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Decomposition Strategies for Constructive Preference Elicitation

机译:建设性偏好诱因的分解策略

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摘要

We tackle the problem of constructive preference elicitation, that is the problem of learning user preferences over very large decision problems, involving a combinatorial space of possible outcomes. In this setting, the suggested configuration is synthesized on-the-fly by solving a constrained optimization problem, while the preferences are learned iteratively by interacting with the user. Previous work has shown that Coactive Learning is a suitable method for learning user preferences in constructive scenarios. In Coactive Learning the user provides feedback to the algorithm in the form of an improvement to a suggested configuration. When the problem involves many decision variables and constraints, this type of interaction poses a significant cognitive burden on the user. We propose a decomposition technique for large preference-based decision problems relying exclusively on inference and feedback over partial configurations. This has the clear advantage of drastically reducing the user cognitive load. Additionally, part-wise inference can be (up to exponentially) less computationally demanding than inference over full configurations. We discuss the theoretical implications of working with parts and present promising empirical results on one synthetic and two realistic constructive problems.
机译:我们解决了建设性偏好引出的问题,即在非常大的决策问题上学习用户偏好的问题,涉及可能结果的组合空间。在此设置中,通过解决受约束的优化问题,通过求解所建议的配置,而通过与用户交互来迭代地学习偏好。以前的工作表明,Coactive学习是一种合适的方法,用于学习在建设性场景中的用户偏好。在Coactive Leach学习中,用户以改进的形式向算法提供反馈,以改善建议的配置。当问题涉及许多决策变量和约束时,这种类型的交互对用户构成了显着的认知负担。我们提出了一种用于基于大型偏好的决策问题的分解技术,其专门依赖于局部配置的推理和反馈。这具有明显地减少用户认知负载的明显优势。另外,部分明智推断可以(最多为指数增长),而不是通过完整配置推断的计算要求苛刻。我们讨论了与零件合作的理论影响,并提出了对一个合成和两个现实建设性问题的有前途的经验结果。

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