Estimating Market Fundamentals from REIT data

D. Geltner, Anil Kumar, Alex M. van de Minne
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引用次数: 1

Abstract

In this paper we propose a new methodology for the estimation of fundamental property-level investment real estate time series performance and operating data using real estate investment trust (REIT) data. The method-ology is particularly useful to develop publicly accessible operating statistics, such as income or expenses per square foot. Commercial property operating statistics are relatively under-studied from an investment perspective. To demonstrate the methodology and its usefulness, we estimate the time series of property values, net operating income, cap rates, operating expenses and capital expenditures, per square foot of building area, by property type (sector) at a quarterly frequency for multiple specific geographic markets from 2004 through 2018. The methodology is essentially an extension and enhancement of the so-called “Pure Play” method introduced by Geltner and Kluger (1998). It enables easy derivation of important basic data that should be useful for academic and industry practitioner analysts, derived from high quality stock market based information. The extensions and enhancements introduced here to the prior methodology allow estimation of actual quantity levels rather than just longitudinal relative values (index numbers). They also avoid the need for any data source other than published REIT data. And we introduce a Bayesian framework that allows the estimation of reliable time series even in small markets.
从房地产投资信托基金数据估计市场基本面
本文提出了一种利用房地产投资信托基金(REIT)数据估计房地产投资时间序列绩效和经营数据的新方法。该方法对于开发可公开访问的运营统计数据特别有用,例如每平方英尺的收入或费用。从投资的角度来看,商业地产经营统计数据的研究相对较少。为了证明该方法及其实用性,我们以2004年至2018年多个特定地理市场的季度频率,按物业类型(行业)估算每平方英尺建筑面积的物业价值、净营业收入、资本化率、运营费用和资本支出的时间序列。该方法本质上是对Geltner和Kluger(1998)引入的所谓“纯粹游戏”方法的扩展和增强。它可以很容易地从高质量的股票市场信息中推导出重要的基本数据,这些数据对于学术和行业从业者分析师来说应该是有用的。这里介绍的对先前方法的扩展和增强允许估计实际数量水平,而不仅仅是纵向相对值(指数)。它们还避免了除了发布的REIT数据之外的任何数据源的需要。我们引入了一个贝叶斯框架,它允许在小市场中估计可靠的时间序列。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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