Prediction of distributions of unit prices for real estate properties on the basis of the characteristics of PSI-processes

Q3 Economics, Econometrics and Finance Business Informatics Pub Date : 2023-12-31 DOI:10.17323/2587-814x.2023.4.7.24
Michael Laskin, Oleg Rusakov
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Abstract

Real estate market price forecasting is always in the focus of interests of scientists-economists, market analysts, market participants (sellers and buyers), marketing services of building complex enterprises, analysts working for banks and insurance companies and investors. Under present day conditions, the price behavior of properties on real estate markets takes especially important meaning subject to the influence of such factors as changes in the structure of household incomes, changes in mortgage rates and their availability, dynamic changes in the macroeconomic and other external socio-economic and political type factors. However, unlike the financial and securities markets, the real estate market is always characterized by a delayed reaction to external perturbations, often up to half a year, which allows us to hope for an appropriate construction of forecasts, at least in time for the delayed reaction. Traditional autoregressive forecasting methods are characterized by rapidly increasing forecast variance, because they assume a factor of stochastic volatility. This paper proposes a model and method of forecast construction based on stochastic processes of the “Poisson random index” having a short time for reaching a stationary stable variance. The model is based on the “principle of replacements” of current prices with new ones. We analyze in detail an example of the application of the “principle of replacements” for construction of price forecasts on secondary residential real estate in St. Petersburg which is based on data of four-year observations of offer prices.
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根据 PSI 过程的特点预测房地产单价的分布情况
房地产市场价格预测一直是科学家-经济学家、市场分析师、市场参与者(卖方和买方)、建筑综合体企业营销部门、银行和保险公司分析师以及投资者关注的焦点。在当今条件下,房地产市场的价格行为受家庭收入结构变化、抵押贷款利率及其可用性变化、宏观经济动态变化以及其他外部社会经济和政治因素的影响,具有特别重要的意义。然而,与金融和证券市场不同的是,房地产市场对外部扰动的反应总是具有延迟性,通常长达半年之久,这使得我们可以希望至少在延迟反应时间内构建适当的预测。传统的自回归预测方法的特点是预测方差迅速增大,因为它们假定了随机波动因素。本文提出了一种基于 "泊松随机指数 "随机过程的预测模型和构建方法,该随机过程达到稳定方差的时间很短。该模型基于新价格替换当前价格的 "替换原则"。我们详细分析了应用 "替换原则 "构建圣彼得堡二手住宅房地产价格预测的实例,该实例基于四年的报价观测数据。
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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来源期刊
Business Informatics
Business Informatics Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
1.50
自引率
0.00%
发文量
21
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