住房次级市场分析的多层次方法

IF 1.7 Q2 GEOGRAPHY
B. Keskin
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引用次数: 1

摘要

摘要有大量文献试图定义和识别大都市住房系统中的空间次级市场。这些方法倾向于使用三种方法中的一种来划分子市场:先验地理、特设细分和数据驱动的单元分组方法。最近,分析师越来越多地使用多层次建模策略来分析住房市场的空间分割。尽管多层次方法越来越普遍,但目前还没有系统分析在多层次建模框架中使用这三种主要的次级市场定义方法中哪一种最有效。本文通过比较这些主要方法对次级市场定义的效用来解决文献中的空白。它开发并评估了三个独立的、不同的子市场多级模型,形成了一个数据集,包括土耳其伊斯坦布尔住房市场的2175笔交易,这是一个新兴的市场背景。结果表明,具有先验子市场伪变量的多级模型比具有特设细分或数据驱动的分层子市场模型更准确地预测价格。类似地,测试结果表明,具有邻域子市场伪变量(先验)的多级模型比其他模型表现更好。这些测试结果表明,子市场的粒度定义在预测准确性方面往往比空间粒度较小的模型表现得更好。该论文还表明,在数据集稀少的情况下,房地产经纪人对次级市场结构的看法可能特别有用,作为微观建模过程的输入。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multilevel approach to the analysis of housing submarkets
ABSTRACT There is a vast literature that seeks to define and identify spatial submarkets in metropolitan housing systems. These tend to use one of three methods to delineate submarkets: a priori geographies, ad hoc subdivision and data-driven approaches to grouping units. Recently, analysts have increasingly used multilevel modelling strategies to analyse spatial segmentation in the housing market. Despite the increasing prevalence of multilevel approaches, there is no existing systematic analysis of which of these three main approaches to submarket definition has the greatest effectiveness when employed in a multilevel modelling framework. This paper addresses the gap in the literature by comparing the utility of these main approaches to submarket definition. It develops and evaluates three separate, distinct multilevel models of submarkets to a data set comprising 2175 transactions in the Istanbul housing market of Turkey, an emergent market context. The results show that multilevel models with a priori submarket dummy variable can predict price more accurately than the models with ad hoc subdivision or data-driven stratified submarkets. Similarly, test results indicate that multilevel models with neighbourhood submarket dummy variables (a priori) perform better than other models. These test results show that granular definition of submarkets tend to perform better in terms of predictive accuracy than less spatially granular models. The paper also suggests that real estate agents’ views of submarket structures might be particularly useful as inputs into micro-modelling processes in contexts where datasets are thin.
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来源期刊
CiteScore
3.00
自引率
15.80%
发文量
49
审稿时长
18 weeks
期刊介绍: Regional Studies, Regional Science is an interdisciplinary open access journal from the Regional Studies Association, first published in 2014. We particularly welcome submissions from authors working on regional issues in geography, economics, planning, and political science. The journal features a streamlined peer-review process and quick turnaround times from submission to acceptance. Authors will normally receive a decision on their manuscript within 60 days of submission.
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