SZ Small Size-D ȕj YoungD High Vol.-D Low Profit-D Adj-R2 N EBHAR -0.368 (-4.10) 0.027 (0.71) 0.135 (4.04)*** -0.698 (-5.80)*** EBHAR -0.444 (-4.83) -0.102 (-2.69)*** 0.239 (8.22)*** EBHAR -0.443 (-4.82) -0.095 (-2.65)*** 0.236 (8.09)*** EBHAR -0.462 (-5.02) -0.075 (-2.03)** 0.238 (8.15)*** 0.121 (1.19) 0.133 (1.12) 17.50% 499 12.14% 499 12.12% 499 Parenthesis indicates t-value. *, **, *** indicate 10%, 5% and 1% statistical significance. -0.046 (-0.44) 11.93% 499 201 Reference Asquith, P.; P. Healy; and K. Palepu, 1989, "Earnings and Stock Splits." The Accounting Review, 64, 387-403. Baker, H. K., and A. Phillips, 1994, "Why Companies Issue Stock Dividends." Financial Practice and Education, 3, 29-27. Baker, M. and Jeremy Stein, 2004, “Market Liquidity as a Sentiment Indicator,” Journal of Financial Markets, 7, 271-299. Baker, M. and J. Wurgler, 2000, “The Equity Share in New Issues and Aggregate Stock Returns,” Journal of Finance, 55, 2219-2257. Baker, M. and J. Wurgler, 2006, "Investor Sentiment and Cross-section of Stock Returns," Journal of Finance, 61, pp. 1645-1680. Baker, M. and J. Wurgler, 2007, "Investor Sentiment in the Stock Market," Journal of Economic Perspectives 21, 129-151. Barberis, N., A. Shleifer, and R. Vishny, 1998, "A Model of Investor Sentiment," Journal of Financial Economics, 49, 307-343. Barber, B.M., and T. Odean, 2008, "All that Glitters: The Effect of Attention and News on the Behavior of Individual and Institutional Investors," The Review of Financial Studies, 21,785-818. Brennan, M. J., and T. E. Copeland, 1988, "Stock Splits, Stock Prices, and Transaction Costs," Journal of Financial Economics, 22, 83-101. Brennan, M. J., and P. J. Hughes, 1991, "Stock Prices and the Supply of Information," Journal of Finance, 46, 1665-1691. Byun, J. and M.S. Rozeff, 2003, "Long-run Performance after Stock Splits: 1927 to 1996," Journal of Finance 58, 1063-1085. Byun, Jong Kuk, 2003, “Market Response to Stock Split,” Korean Journal of Financial Studies, 9, 119-144. Byun, Jong-Cook, Jeong-Il Jo, 2007, “Long-term Performance of Stock Splits,” , Koran Journal of Financial Management, 3, 1-27 Derrien, F., 2005, "IPO Pricing in 'Hot' Market Conditions: Who Leaves Money on the Table?" Journal of Finance, 60, 487-521. Dharan, B. G., and D. Ikenberry, 1995, "The Long-Run Negative Drift of Post-Listing Stock Returns," Journal of Finance, 50, 1547-1574. Frazzini, Andrea, and Owen A. Lamont, 2005, “Dumb Money: Mutual Fund Flows and the CrossSectional of Stock Returns,” NBER Working Papers No. 11526. 202 Grinblatt, M. S.; R. W. Masulis; and S. Titman, 1984, "The Valuation Effects of Stock Splits and Stock Dividends," Journal of Financial Economics, 13, 461-490. Haugen, R. A. 1995, The New Finance: The Case Against Efficient Markets, Englewood Cliffs, NJ: Prentice Hal1. Ikenberry, D.L., G. Rankine and E.K. Stice, 1996, "What Do Stock Splits Really Signal?" Journal of Financial and Quantitative Analysis 31, 357-375. Ikenberry, D. L. and S. Ramnath, 2002, "Underreation to Self-Selected News Events: The Case of Stock Splits," The Review of Financial Studies, 15, 489-526. Kumar, Alok, and Charles M. C. Lee, 2006, “Retail Investor Sentiment and Return Comovements,” Journal of Finance, 61, 2451Lakonishok, J., and B. Lev, 1987, "Stock Splits and Stock Dividends: Why, Who, and When," Journal of Finance, 62, 913-932. Lakonishok, Josef, Andrei Shleifer, and Robert W. Vishny, 1994, "Contrarian investment, extrapolation, and risk," Journal of Finance 49, 1541-1578. Lee, Charles, Andrei Shleifer, and Richard H. Thaler, 1991, “ Investor Sentiment and the Closed-End Fund Puzzle,” Journal of Finance, 46, 75-109. Lemmon, M., and E. Portniaguina, 2006, "Consumer Confidence and Asset Prices: Some Empirical Evidence," Review of Financial Studies 19, 1499-1529. McNichols, M., and A. Dravid, 1990, "Stock Dividends, Stock Splits, and Signaling," Journal of Finance, 45, 857-879. Mian, G. M. and S. Sankaraguruswamy, 2008, "Investor Sentiment and Stock Market Response to Corporate News," working paper (National University of Singapore) Nam, Myung Soo, 2000, “Information Effect of Stock Splits,” Korean Journal of Financial Studies, 6, 193-201. Qiu L. and I. Welch, 2006, "Investor sentiment measures," working paper (Brown University) Ritter, Jay, “Long-run Performance of Initial Public Offerings,” Journal of Finance, 46, 3-27. Shleifer, A. and R. Vishny, 1997, "The Limits of Arbitrage," Journal of Finance, 52, 35-55.