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economic & COnsumer credit Analy tics Merchandise Line Estimates, Forecasts and ZIP Code Potential Methodology Merchandise Line Estimates, Forecasts, and ZIP Code Potential Methodology Historical Merchandise Line Estimates (1997-2010) Approach Every five years (1992, 1997, 2002, 2007…) the U.S. Census Bureau undertakes a census of retail trade that all retailers in the country are legally required to complete. One of the outputs of this census is a matrix of merchandise line sales by store type. In other words, sales by merchandise line are provided for each store type. These data are released about three years after the census is taken. (That is, we received the 2007 data late in 2010, although a preliminary version was available a year earlier.) Between the censuses, the Census Bureau provides survey-based estimates of retail sales by store type (on a monthly basis) but no estimates of merchandise line sales. Note that these monthly data go back only until 1992, the earliest we could begin our estimates. The estimates of annual merchandise line sales are developed by first creating annual matrices of the share of sales by merchandise line for each store type. Data from the census matrices are interpolated for the years between 1997 and 2007 and trended from 2008 to 2010. Then the sales by store type data from the Census Bureau are run through the matrices to get merchandise line sales estimates for each year. The shares of sales by merchandise line change significantly from census to census, so capturing this change is important in accurately measuring sales by merchandise MOODY’S ANALYTICS / Copyright© 2011 line. For example, the share of drugs and food sold discount stores has been growing, at the expense of the share of many other merchandise lines they sell. If this shift were not accounted for, sales growth for food would be understated and that for other merchandise lines would be overstated. Additional Issues There were a number of additional issues that had to be addressed in producing the estimates. Incomplete merchandise line data The Census Bureau has a set of aggregate merchandise line categories that are asked of almost all retailers. (Men’s apparel, kitchenware and home furnishings, and groceries are examples.) However, the more detailed merchandise lines are only asked for store types where the line is thought to represent a significant enough part of sales. Usually this is sufficient, but sometimes, as in 1992 when there was no detail for apparel categories for discount department stores, there are significant holes that must be estimated. It is usually straightforward to estimate the missing data. In many situations, including the discounter case noted above, the missing shares can be interpolated using previous and following census data. Given the relative weakness of the 1992 census, 1987 data are utilized frequently if history going back that far is desired. An additional area with missing data for significant merchandise lines (200 men’s; 220 women’s; 240 children’s;, 260 footwear; 280 curtains, drapes, etc.; 340 furniture; 360 floor coverings; 380 kitchenware and home furnishings) was nonstore retailers, including electronic shopping and mail order retailers and other direct selling establishments. After consultation with the client and examination of data from NPD, it was determined to allocate these sales to more detailed merchandise lines using the shares from general merchandise stores. Inconsistent merchandise line detailed categories For some major merchandise lines, the number of detailed lines reported for it varies by store type. This can limit the amount of disaggregation that is feasible or force estimation of the distribution of the sales across the more disaggregated lines. This situation is especially prevalent in the home category, although it can be problematic in other categories as well. In general, more aggregate categories are used to avoid this problem. 1992 census store type definitions The government switched all of their data collection and reporting from an SIC basis to a NAICS (North American Industrial Classification System) basis. All current reporting is on a NAICS basis including monthly retail sales by store type data. However, 1992 and prior economic censuses were done using SIC-based store types. While many of the store type definitions are nearly or completely unchanged between the two definitions (including apparel specialty stores, national and conventional department stores, and drug stores), there were some significant definitional 1 Merchandise Line Estimates, Forecasts, and ZIP Code Potential Methodology changes. For example, supercenters were part of discount department stores on an SIC basis but are grouped with warehouse clubs using NAICS. This changed the merchandise mix reported for discount department stores in a way that is very difficult to adjust for. Other examples include significant redefining of store types within the food store category. This makes estimates prior to 1997 less reliable if provided. The analysis was done on a NAICS basis because that is how the store type data are released. For estimates prior to 1997, it would be assumed that the corresponding SIC store type allocation was representative of the NAICS allocation. Changing merchandise line definitions While not a major problem, there have been a few cases where merchandise line items were added, dropped or moved within major categories. For example, in the 2007 census, new lines were created for some forms of electronic media. They had been counted within other lines previously. Definitional drift There are a few instances where share movements seem extreme. The increase in the share of children’s footwear sold at warehouse clubs and supercenters in 1997 compared with both 1992 and 2002 is an example. Issues with women’s undergarments may be another. While census did not change the merchandise line definitions, it is possible that the way retailers are reporting has changed. While small judgmental adjustments have been considered, in general, we recommend using reported data. Trend vs. interpolation To avoid extreme results, large shifts in merchandise line sales between censuses are muted somewhat as the shares are extended beyond 2007. While there is the benefit of avoiding extremes, this can result in somewhat different growth rates in the 2007 forward period compared with earlier years. Fortunately, this does not appear nearly as significant as changes in growth rates prior to 1997. National Merchandise Line Forecasts (Beginning 2011) Approach The forecasts are basically econometrically estimated projections of the history based on the economic outlook and the Moody’s Analytics forecasts of corresponding personal consumption expenditure categories. More general drivers of consumer spending—including income, employment, interest rates and inflation, among others— are also utilized since the PCE data are not as detailed as the merchandise lines forecast in the (WITHELD) project. Additional Issues As noted above, historic estimates are more reliable beginning in 1997. If our examination of the data (or statistical tests) suggested a structural change, we only utilized data beginning in 1997 in our estimation process even if earlier data are provided to the client. Forecasts are adjusted to take into account information the model may not be able to incorporate. This would include recent monthly trends in store types important to the merchandise line being forecast, retailer or trade information not incorporated into the model, and feedback from the client analysts. Zip Code Allocation of Potential Approach The consumer expenditure survey (CEX) is a survey of consumer (actually two separate surveys, a diary survey and an interview www.economy.com survey) designed to measure consumer spending by demographic group. While the surveys are conducted on an ongoing basis, data are released annually, with a lag of about a year. Data for 2009 were released in late 2010, for example. The interview survey is used for most the client merchandise lines, as it is more comprehensive. The diary survey focuses on merchandise lines purchased at very high frequency (such as weekly), which includes only a few of the client merchandise lines. From the survey, spending propensities (average spending per household) are computed for households across seven age groups (determined by the age of the reference person in the household), seven income groups, and the four census geographic regions. The exception to this is that national propensities were collected for high-income groups for very young and old age groups because of the sparseness of the data in these cells. Since propensities were needed for years after the latest CEX, the propensities were forecast using time series techniques that smooth out extreme values from the historic data to produce propensities for the needed years. The spending propensities by age and income groups and by region were merged with ZIP code-level counts of households by age and income groups. The latter data are provided by the client. The merging produced an initial estimate of merchandise potential at the ZIP code level for both years. However, because of concerns about inconsistent underreporting of spending across lines in the CEX, the resulting propensities were adjusted for each merchandise line. The adjustment was done to ensure that the resulting propensities summed to the national merchandise line estimates calculated in the previous steps. This produced the final propensities delivered to the client. ** Note: Separate documentation provided to the client provides detailed specifications including exact census of retail trade merchandise lines used, consumer expenditure survey UCC codes used, and age and income groups used. 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