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Modeling, learning and reasoning about preference trees over combinatorial domains

Posted on:2017-05-12Degree:Ph.DType:Dissertation
University:University of KentuckyCandidate:Liu, XudongFull Text:PDF
GTID:1447390005976275Subject:Computer Science
Abstract/Summary:
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.
Keywords/Search Tags:Preference, Reasoning, Social choice theory
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