用于房地产市场分析的可解释机器学习

Felix Lorenz, Jonas Willwersch, Marcelo Cajias, F. Fuerst
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引用次数: 14

摘要

虽然机器学习(ML)擅长预测任务,但由于其复杂的非参数结构,其推理能力受到限制。本文旨在通过可解释机器学习(IML)在房地产环境中阐明机器学习的分析行为。使用享乐ML方法预测德国法兰克福的单位级住宅租金,我们应用了一组模型不可知的解释方法来分解租金价值驱动因素并绘制其随时间的轨迹。居住面积和建筑年龄是房租的最有力预测指标,其次是距离CBD和社区设施的远近。我们的方法能够检测到这些中心的临界距离,超过这个距离,租金往往会更快地下降。相反,靠近酒店设施和公共交通与租金折扣有关。总体而言,我们的研究结果表明,IML方法通过从动态角度说明享乐变量的相对重要性及其与租金价格的关系,为算法决策提供了见解。
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Interpretable Machine Learning for Real Estate Market Analysis
While Machine Learning (ML) excels at predictive tasks, its inferential capacity is limited due to its complex non-parametric structure. This paper aims to elucidate the analytical behavior of ML through Interpretable Machine Learning (IML) in a real estate context. Using a hedonic ML approach to predict unit-level residential rents for Frankfurt, Germany, we apply a set of model-agnostic interpretation methods to decompose the rental value drivers and plot their trajectories over time. Living area and building age are the strongest predictors of rent, followed by proximity to CBD and neighborhood amenities. Our approach is able to detect the critical distances to these centers beyond which rents tend to decline more rapidly. Conversely, close proximity to hospitality facilities as well as public transport is associated with rental discounts. Overall, our results suggest that IML methods provide insights into algorithmic decision-making by illustrating the relative importance of hedonic variables and their relationship with rental prices in a dynamic perspective.
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