Incorporating Expert Knowledge into Rule Learning via Reinforcement Learning

dc.contributor.advisorHuang, Shuai
dc.contributor.authorZhang, Congjing
dc.date.accessioned2023-08-14T17:05:26Z
dc.date.issued2023-08-14
dc.date.submitted2023
dc.descriptionThesis (Master's)--University of Washington, 2023
dc.description.abstractRule learning algorithms have great interpretability compared with other machine learning models. They also express strong power in discovering interactions between diverse variables. However, the performance of rule learning is greatly limited by the quality and volume of available training data. We conduct a literature review to show that the combination of humans with machine learning algorithms is a solution to these problems. Thus, in this thesis, we propose an integration method of expert knowledge and rule learning via reinforcement learning (ERRL) which automatically involves an expert in the rule generation step of RuleFit. We split a node of decision tree in each time step by using the framework of the Markov Decision Process. Then we incorporate human knowledge with reinforcement learning by shaping rewards based on the expert responses to the chosen action. In an empirical evaluation, we train the ERRL model on a simulated dataset with binary variables. We show that incorporating expert knowledge can improve the classification accuracy compared with ERRL model without humans involved. ERRL model provides rule learning with an effective way to generate rules by iteratively and automatically engaging humans in the learning process.
dc.embargo.lift2025-08-03T17:05:26Z
dc.embargo.termsRestrict to UW for 2 years -- then make Open Access
dc.format.mimetypeapplication/pdf
dc.identifier.otherZhang_washington_0250O_25314.pdf
dc.identifier.urihttp://hdl.handle.net/1773/50465
dc.language.isoen_US
dc.rightsnone
dc.subjecthuman-in-the-loop
dc.subjectreinforcement learning
dc.subjectrule learning
dc.subjectArtificial intelligence
dc.subjectIndustrial engineering
dc.subject.otherIndustrial engineering
dc.titleIncorporating Expert Knowledge into Rule Learning via Reinforcement Learning
dc.typeThesis

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