成对比较
可解释性
偏好学习
偏爱
机器学习
人工智能
计算机科学
操作员(生物学)
决策者
数学
运筹学
统计
抑制因子
基因
转录因子
化学
生物化学
作者
Manish Aggarwal,Ali Fallah Tehrani
出处
期刊:Informs Journal on Computing
日期:2019-04-01
卷期号:31 (2): 318-334
被引量:52
标识
DOI:10.1287/ijoc.2018.0823
摘要
Preferences provide a means for specifying the desires of a decision maker (DM) in a declarative way. In this paper, based on a DM’s pairwise preferences, we infer the DM’s unique decision model. We capture (a) the attitudinal character, (b) relative criteria importance, and (c) the criteria interaction, all of which are specific to the DM. We make use of the preference-learning (PL) technique to induce predictive preference models from empirical data. Because PL is emerging as a new subfield of machine learning, we could use standard machine-learning methods to accomplish our learning objective. We consider the DM’s exemplary preference information in the form of pairwise comparisons between alternatives as the training information. The DM’s decision model is captured in terms of (a), (b), and (c), through the parameters of an attitudinal Choquet integral operator. The proposed learning approach is validated through an experimental study on 16 standard data sets. The superiority of the proposed method in terms of predictive accuracy and easier interpretability is shown both theoretically as well as empirically.
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