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Modeling, learning and reasoning about preference trees over combinatorial domains.

机译:关于组合域上的偏好树的建模,学习和推理。

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摘要

In my Ph.D. dissertation, I have studied problems arising in various aspects of preferences: preference modeling, preference learning, and preference reasoning, when preferences concern outcomes ranging over combinatorial domains. Preferences is a major research component in artificial intelligence (AI) and decision theory, and is closely related to the social choice theory considered by economists and political scientists. In my dissertation, I have exploited emerging connections between preferences in AI and social choice theory. Most of my research is on qualitative preference representations that extend and combine existing formalisms such as conditional preference nets, lexicographic preference trees, answer-set optimization programs, possibilistic logic, and conditional preference networks; on learning problems that aim at discovering qualitative preference models and predictive preference information from practical data; and on preference reasoning problems centered around qualitative preference optimization and aggregation methods. Applications of my research include recommender systems, decision support tools, multi-agent systems, and Internet trading and marketing platforms.;KEYWORDS: preferences, decision theory, social choice theory, knowledge representation and reasoning, computational complexity, artificial intelligence.
机译:在我的博士学位论文中,我研究了在偏好的各个方面出现的问题:偏好建模,偏好学习和偏好推理,当偏好涉及组合域范围内的结果时。偏好是人工智能(AI)和决策理论的主要研究组成部分,与经济学家和政治学家考虑的社会选择理论密切相关。在我的论文中,我利用了AI偏好与社会选择理论之间的新兴联系。我的大部分研究工作都在定性偏好表示上,这些定性表示扩展并结合了现有的形式主义,例如条件偏好网,词典顺序偏好树,答案集优化程序,可能性逻辑和条件偏好网络。学习旨在从实际数据中发现定性偏好模型和预测性偏好信息的学习问题;关于偏好推理的问题集中在定性偏好优化和聚合方法上。我的研究应用包括推荐系统,决策支持工具,多代理系统以及Internet交易和营销平台。关键词:偏好,决策理论,社会选择理论,知识表示和推理,计算复杂性,人工智能。

著录项

  • 作者

    Liu, Xudong.;

  • 作者单位

    University of Kentucky.;

  • 授予单位 University of Kentucky.;
  • 学科 Computer science.;Artificial intelligence.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 161 p.
  • 总页数 161
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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