Examining key macroeconomic determinants of serviced apartments price index: the case of Kuala Lumpur, Malaysia

IF 1.5 Q3 URBAN STUDIES
C. Cheng, Gabriel Hoh Teck Ling
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引用次数: 1

Abstract

Purpose Increasing overhang of serviced apartments poses a serious concern to the national property market. This study aims to examine the impacts of macroeconomic determinants, namely, gross domestic product (GDP), consumer confidence index (CF), existing stocks (ES), incoming supply (IS) and completed project (CP) on serviced apartment price changes. Design/methodology/approach To achieve more accurate, quality price changes, a serviced apartment price index (SAPI) was constructed through a self-developed hedonic price index model. This study has collected 1,567 transaction data in Kuala Lumpur, covering 2009Q1–2018Q4 for price index construction and data were analysed using the vector autoregressive model, the vector error correction model and the fully modified ordinary least squares (OLS) (FMOLS). Findings Results of the regression model show that only GDP, ES and IS were significantly associated with SAPI, with an R2 of 0.7, where both ES and IS have inverse relationships with SAPI. More precisely, it is predicted that the price of serviced apartments will be reduced by 0.56% and 0.21% for every 1% increase in ES and IS, respectively. Practical implications Therefore, government monitoring of serviced apartments’ future supply is crucial by enforcing land use-planning regulations via stricter development approval of serviced apartments to safeguard and achieve more stable property prices. Originality/value By adopting an innovative approach to estimating the response of price change to supply and demand in a situation where there is no price indicator for serviced apartments, the study addresses the knowledge gap, especially in terms of understanding what are the key determinants of, and to what extent they influence, the SAPI.
考察服务式公寓价格指数的主要宏观经济决定因素:以马来西亚吉隆坡为例
目的越来越多的服务式公寓对全国房地产市场构成了严重关切。本研究旨在检验宏观经济决定因素,即国内生产总值(GDP)、消费者信心指数(CF)、现有库存(ES)、供应量(IS)和完工项目(CP)对服务式公寓价格变化的影响。设计/方法/方法为了实现更准确、更优质的价格变化,通过自行开发的特征价格指数模型构建了服务式公寓价格指数(SAPI)。本研究收集了吉隆坡2009年第一季度至2018年第四季度的1567个交易数据,用于价格指数构建,并使用向量自回归模型、向量误差校正模型和完全修正的最小二乘法(OLS)对数据进行了分析。回归模型的结果显示,只有GDP、ES和IS与SAPI显著相关,R2为0.7,其中ES和IS都与SAPI呈反比。更准确地说,据预测,ES和is每上涨1%,服务式公寓的价格将分别下降0.56%和0.21%。实践意义因此,政府对服务式公寓未来供应的监控至关重要,通过更严格的服务式公寓开发审批来执行土地使用规划法规,以保障和实现更稳定的房地产价格。独创性/价值通过采用创新的方法来估计在没有服务式公寓价格指标的情况下价格变化对供需的反应,该研究解决了知识差距,特别是在理解SAPI的关键决定因素以及它们对SAPI的影响程度方面。
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
CiteScore
2.80
自引率
29.40%
发文量
68
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