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The Economic Value of Green Buildings Yongheng Deng National University of Singapore With Junichiro Onishi Chihiro Shimizu Siqi Zheng Xymax Real Estate Institute Nihon University & NUS IRES Tsinghua University Hitotsubashi-RIETI International Workshop on Real Estate Market, Productivity, and Prices Tokyo, Japan, October 14, 2016 Introduction • In the past decade, systems for rating and evaluating the sustainability and energy efficiency of buildings have proliferated. • • • • • • • 14/10/2016 Energy Star and LEED (U.S.) BOMA-Best (Canada) BREEAM (UK) HQE (France) CASBEE (Japan) Green Mark (Singapore) Three Star System (China) DENG @ Hitotsubashi-RIETI 2 Green Label Systems around the World LEED Energy Star BREEAM EPCs HQE GRESB greenstar Used in this study - - - - - - - Development U.S.Green Building Council (US) U.S. Environmental Protection Agency (US) Building Reserch Establishment (UK) UK Government (UK) HQE Association (France) GRESB (Netherlands) Green Building Council of Australia (Australia) Since 1998 1995 1990 2006 1996 2010 2003 Target Buildings Buildings Buildings Buildings Buildings Firm Buildings Focus Comprehensive Energy Efficiency Comprehensive Energy Efficiency Comprehensive Comprehensive Comprehensive Output 4 ranks Enegy Star ≧75 5 ranks 8 ranks 4 ranks 4 quadrants 6 ranks Building and equipment performance 〇 - 〇 〇 〇 - 〇 Operation 〇 〇 〇 - - 〇 〇 Water 〇 - 〇 - 〇 〇 〇 Material 〇 - 〇 - 〇 - 〇 〇 - 〇 - 〇 〇 〇 〇 - 〇 - 〇 - 〇 Transport 〇 - 〇 - - - 〇 Waste 〇 - 〇 - 〇 - 〇 Pollution 〇 - 〇 - 〇 - 〇 - Manegement, Performance verification Evaluation items Indoor environment Site and Ecosystem Other 14/10/2016 - - DENG @ Hitotsubashi-RIETI - Organization, Disclosure, Risk assessment, Green lease Management, Innovation 3 Green Label Systems around the World NABERS CASBEE CASBEE for real estate Used in this study - 〇 〇 〇 〇 - Development Australian Government (Australia) Ministry of Land, Infrastructure, Transport and Tourism (Japan) Ministry of Land, Infrastructure, Transport and Tourism (Japan) Development Bank of Japan (Japan) Sumitomo Mitsui Bank Corporation (Japan) Ministry of Land, Infrastructure, Transport and Tourism (Japan) Since 1990 2004 2012 2011 2011 2014 Target Buildings Buildings Buildings Buildings Buildings Buildings Focus Energy Efficiency Comprehensive Comprehensive Comprehensive Comprehensive Energy Efficiency Output 5 ranks 5 ranks 4 ranks 5 ranks 6 ranks 5 ranks Building and equipment performance - 〇 〇 〇 〇 〇 Operation 〇 - 〇 - 〇 - Water 〇 〇 〇 〇 〇 - Material - 〇 〇 - 〇 - 〇 〇 〇 〇 〇 - - 〇 〇 〇 〇 - Transport - 〇 〇 〇 〇 - Waste 〇 - - 〇 〇 - Pollution - 〇 - - 〇 - - Earthquake resistance, Handicapped accessible Earthquake resistance, Useful life, Disaster risk Environment risk, Crime prevention, Tenant relation Risk management, Management policy, Innovation - Evaluation items Indoor environment Site and Ecosystem Other 14/10/2016 DBJ Green Building SMBC Sustainable Cetificate Building Assessment DENG @ Hitotsubashi-RIETI BELS 4 Emerging Green Label System in China 14/10/2016 DENG @ Hitotsubashi-RIETI 5 Introduction • Buildings account for approximately 40 percent of the consumption of raw materials and energy. • In addition, 55 percent of the wood that is not used for fuel is consumed in construction. • Overall, buildings and their associated construction activity account for at least 30 percent of world greenhouse gas emissions. • Consequently, energy represents the single largest and most manageable operating expense in commercial building operations. • UN Sustainable Development Goal (SDG) by 2030 • SDG 11 – Make cities and human settlements inclusive, safe, resilient and sustainable • SDG 13 – Take urgent action to combat climate change and its impacts 14/10/2016 DENG @ Hitotsubashi-RIETI 9 Eichholtz, Kok and Quigley (2010) • Doing Well by Doing Good? Green Office Buildings (American Economic Review, 2010) • The seminal paper provides the first systematic analysis of the impact of environmentally sustainable building practices upon economic outcomes as measured in the marketplace. • They find that buildings with a “green rating” command rental rates that are roughly 3 percent higher per square foot than otherwise identical buildings after controlling for the quality and the specific location of office buildings. • Premiums in effective rents are even higher, above 7 percent. • Selling prices of green buildings are higher by about 16 percent. • The percent increase in rent or value for a green building is systematically greater in smaller or lower-cost regions or in less expensive parts of metropolitan areas. • The private market does incorporate the “green” certification information in the determination of rents and asset prices. 