计算机科学
语义学(计算机科学)
人工智能
一致性(知识库)
偏爱
机器学习
偏好诱导
班级(哲学)
认知
主动学习(机器学习)
启发式
偏好学习
决策支持系统
认知负荷
决策分析
自然语言处理
决策论
监督学习
作者
Yuan Gao,Yi Wang,Linyu Jin,Quanbo Zha
标识
DOI:10.1142/s0219622026500409
摘要
Previous data-driven methods for learning the personalized individual semantics (PIS) of decision makers (DMs) in linguistic multi-attribute decision-making (LMADM) often require extensive data collection, demanding excessive cognitive effort from DMs. To account for limited cognitive capacity and enhance the prediction and understanding of human assessment behavior, this paper proposes an active learning model for interactive preference elicitation. The model uses human evaluation behavior to capture PIS, thereby reflecting the underlying psychological preferences and internal cognitive states of DMs during their decision processes. This approach quantifies classification uncertainty while maintaining consistency with observed assessment behavior. To guide the active learning process, two uncertainty measures are introduced: the class distribution index and the width of the possible assignment interval. Based on these measures, four novel heuristic strategies are developed to facilitate PIS learning and improve the effectiveness of the process. Finally, a sensitivity analysis is conducted to evaluate the performance of the proposed PIS learning model.
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