用于评估基于机器学习的自动估价模型性能的指标

IF 2.1 Q2 URBAN STUDIES Journal of Property Research Pub Date : 2021-04-03 DOI:10.1080/09599916.2020.1858937
Miriam Steurer, R. Hill, Norbert Pfeifer
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引用次数: 31

摘要

基于机器学习(ML)算法的自动估价模型(AVMs)被广泛用于预测房价。虽然文献中有共识认为在这种情况下应该使用交叉验证(CV)进行模型选择,但该主题的跨学科性质使得很难就在CV练习的每个阶段使用哪个指标达成共识。我们收集了48个指标(来自AVM文献和其他地方),并根据它们的结构将它们分为七组。每一组都侧重于误差分布的一个特定方面。根据数据类型和AVM的目的,某些类可以满足用户的需求,而其他类则不能。此外,我们在一个实证应用中展示了度量的选择如何影响模型的选择,通过应用每个度量来评估五个常用的AVM模型。最后——因为产生48个不同的性能指标并不总是可行的——我们提供了一个简短的7个指标列表,这些指标非常适合评估avm。这些指标满足对称条件,我们发现这对AVM性能很重要,并且可以提供良好的整体模型性能排名。
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Metrics for evaluating the performance of machine learning based automated valuation models
ABSTRACT Automated Valuation Models (AVMs) based on Machine Learning (ML) algorithms are widely used for predicting house prices. While there is consensus in the literature that cross-validation (CV) should be used for model selection in this context, the interdisciplinary nature of the subject has made it hard to reach consensus over which metrics to use at each stage of the CV exercise. We collect 48 metrics (from the AVM literature and elsewhere) and classify them into seven groups according to their structure. Each of these groups focuses on a particular aspect of the error distribution. Depending on the type of data and the purpose of the AVM, the needs of users may be met by some classes, but not by others. In addition, we show in an empirical application how the choice of metric can influence the choice of model, by applying each metric to evaluate five commonly used AVM models. Finally – since it is not always practicable to produce 48 different performance metrics – we provide a short list of 7 metrics that are well suited to evaluate AVMs. These metrics satisfy a symmetry condition that we find is important for AVM performance, and can provide a good overall model performance ranking.
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来源期刊
CiteScore
3.80
自引率
5.30%
发文量
13
期刊介绍: The Journal of Property Research is an international journal. The title reflects the expansion of research, particularly applied research, into property investment and development. The Journal of Property Research publishes papers in any area of real estate investment and development. These may be theoretical, empirical, case studies or critical literature surveys.
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