14/10/2016 DENG @ Hitotsubashi-RIETI 10 Deng, Li and Quigley (2012) • Economic Returns to Energy-Efficient Investments in the Housing Market: Evidence from Singapore (Regional Science and Urban Economics, 2012) • • • • • • 14/10/2016 It provides one of the first analyses of the economics of green building in the residential sector, and the first one analyzing property markets in Asia. They adopt a two-stage research design • In the first stage, a hedonic pricing model is estimated based on transactions involving green and non-green residential units in 697 individual projects or estates; • In the second stage, the fixed effects estimated for each project are regressed on the location attributes of the projects, as well as control variables for a Green Mark rating. Their results suggest that the economic returns to green building are substantial. The returns vary by Green Mark category – both Platinum and Gold are positive and statistically significant. Green Mark Platinum remains significant using PSM nearest neighbor matching of control and treatment samples. The study provides insight about the operation of the housing market in one country, but the policy implications about the economic returns to sustainable investments in the property market may have broader applications for emerging markets in Asia. DENG @ Hitotsubashi-RIETI 11 Zheng, Wu, Kahn and Deng (2012) • The Nascent Market for “Green” Real Estate in Beijing (European Economic Review, 2012) • Using two unique geo-coded micro data sets to explore the nascent “green housing market” in Beijing, from both the supply side and demand side. • Based on Google searches, they construct a sample that contains information whether certain housing complex’s greenness-related characteristics are emphasized during its marketing. • Focusing on information that developers wish to convey to potential buyers. • The study found nascent “green housing market” does exist in Beijing. • • On the Supply side – “Greenness” has been adopted as a marketing point in part of the newly-built complexes, which helps gain significant price premium for their developers. Although whether such “greenness” is really effective remains a question. On the Demand Side – Pro-environmental households do have a smaller carbon footprint, which provide potential demands for green housing. • An introduction of a standardized official certification program would help ‘‘green’’ demanders to acquire units that they desire and would accelerate the advance of hina’s nascent green real estate market. 14/10/2016 DENG @ Hitotsubashi-RIETI 12 Deng and Wu (2014) • Economic Returns to Residential Green Building Investment: The Developers’ Perspective (Regional Science and Urban Economics, 2014) • The study provides the first evidence of the mismatch that developers face between outlays and benefits in the residential green building sector. This mismatch may impede further development of green residential properties. • • • The study found that the “green price premium” of residential developments arises largely during the resale phase, relative to the presale stage. The market premium of GM-rated units is about 10% at the resale stage, compared to about 4% during the presale stage. This implies that, while developers pay for almost all of the additional costs of energy efficiency during construction, they only share part of the benefits associated with such green investments. The study found no evidence that the development of green housing can immediately and significantly improve the corporate financial performance of Singaporean residential developers. • The emerging green real estate markets should be encouraged to introduce innovative business arrangements and financial products that allow residential developers to capture the future benefits associated with green properties. 14/10/2016 DENG @ Hitotsubashi-RIETI 13 Wu, Deng, Huang, Morck, and Yeung (2014) • Incentives and Outcomes: China’s Environmental Policy (Capitalism and Society, 2014) 1:45PM GMT 26 Feb 2013 “A city government’s spending on environmental improvements is actually significantly negatively related to the odds of its (Communist party) secretary and mayor being promoted,” wrote Professors Wu Jing, Deng Yongheng, Huang Jun, Randall Morck and Bernard Yeung. 