Office Building Rental Prediction Model Based on Locational Determinants

IF 0.6 Q4 CONSTRUCTION & BUILDING TECHNOLOGY
Thuraiya Mohd, Mohamad Harussani, Suraya Masrom, Hanafi Ab Rahman, Lathifah Rahman
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Abstract

The importance of locational determinants in determining rental rates in the office market has long been acknowledged and unquestionably become the significant factor for assessing the rental potential of various property types. Nevertheless, the rapid progressing research that discovers the effect of locational determinants on the rental, limited study that was deeply looked into the provision of location to the rental mainly in Malaysia cases. Thus, this study aims to develop a predictive model for office building rentals based on a comprehensive analysis of locational determinants. To achieve the aims of this study, the objectives was outline which are to identify the determinant factors of location and to analyse the significant determinant factors. Through the application of machine learning, this study captured the intricate connections between rentals and different location-related factors. By leveraging advanced algorithms which are decision trees, random forests, support vector machines and gradient boosted trees, the model can effectively handle diverse datasets, encompassing variables such as proximity to central business districts, access to public transport network, neighbourhood and amenities, and traffic condition. Through rigorous data collection and pre-processing, this study constructs a robust dataset comprising historical rental dataset collected in the city area of Kuala Lumpur, Malaysia acquired from Property Services Department (JPPH) were used to train and validate the predictive model via R-squared performance metrics. The results indicate that proximity to Central Business District (CBD) emerges as a significant determinant with the most contribution to the model’s prediction, with offices located in close proximity commanding higher rentals. This study provides valuable insights into the prediction of office building rentals based on locational determinants, offering a practical tool for stakeholders in the real estate industry.
基于区位决定因素的写字楼租金预测模型
地点决定因素在决定写字楼市场租金方面的重要性早已得到承认,并且毫无疑问地成为评估各种物业类型租金潜力的重要因素。尽管如此,快速发展的研究发现了位置决定因素对租金的影响,有限的研究深入研究了主要在马来西亚的情况下提供租金的位置。因此,本研究旨在建立一个基于区位决定因素综合分析的办公楼租金预测模型。为了达到本研究的目的,目标是确定位置的决定因素,并分析重要的决定因素。通过机器学习的应用,本研究捕获了租金与不同位置相关因素之间的复杂联系。通过利用决策树、随机森林、支持向量机和梯度增强树等先进算法,该模型可以有效地处理各种数据集,包括诸如靠近中央商务区、公共交通网络、社区和设施以及交通状况等变量。通过严格的数据收集和预处理,本研究构建了一个强大的数据集,其中包括从马来西亚物业服务部(JPPH)收集的马来西亚吉隆坡市区的历史租金数据集,并通过r平方性能指标来训练和验证预测模型。结果表明,靠近中央商务区(CBD)是一个重要的决定因素,对模型的预测贡献最大,靠近中心商务区的办公室租金更高。本研究为基于区位决定因素的办公楼租金预测提供了有价值的见解,为房地产行业的利益相关者提供了实用的工具。
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
0.90
自引率
20.00%
发文量
25
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