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Learning World Models in Environments with Manifest Causal Structure

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dc.creator Bergman, Ruth
dc.date 2004-10-20T14:45:25Z
dc.date 2004-10-20T14:45:25Z
dc.date 1995-05-05
dc.date.accessioned 2013-10-09T02:46:50Z
dc.date.available 2013-10-09T02:46:50Z
dc.date.issued 2013-10-09
dc.identifier AITR-1513
dc.identifier http://hdl.handle.net/1721.1/6777
dc.identifier.uri http://koha.mediu.edu.my:8181/xmlui/handle/1721
dc.description This thesis examines the problem of an autonomous agent learning a causal world model of its environment. Previous approaches to learning causal world models have concentrated on environments that are too "easy" (deterministic finite state machines) or too "hard" (containing much hidden state). We describe a new domain --- environments with manifest causal structure --- for learning. In such environments the agent has an abundance of perceptions of its environment. Specifically, it perceives almost all the relevant information it needs to understand the environment. Many environments of interest have manifest causal structure and we show that an agent can learn the manifest aspects of these environments quickly using straightforward learning techniques. We present a new algorithm to learn a rule-based causal world model from observations in the environment. The learning algorithm includes (1) a low level rule-learning algorithm that converges on a good set of specific rules, (2) a concept learning algorithm that learns concepts by finding completely correlated perceptions, and (3) an algorithm that learns general rules. In addition this thesis examines the problem of finding a good expert from a sequence of experts. Each expert has an "error rate"; we wish to find an expert with a low error rate. However, each expert's error rate and the distribution of error rates are unknown. A new expert-finding algorithm is presented and an upper bound on the expected error rate of the expert is derived.
dc.format 142 p.
dc.format 12411678 bytes
dc.format 1775267 bytes
dc.format application/postscript
dc.format application/pdf
dc.language en_US
dc.relation AITR-1513
dc.subject machine learning
dc.subject intelligent agents
dc.title Learning World Models in Environments with Manifest Causal Structure


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