14/10/2016 DENG @ Hitotsubashi-RIETI 14 Deng, Onishi, Shimizu and Zheng (2016) • • The Economic Value of Environmental Consideration in the Tokyo Office Market (Working Paper, 2016) We are among the first to analyze the economic value of green buildings in an office market in Japan ; • A social system incorporating environmental consideration has already come into existence. • Further environmental considerations would not necessarily lead to market efficiency. • Buildings constructed to high specifications in recent years are implicitly meeting or exceeding environmental standards even without green labeling. • We use an independent data set, including 6,758 rental properties in Tokyo office market and examine if there is a significant premium from the green label for new contract rent. 14/10/2016 DENG @ Hitotsubashi-RIETI 15 Hedonic price function The new contract rent of office buildings, based on characteristics of office buildings and green label acquisition conditions, is generally expressed as a hedonic price function. 𝑅𝑖 = h 𝑔𝑟𝑒𝑒𝑛𝑖 , 𝑥𝑖 (1) 𝑅𝑖 : the new contract rent of completed contract case 𝑖 𝑔𝑟𝑒𝑒𝑛𝑖 : the green label dummy 𝑥𝑖 : the vector that expresses the attributes in the completed contract case 𝑖 14/10/2016 DENG @ Hitotsubashi-RIETI 16 The model Our specification is set up as following: ln 𝑅𝑖 = α + 𝑔𝑟𝑒𝑒𝑛𝑖 ′ ∙ 𝛽 + 𝑥𝑖 ′ ∙ 𝛾 + 𝜀𝑖 ln𝑅𝑖 : α: β, γ: ε: 𝑔𝑟𝑒𝑒𝑛𝑖 : 𝑥𝑖 : 14/10/2016 (2) New contract rent logarithm (dependent variable) Constant term Vector of the coefficients correspondeing to each independent variable Error term Green label dummy (independent variable) Vector that expresses the characteristic in the completed contract case 𝑖 (independent variable) DENG @ Hitotsubashi-RIETI 17 Independent variables (1) • Scale ; • Gross building area, standard story area, and number of above-ground stories. • Age ; • Age of the property and whether a renovation had been carried out. • Convenience ; • Distance to the nearest station and the presence or absence of office specifications that consumers find appealing, such as a raised floor, individual air conditioning, and automated security. 14/10/2016 DENG @ Hitotsubashi-RIETI 18 Independent variables (2) • An office area dummy ; • A dummy variable obtained by dividing a typical office area in Tokyo’s 23 wards by 50 areas, in order to express the effects of location on rent. • In popular areas, rent tends to be high even for properties that are medium scale, small scale, or old. • The dummy for the time the contract was completed ; • The demand-supply balance in the market at the time the property is offered affects the rent. • For quality adjustment at the time the contract was completed, the two-year sample period from January 2013 to December 2014 was divided into eight quarters and a quarterly dummy variable was allocated according to the time the contract was completed. 14/10/2016 DENG @ Hitotsubashi-RIETI 19 Independent variables (3) • Green label dummy • If a building had acquired any one of the green labels used for the analysis, the green label dummy was given a value of 1. • CASBEE, CASBEE Real estate, DBJ Green Building Certification, SMBC Sustainable Building Assessment • There were three reasons for selecting these systems. • Acquired on the unit of buildings • Not the unit of corporations and portfolios • Assessing comprehensive environmental performance • Not only energy-saving performance • A third party organization carries out the assessment based on the standards that these systems have established. 14/10/2016 DENG @ Hitotsubashi-RIETI 20 Green labels used in this study LEED Energy Star BREEAM EPCs GRESB CASBEE CASBEE for real estate DBJ Green Building Cetificate SMBC Sustainable Building Used in this study - - - - - 〇 〇 〇 〇 Development U.S.Green Building Council (US) U.S. Environmental Protection Agency (US) Development Bank of Japan (Japan) Sumitomo Mitsui Bank Corporation (Japan) Since 1998 1995 1990 2006 2010 2004 2012 2011 2011 Target Buildings Buildings Buildings Buildings Firm Buildings Buildings Buildings Buildings Focus Comprehensive Energy Efficiency Comprehensive Energy Efficiency Comprehensive Comprehensive Comprehensive Comprehensive Comprehensive Output 4 ranks Enegy Star ≧75 5 ranks 8 ranks 4 quadrants 5 ranks 4 ranks 5 ranks 6 ranks Building and equipment performance 〇 - 〇 〇 - 〇 〇 〇 〇 Operation 〇 〇 〇 - 〇 - 〇 - 〇 Water 〇 - 〇 - 〇 〇 〇 〇 〇 Material 〇 - 〇 - - 〇 〇 - 〇 〇 - 〇 - 〇 〇 〇 〇 〇 〇 - 〇 - - 〇 〇 〇 〇 Transport 〇 - 〇 - - 〇 〇 〇 〇 Waste 〇 - 〇 - - - - 〇 〇 Pollution 〇 - 〇 - - 〇 - - 〇 - Manegement, Performance verification Earthquake resistance, Handicapped accessible Earthquake resistance, Useful life, Disaster risk Evaluation items Indoor environment Site and Ecosystem Other 14/10/2016 - Building Reserch UK Government Establishment (UK) (UK) - GRESB (Netherlands) Organization, Disclosure, Risk assessment, Green lease DENG @ Hitotsubashi-RIETI Ministry of Land, Ministry of Land, Infrastructure, Infrastructure, Transport and Transport and Tourism Tourism (Japan) (Japan) Environment Risk risk, Crime management, prevention, Management Tenant relation policy, Innovation 21 Data • • We constructed an integrated data on rent and green label acquisition conditions. Rental data ; • Data used in this study are the contract case database for office buildings collected by the Xymax Corporation. • This dataset contains contract rent (not offered rent) • 2013.1 – 2014.12 • Tokyo 23 wards • 6,758 observations (2,689 buildings) • The characteristics of the buildings; • Scale, Age, Facility, Location, Contract time • Green label dummy ; • We collected and arranged the published information. 