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We consider here the problem of building a never-ending language learner; that is, an intelligent computer agent that runs forever and that each day must (1) extract, or read, information from the web to populate a growing structured knowledge base, and (2) learn to perform this task better than on the previous day. In particular, we propose an approach and a set of design principles for such an agent, describe a partial implementation of such a system that has already learned to extract a knowledge base containing over 242,000 beliefs with an estimated precision of 74% after running for 67 days, and discuss lessons learned from this preliminary attempt to build a never-ending learning agent.
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Carlson et al. (Mon,) studied this question.
synapsesocial.com/papers/69d755eeb4cef8fedc48f679 — DOI: https://doi.org/10.1609/aaai.v24i1.7519
J. Andrew Carlson
Northwestern University
Justin Betteridge
Carnegie Mellon University
Bryan Kisiel
Carnegie Mellon University
Carnegie Mellon University
Universidade Federal de São Carlos
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