AI RESEARCH
Contextual Preference Distribution Learning
arXiv CS.LG
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ArXi:2603.17139v1 Announce Type: new Decision-making problems often feature uncertainty stemming from heterogeneous and context-dependent human preferences. To address this, we propose a sequential learning-and-optimization pipeline to learn preference distributions and leverage them to solve downstream problems, for example risk-averse formulations. We focus on human choice settings that can be formulated as (integer) linear programs.