14/10/2016 DENG @ Hitotsubashi-RIETI 22 Variables Variable Unit New contract rent The contract rent when newly entering into the building (not the offered price when it was being offered to tenants) Green label dummy Buildings granted a green label: 1 Gross building area Gross building area of the building sqm Age Number of years since construction Year Number of above-ground stories Number of above-ground stories in the building Standard story area Standard story area of the building sqm Five city-center wards dummy In the event that the building is located in one of the five city-center wards (Chiyoda Ward, Chuo Ward, Minato Ward, Shinjuku Ward, and Shibuya Ward): 1 All others: 0 (0,1) Time to nearest station The number of minutes to walk to the building from the nearest station Raised floor dummy If a raised floor has been installed in the building: 1 All others: 0 (0,1) Individual air conditioning dummy If individual air conditioning has been installed in the building: 1 All others: 0 (0,1) Automated security dummy If automated security has been installed in the building: 1 All others: 0 (0,1) Renewal dummy Time of contract completion dummy Area dummy 14/10/2016 Content All others: 0 If the building has been/is being renewed at the time the contract was completed: 1 All others: 0 On preparing dummy variables for each time of contract completion(quarter), If the time the contract has been completed corresponds to the quarter : 1 All others :0 On preparing dummy variables for each typical office area, in the event that there is a building: 1 All others: 0 DENG @ Hitotsubashi-RIETI Yen/sqm (0,1) Stories M inutes (0,1) (0,1) (0,1) 23 Summary Statistics Number of Obsarvations = 6,758 mean New contract rent (Yen/sqm) standard deviation minimum maximum 5,169.73 1,862.02 1,845.25 16,649.60 0.05 0.22 0.00 1.00 18,928.33 37,444.15 Age (Year) 23.73 11.83 0.00 59.91 Number of above-ground stories (Stories) 11.69 7.70 3.00 60.00 780.24 795.11 99.87 9,834.71 Five city-center wards dummy 0.77 0.42 0.00 1.00 Time to nearest station (Minutes) 3.36 2.31 0.00 15.00 Raised floor dummy 0.68 0.46 0.00 1.00 Individual air conditioning dummy 0.80 0.40 0.00 1.00 Automated security dummy 0.83 0.37 0.00 1.00 Renewal dummy 0.13 0.34 0.00 1.00 Green label dummy Gross building area (sqm) Standard story area (sqm) 14/10/2016 DENG @ Hitotsubashi-RIETI 992.56 379,447.90 24 Estimation results (baseline) • The estimation result of +0.0439 was positive and significant; • The new contract rent for buildings that were granted a green label was approximately 4% higher than for those that were not granted one. Green label dummy Number of samples Percentage of buildings with green label adjusted R-squared 0.0439*** (0.0115) 6,758 5.34% 0.6770 Notes: Standard errors in the parenthesis. * p < 0.1, ** p < 0.05, *** p < 0.01 • Whether acquiring a green label can result in higher returns? 14/10/2016 DENG @ Hitotsubashi-RIETI 25 Caveat • In an economic analysis of environmental consideration, there are concerns that factors such as scale and age of the property become proxy variables for a green label. • Scale: • Many of the buildings that have been granted a green label were developed by major developers and REIT; They are of large scale and are young buildings. • They are able to pay the costs necessary to acquire a green label. • Their shareholders and investors demand that they make such efforts. • Age: • The advance in environment and construction technologies for newly developed properties • If it is judged from the results of the preliminary survey that there is little prospect of the building obtaining a high score and grade, few owners of old office buildings would actually take the actions necessary to acquire certification. 14/10/2016 DENG @ Hitotsubashi-RIETI 26 Summary statistics : with/without green label • The average values for gross building area is 61,718 sqm and age is 8.78 years in our green sample (properties with a green label), showing that these buildings tend to be large scale and newly developed. 