Prototype-based learning for real estate valuation: a machine learning model that explains prices

IF 4.4 3区 管理学 Q1 OPERATIONS RESEARCH & MANAGEMENT SCIENCE Annals of Operations Research Pub Date : 2024-09-23 DOI:10.1007/s10479-024-06273-1
Jose A. Rodriguez-Serrano
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Abstract

The systematic prediction of real estate prices is a foundational block in the operations of many firms and has individual, societal and policy implications. In the past, a vast amount of works have used common statistical models such as ordinary least squares or machine learning approaches. While these approaches yield good predictive accuracy, most models work very differently from the human intuition in understanding real estate prices. Usually, humans apply a criterion known as “direct comparison”, whereby the property to be valued is explicitly compared with similar properties. This trait is frequently ignored when applying machine learning to real estate valuation. In this article, we propose a model based on a methodology called prototype-based learning, that to our knowledge has never been applied to real estate valuation. The model has four crucial characteristics: (a) it is able to capture non-linear relations between price and the input variables, (b) it is a parametric model able to optimize any loss function of interest, (c) it has some degree of explainability, and, more importantly, (d) it encodes the notion of direct comparison. None of the past approaches for real estate prediction comply with these four characteristics simultaneously. The experimental validation indicates that, in terms of predictive accuracy, the proposed model is better or on par to other machine learning based approaches. An interesting advantage of this method is the ability to summarize a dataset of real estate prices into a few “prototypes”, a set of the most representative properties.

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基于原型的房地产估价学习:一种解释价格的机器学习模型
对房地产价格的系统预测是许多公司运作的基础,对个人、社会和政策都有影响。在过去,大量的工作使用了普通的统计模型,如普通的最小二乘或机器学习方法。虽然这些方法产生了良好的预测准确性,但大多数模型在理解房地产价格方面与人类的直觉非常不同。通常,人们应用一种称为“直接比较”的标准,即要估值的属性与类似的属性进行明确的比较。在将机器学习应用于房地产估值时,这一特性经常被忽略。在本文中,我们提出了一个基于原型学习方法的模型,据我们所知,这种方法从未应用于房地产估值。该模型有四个关键特征:(a)它能够捕捉价格和输入变量之间的非线性关系,(b)它是一个参数模型,能够优化任何感兴趣的损失函数,(c)它具有一定程度的可解释性,更重要的是,(d)它编码了直接比较的概念。过去的房地产预测方法没有一种同时符合这四个特征。实验验证表明,就预测准确性而言,所提出的模型优于或等同于其他基于机器学习的方法。这种方法的一个有趣的优点是能够将房地产价格数据集总结为几个“原型”,即一组最具代表性的属性。
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来源期刊
Annals of Operations Research
Annals of Operations Research 管理科学-运筹学与管理科学
CiteScore
7.90
自引率
16.70%
发文量
596
审稿时长
8.4 months
期刊介绍: The Annals of Operations Research publishes peer-reviewed original articles dealing with key aspects of operations research, including theory, practice, and computation. The journal publishes full-length research articles, short notes, expositions and surveys, reports on computational studies, and case studies that present new and innovative practical applications. In addition to regular issues, the journal publishes periodic special volumes that focus on defined fields of operations research, ranging from the highly theoretical to the algorithmic and the applied. These volumes have one or more Guest Editors who are responsible for collecting the papers and overseeing the refereeing process.
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