{"title":"An analysis of the determinants of office real estate price modelling in Nigeria: using a Delphi approach","authors":"A. A. Yakub, K. Achu, H. Ali, Rohaya Abdul Jalil","doi":"10.1108/pm-08-2021-0060","DOIUrl":null,"url":null,"abstract":"PurposeThere are a plethora of putative influencing variables available in the literature for modelling real estate prices using AI. Their choice tends to differ from one researcher to the other, consequently leading to subjectivity in the selection process. Thus, there is a need to seek the viewpoint of practitioners on the applicability and level of significance of these academically established variables.Design/methodology/approachUsing the Delphi technique, this study collated and structured the 35 underlying micro- and macroeconomic parameters derived from literature and eight variables suggested by 11 selected real estate experts. The experts ranked these variables in order of influence using a seven-point Likert scale with a reasonable consensus during the fourth round (Kendall's W = 0.7418).FindingsThe study discovered that 16 variables are very influential with seven being extremely influential. These extremely influential variables include flexibility, adaptability of design, accessibility to the building, the size of office spaces, quality of construction, state of repairs, expected capital growth and proximity to volatile areas.Practical implicationsThe results of this study improve the quality of data available to valuers towards a fortified price prediction for investors, and thereby, restoring the valuers' credibility and integrity.Originality/valueThe “volatility level of an area”, which was revealed as a distinct factor in the survey is used to add to current knowledge concerning office price. Hence, this study offers real estate practitioners and researchers valuable knowledge on the critical variables that must be considered in AI-based price modelling.","PeriodicalId":46102,"journal":{"name":"Property Management","volume":" ","pages":""},"PeriodicalIF":1.1000,"publicationDate":"2022-04-06","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Property Management","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1108/pm-08-2021-0060","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q4","JCRName":"MANAGEMENT","Score":null,"Total":0}
引用次数: 1
Abstract
PurposeThere are a plethora of putative influencing variables available in the literature for modelling real estate prices using AI. Their choice tends to differ from one researcher to the other, consequently leading to subjectivity in the selection process. Thus, there is a need to seek the viewpoint of practitioners on the applicability and level of significance of these academically established variables.Design/methodology/approachUsing the Delphi technique, this study collated and structured the 35 underlying micro- and macroeconomic parameters derived from literature and eight variables suggested by 11 selected real estate experts. The experts ranked these variables in order of influence using a seven-point Likert scale with a reasonable consensus during the fourth round (Kendall's W = 0.7418).FindingsThe study discovered that 16 variables are very influential with seven being extremely influential. These extremely influential variables include flexibility, adaptability of design, accessibility to the building, the size of office spaces, quality of construction, state of repairs, expected capital growth and proximity to volatile areas.Practical implicationsThe results of this study improve the quality of data available to valuers towards a fortified price prediction for investors, and thereby, restoring the valuers' credibility and integrity.Originality/valueThe “volatility level of an area”, which was revealed as a distinct factor in the survey is used to add to current knowledge concerning office price. Hence, this study offers real estate practitioners and researchers valuable knowledge on the critical variables that must be considered in AI-based price modelling.
目的:文献中有大量假定的影响变量可用于使用人工智能对房地产价格进行建模。他们的选择往往因研究者而异,从而导致选择过程中的主观性。因此,有必要寻求实践者对这些学术上建立的变量的适用性和重要程度的看法。采用德尔菲法,本研究整理并构建了35个微观和宏观经济参数,这些参数来源于文献和11位选定的房地产专家建议的8个变量。在第四轮中,专家们使用七点李克特量表(Kendall's W = 0.7418)将这些变量按影响顺序排序。研究发现16个变量非常有影响力,其中7个非常有影响力。这些极具影响力的变量包括灵活性、设计适应性、建筑的可达性、办公空间的大小、建筑质量、维修状况、预期资本增长以及与动荡地区的接近程度。实际意义本研究的结果提高了估价师可获得的数据质量,为投资者提供了一个强化的价格预测,从而恢复了估价师的信誉和诚信。原创性/价值“一个地区的波动水平”,在调查中被揭示为一个独特的因素,用于增加当前有关写字楼价格的知识。因此,本研究为房地产从业者和研究人员提供了在基于人工智能的价格建模中必须考虑的关键变量的宝贵知识。
期刊介绍:
Property Management publishes: ■Refereed papers on important current trends and reserach issues ■Digests of market reports and data ■In-depth analysis of a specific area ■Legal updates on judgments in landlord and tenant law ■Regular book and internet reviews providing an overview of the growing body of property market research