14/10/2016 DENG @ Hitotsubashi-RIETI 27 Potential endogeneity • When the decision to acquire the green label is also affected by variables common to the newly rented office building, such as size and age, endogeneity may occur in the estimation method by identifying the new rent function using the green label dummy. • Therefore, when the hedonic function is estimated as a simple linear model of the data in our analysis, the effects of size, age, and performance reflect the difference in the presence or absence of the green label, there is a potential bias in the measurements. 14/10/2016 DENG @ Hitotsubashi-RIETI 28 Potential endogeneity • We adopt the propensity score matching approach to make sure the treatment group and control group have similar value of the covariate. • First; we estimate a variable that denotes the ease of which the green label is obtained from the covariate (i.e., the propensity score). • Next; based on the estimated propensity score, we create two similar groups, and let the large difference between these groups indicate the existence of a green label. • Finally, we proceed with the analysis by estimating the effect of a green label on a new contract rent. 14/10/2016 DENG @ Hitotsubashi-RIETI 29 Propensity score analysis (1) • The effect of the green label on a new contract rent, when treated as the difference between office buildings with or without green label; E 𝑌1 |𝐷 = 1 − E 𝑌0 |𝐷 = 0 . 𝑌1 : 𝑌0 : D:1: 0: 14/10/2016 (3) New contract rent, with green label granted New contract rent, with green label not granted When green label is granted to an office building When green label is not granted to an office building DENG @ Hitotsubashi-RIETI 30 Propensity score analysis (2) • If the size or newness of a building affects whether there is green label, it is possible that there is bias in the estimation effect. • We consider that the strict green label effect; ∆𝐷=1 𝒙 = E 𝑌1 − 𝑌0 |𝑃 𝒙 , 𝐷 = 1 (4) 𝒙: Characteristics of an office building that can be observed as a covariate, where note that 𝐱 is a vector of the components 𝑥1 , … , 𝑥𝑖 . P 𝒙 = 𝑃𝑟 𝐷 = 1|𝒙 : Forecasted probability of a green label being granted to an office building with characteristics 𝐱. 14/10/2016 DENG @ Hitotsubashi-RIETI 31 Propensity score analysis (3) • If we know what the new contract rent of an office building with a green label was if it has not been granted, we can simply extract the effect of the green label. • Because it is normally not possible to observe such new contract rents, the value that represents this is assigned a weight by P 𝒙 , and the new rent is estimated from the new rents of office buildings without green labels. ∆𝐷=1 𝑛1 : 14/10/2016 1 𝑥 = 𝑛1 𝑛1 𝑌1𝑖 𝒙𝒊 − 𝐸 𝑌0𝑖 |𝑃 𝒙𝒊 , 𝐷𝑖 = 0 𝑖=1 𝐷𝑖 =1 (5) the number of samples that have been granted a green label DENG @ Hitotsubashi-RIETI 32 Propensity score analysis (4) • New rents of office buildings that have not been granted a green label, and are used as proxies, will have an expected value of; 𝑛0 𝐸 𝑌0𝑖 |𝑃 𝒙𝒊 , 𝐷𝑖 = 0 = 𝑊𝑖 𝑃 𝒙𝒊 𝑌0𝑗 𝑗=1 𝐷𝑗 =0 (6) 𝑛0 : the number of samples that have not been granted a green label W: the weight assigned by P 𝒙 . • In this study, nearest neighbor matching is used to assign weights for comparisons. (Matching is performed on office buildings with the nearest probability of being granted a green label.) • The new contract rent of an office building that has not been granted a green label is used as a proxy for new contract rent in the hypothetical case in which an office building that has been granted a green label is an office building that has not been granted a green label. 14/10/2016 DENG @ Hitotsubashi-RIETI 33 Propensity score analysis (5) • Probit regression is used to estimate the probability of a green label being granted to an office building possessing 𝒙 characteristics. 𝑥𝛽 1 𝑧2 P 𝒙 = Pr 𝐷 = 1|𝒙 = Φ 𝒙𝜷 = 𝑒𝑥𝑝 − 𝑑𝑧 2𝜋 2 −∞ β: (7) a vector of the elements 𝛽1 , … , 𝛽𝑖 ′. • office characteristics for determining whether or not a green label is to be granted: • gross building area (sqm), standard story area (sqm), above-ground stories (stories), age (years), area dummy, time to nearest station (minutes), raised floor dummy, individual air conditioning dummy, automated security dummy, and time of contract completion dummy. 