可解释性
透明度(行为)
房地产
经济租金
计算机科学
公司治理
黑匣子
人工智能
管理科学
业务
经济
财务
微观经济学
计算机安全
作者
Ian Lenaers,Lieven De Moor
标识
DOI:10.1016/j.frl.2023.104306
摘要
Black-box artificial intelligence (AI) models are popular in real estate research, but their lack of interpretability raises concerns. To address this, explainable AI (XAI) techniques have been applied to shed light on these models. This paper presents a comparative study of six global XAI techniques on a CatBoost model for Belgian residential rent prediction. Results show that while some techniques offer substitute insights, others provide complementary perspectives on the model's behavior. Employing multiple XAI techniques is crucial to comprehensively understand rents drivers which contributes to transparency, interpretability, and model governance in the real estate industry, advancing the adoption of (X)AI.
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