14/10/2016 DENG @ Hitotsubashi-RIETI 34 Estimation results (Probit regression) • The probability of acquiring a green label is higher for high quality office buildings that are new, large, and equipped with facilities. Constant Gross building area (logarithm) -3.9439*** (0.5239) 0.4199*** (0.1331) Age Number of above-ground stories -0.0727*** (0.0045) -0.0146* (0.0083) Standard story area (logarithm) -0.0492 (0.1522) Time to nearest station -0.0149 (0.0178) Raised floor dummy 0.0938 (0.1368) Individual air conditioning dummy 0.1596* (0.0970) Automated security dummy 0.1633 (0.1132) Renewal dummy 1.0639*** (0.1257) Time of contract completion dummy Area dummy Number of samples Log likelihood 14/10/2016 Yes Yes 6,758 -831.1474 AIC 1814.2950 Notes: Standard errors in the parenthesis. * p < 0.1, ** p < 0.05, *** p < 0.01 DENG @ Hitotsubashi-RIETI 35 Summary statistics (Propensity score matching) • By using propensity score matching, the differences between the two groups were reduced, enabling us to create similar samples. Green-Label Non-Green-Label Number of Obserrvations = 361 Number of Obsarvations = 361 standard deviation minimum maximum 7,638.37 2,154.42 3,025.00 16,649.60 7,625.18 2,283.37 2,420.00 13,612.50 Green label dummy 1.00 0.00 1.00 1.00 0.00 0.00 0.00 0.00 Gross building area 61,717.76 80,973.86 1,785.06 379,447.90 8.78 9.77 0.00 50.75 8.36 8.03 0.00 35.50 20.17 12.50 5.00 54.00 18.32 10.26 5.00 54.00 1,533.13 1,217.62 182.91 5,054.55 1,394.13 1,120.63 115.74 6,760.33 Five city-center wards dummy 0.86 0.35 0.00 1.00 0.84 0.37 0.00 1.00 Time to nearest station 2.98 1.80 0.00 10.00 2.81 2.16 0.00 10.00 Raised floor dummy 0.96 0.21 0.00 1.00 0.93 0.26 0.00 1.00 Individual air conditioning dummy 0.81 0.39 0.00 1.00 0.82 0.38 0.00 1.00 Automated security dummy 0.87 0.33 0.00 1.00 0.89 0.31 0.00 1.00 Renewal dummy 0.12 0.33 0.00 1.00 0.09 0.28 0.00 1.00 mean New contract rent Age Number of above-ground stories Standard story area 14/10/2016 DENG @ Hitotsubashi-RIETI mean standard minimum maximum deviation 48,572.06 56,058.70 1,100.83 263,996.70 36 Estimation results (Propensity score matching) • The estimated coefficient of the green label dummy was 1.6673 (1.8874) and, thus, was not a statistically significant result, was negative, and close to zero. • Green label does not have an effect on new contract rent, which differs from Baseline. Baseline Green label dummy Number of samples Percentage of buildings with green label adjusted R-squared PSM 0.0439*** (0.0115) -1.6673 (1.8874) 6,758 5.34% 0.6770 86 50.00% 0.9213 Notes: Standard errors in the parenthesis. * p < 0.1, ** p < 0.05, *** p < 0.01 14/10/2016 DENG @ Hitotsubashi-RIETI 37 Problems of propensity score matching • The extracted samples by propensity score matching were centered on large, newly constructed office buildings. • The averages of gross building area and age for non-green buildings were 48,572 sqm and 8.36 years. • The data of the approximately 6000 non-green buildings that were not matched were excluded. • Green label has almost no effect, or even a slightly negative effect on comparatively large and new office buildings. However, the effect on other office buildings is unknown. • In the analysis of the propensity score matching, it is problematic that the effect of a green label on medium and small office buildings and on old office buildings cannot be confirmed. 14/10/2016 DENG @ Hitotsubashi-RIETI 38 Division of samples by clustering • We divided the samples into five cluster based on the value of the propensity score. • Since the properties with a low propensity score tend to be smaller and older, we should also be able to analyze the clusters of mid to low propensity scores. • Five quantile were used as the boundaries of these clusters, and the number of samples in each cluster is nearly the same (number of observations : 1351 or 1352 ). 14/10/2016 DENG @ Hitotsubashi-RIETI 39 Summary statistics (Cluster no.1: low propensity score) New contract rent Green label dummy Gross building area Age Number of above-ground stories Standard story area Five city-center wards dummy Time to nearest station Raised floor dummy Individual air conditioning dummy Automated security dummy Renewal dummy 14/10/2016 Green-Label Number of Obsarvations = 0 standard minimum maximum mean deviation NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA NA DENG @ Hitotsubashi-RIETI Non-Green-Label Number of Obsarvations = 1352 standard minimum maximum mean deviation 9,831.25 4,131.48 1,211.07 1,905.75 0.00 0.00 0.00 0.00 995.04 190,590.00 9,714.12 21,009.43 58.75 0.00 8.76 25.50 60.00 3.00 4.98 9.41 9,666.12 102.48 653.62 620.70 1.00 0.00 0.50 0.44 13.00 0.00 2.20 3.55 1.00 0.00 0.49 0.58 1.00 0.00 0.39 0.82 1.00 0.00 0.39 0.81 1.00 0.00 0.27 0.08 40 Summary statistics (Cluster no.2: medium low propensity score) New contract rent Green label dummy Gross building area Age Number of above-ground stories Standard story area Five city-center wards dummy Time to nearest station Raised floor dummy Individual air conditioning dummy Automated security dummy Renewal dummy 14/10/2016 Green-Label Number of Obsarvations = 3 standard mean minimum maximum deviation 6,453.33 462.08 6,050.00 6,957.50 1.00 0.00 1.00 1.00 9,579.06 5,332.62 3,421.49 12,657.85 44.39 10.87 31.83 50.75 8.33 1.15 7.00 9.00 653.31 225.10 393.39 783.27 1.00 0.00 1.00 1.00 4.00 1.73 3.00 6.00 0.67 0.58 0.00 1.00 1.00 0.00 1.00 1.00 1.00 0.00 1.00 1.00 0.67 0.58 0.00 1.00 DENG @ Hitotsubashi-RIETI Non-Green-Label Number of Obsarvations = 1348 standard mean minimum maximum deviation 4,712.18 1,468.00 1,845.25 11,858.00 0.00 0.00 0.00 0.00 9,652.81 23,155.17 995.04 174,013.00 33.98 10.60 0.00 59.91 9.30 4.24 3.00 52.00 559.35 796.29 102.48 9,834.71 0.89 0.31 0.00 1.00 3.14 2.27 0.00 14.00 0.47 0.50 0.00 1.00 0.78 0.41 0.00 1.00 0.71 0.45 0.00 1.00 0.10 0.31 0.00 1.00 41 Summary statistics (Cluster no.3: medium propensity score) New contract rent Green label dummy Gross building area Age Number of above-ground stories Standard story area Five city-center wards dummy Time to nearest station Raised floor dummy Individual air conditioning dummy Automated security dummy Renewal dummy 14/10/2016 Green-Label Number of Obsarvations = 4 standard mean minimum maximum deviation 4,840.00 1,864.74 3,630.00 7,562.50 1.00 0.00 1.00 1.00 14,906.88 22,039.92 1,995.57 47,904.50 25.79 4.46 20.16 31.08 12.25 7.89 7.00 24.00 482.22 322.34 244.63 958.45 0.50 0.58 0.00 1.00 3.50 1.91 1.00 5.00 0.75 0.50 0.00 1.00 1.00 0.00 1.00 1.00 1.00 0.00 1.00 1.00 0.00 0.00 0.00 0.00 DENG @ Hitotsubashi-RIETI Non-Green-Label Number of Obsarvations = 1348 standard mean minimum maximum deviation 4,582.63 1,250.32 2,057.00 10,738.75 0.00 0.00 0.00 0.00 10,404.87 22,196.98 1,000.53 183,063.80 27.17 7.94 5.08 53.08 9.64 4.96 4.00 54.00 609.29 539.58 99.87 6,909.09 0.82 0.38 0.00 1.00 3.59 2.55 0.00 15.00 0.61 0.49 0.00 1.00 0.80 0.40 0.00 1.00 0.86 0.35 0.00 1.00 0.14 0.35 0.00 1.00 42 Summary statistics (Cluster no.4: medium high propensity score) New contract rent Green label dummy Gross building area Age Number of above-ground stories Standard story area Five city-center wards dummy Time to nearest station Raised floor dummy Individual air conditioning dummy Automated security dummy Renewal dummy 14/10/2016 Green-Label Number of Obsarvations = 30 standard mean minimum maximum deviation 5,732.38 1,697.47 3,630.00 9,075.00 1.00 0.00 1.00 1.00 19,895.20 16,111.47 1,785.06 47,904.50 19.33 8.36 0.00 30.66 14.87 6.70 7.00 24.00 705.37 373.98 182.91 1,331.11 0.70 0.47 0.00 1.00 1.83 0.83 1.00 4.00 0.73 0.45 0.00 1.00 0.57 0.50 0.00 1.00 0.97 0.18 0.00 1.00 0.00 0.00 0.00 0.00 DENG @ Hitotsubashi-RIETI Non-Green-Label Number of Obsarvations = 1321 standard mean minimum maximum deviation 5,201.66 1,420.37 2,420.00 11,495.00 0.00 0.00 0.00 0.00 14,673.38 19,420.47 1,036.36 162,406.60 22.19 7.88 0.00 54.08 11.34 5.94 3.00 50.00 760.92 582.13 105.79 5,983.47 0.84 0.36 0.00 1.00 3.53 2.31 0.00 14.00 0.81 0.39 0.00 1.00 0.80 0.40 0.00 1.00 0.89 0.31 0.00 1.00 0.21 0.41 0.00 1.00 43 Summary statistics (Cluster no.5: high propensity score) New contract rent Green label dummy Gross building area Age Number of above-ground stories Standard story area Five city-center wards dummy Time to nearest station Raised floor dummy Individual air conditioning dummy Automated security dummy Renewal dummy 14/10/2016 Green-Label Number of Obsarvations = 324 standard mean minimum maximum deviation 7,860.37 2,093.80 3,025.00 16,649.60 1.00 0.00 1.00 1.00 66,650.90 83,908.30 2,992.86 379,447.90 7.26 8.44 0.00 33.00 20.87 12.82 5.00 54.00 1,630.89 1,242.78 320.00 5,054.55 0.87 0.33 0.00 1.00 3.07 1.84 0.00 10.00 0.98 0.14 0.00 1.00 0.83 0.38 0.00 1.00 0.86 0.35 0.00 1.00 0.13 0.34 0.00 1.00 DENG @ Hitotsubashi-RIETI Non-Green-Label Number of Obsarvations = 1028 standard mean minimum maximum deviation 6,997.10 2,037.83 2,420.00 13,612.50 0.00 0.00 0.00 0.00 44,827.58 53,414.35 992.56 263,996.70 10.68 8.13 0.00 40.16 17.99 10.79 4.00 55.00 1,264.33 926.57 115.70 6,760.33 0.84 0.37 0.00 1.00 3.01 2.28 0.00 12.00 0.94 0.24 0.00 1.00 0.79 0.41 0.00 1.00 0.89 0.31 0.00 1.00 0.12 0.32 0.00 1.00 44 Estimation results (The hedonic function for each cluster) • In cluster no. 5, (the large and new office buildings), the value is negative and nearly zero (-0.0058 (0.0105)). • the results from this cluster are consistent with those used propensity score matching. • In cluster no. 4 (the medium-sized and older office buildings), the result was +0.1378 (0.0328), which is a significant positive effect. • There were no statistically significant effects in cluster no.1 to 3. • The effect of green label on new contract rents is not uniformly +4.3% for all office buildings. Baseline Green label dummy Number of samples Percentage of buildings with green label adjusted R-squared Cluster no.1 Cluster no.2 Cluster no.3 Cluster no.4 Cluster no.5 0.0439*** 0.2453** -0.0343 0.1378*** -0.0058 (0.0115) (0.1231) (0.0950) (0.0328) (0.0105) 1,351 0.22% 0.5034 1,352 0.30% 0.4852 1,351 2.22% 0.6218 1,352 23.96% 0.7684 6,758 5.34% 0.6770 1,352 0.00% 0.4669 Notes: Standard errors in the parenthesis. * p < 0.1, ** p < 0.05, *** p < 0.01 14/10/2016 DENG @ Hitotsubashi-RIETI 45 Robustness check • • • • Office buildings that were granted green label had a higher propensity score than office buildings that were not granted green label. Although we have extracted the samples through clustering to those with relatively closer propensity scores, there may still be a possibility to remove the effect caused by the covariates from each cluster. Therefore, we have chosen to conduct further propensity score matching within the clustered sample groups, extract samples, and then estimate the hedonic function. We will be able to verify the effect of green label in samples with greater homogeneity, which are not influenced by covariates. 14/10/2016 DENG @ Hitotsubashi-RIETI 46 Estimation results (Propensity score matching within the clustered samples) • • • We extracted the samples and conducted further propensity score matching within the cluster no.4. The coefficient of the green label dummy was +0.1297 (0.0370), a significant estimation result. This result is equivalent, proving the robustness of our analysis. PSM Cluster no.4 Green label dummy Number of samples 0.1378*** 0.1297*** (0.0328) (0.0370) 1,351 Percentage of buildings with green label adjusted R-squared Cluster no.4 2.22% 0.6218 60 50.00% 0.7964 Notes: Standard errors in the parenthesis. * p < 0.1, ** p < 0.05, *** p < 0.01 14/10/2016 DENG @ Hitotsubashi-RIETI 47 Extended model estimation • In the probit regression, we learned that newer buildings are more likely to be granted a green label. • Even with clustered data, a certain relation will still exist between the age of the building and the green label dummy. • we make our estimate based on a model that adds the green label dummy and the age as cross-terms to equation (2). • Where, the age will be a true value instead of a dummy variable, since there are only 30 cases in the data that have been granted green labels within the samples in cluster no.4. 14/10/2016 DENG @ Hitotsubashi-RIETI 48 Estimation results (Include the age and green labal dummy as cross-term) • • • In cluster no.4, the coefficient of the green label dummy was +0.3888 (0.0824), showing a significant positive result. And the coefficient of the cross-term comprising the green label dummy and the age of the building was -0.0131 (0.0039), showing a significant negative result. The Effect diminishes with time, and, finally, no further effect exists at about 30 years from the original construction. Cluster no.4 Green label dummy Cross term (Green×Age) Cluster no.4 0.1378*** (0.0328) Green label dummy × Age Number of samples Percentage of buildings with green label adjusted R-squared 0.3888*** (0.0824) -0.0131*** (0.0039) 1,351 1,351 2.22% 0.6218 2.22% 0.6247 Notes: Standard errors in the parenthesis. * p < 0.1, ** p < 0.05, *** p < 0.01 14/10/2016 DENG @ Hitotsubashi-RIETI 49 Conclusion • After performing a quality adjustment of building characteristics using the hedonic approach, green labels showed a significant effect of +4.39% on new contract rents. • By estimating the propensity score for the target variable of the presence or absence of a green label, we confirmed that the building characteristics of age and size make it easier to obtain a green label. • In order to address the problem of endogeneity, we used samples that were adjusted using the nearest neighbor matching technique, based on the propensity scores. In this case, the effect of a green label was not statistically significant. 14/10/2016 DENG @ Hitotsubashi-RIETI 50 Conclusion • • • When we analyzed the samples clustered according to the value of the propensity score, we found that the effect on the stratum in which large and new buildings were concentrated was not statistically significant, at -0.58%. Furthermore, the effect on the stratum in which medium-sized and old buildings were concentrated was +13.78%. By conducting further propensity score matching on the clustered samples, we were able to verify the robustness of our analysis results. There was a significant correlation between cross-terms regarding the age of the building and the green label. We verified that, even in the mid-size market, where green labels made a difference in the contract rent, buildings that are 30 years or older are no longer affected by these labels. 14/10/2016 DENG @ Hitotsubashi-RIETI 51