A defeasible reasoning model of inductive concept learning from examples and communication

作者:

摘要

This paper introduces a logical model of inductive generalization, and specifically of the machine learning task of inductive concept learning (ICL). We argue that some inductive processes, like ICL, can be seen as a form of defeasible reasoning. We define a consequence relation characterizing which hypotheses can be induced from given sets of examples, and study its properties, showing they correspond to a rather well-behaved non-monotonic logic. We will also show that with the addition of a preference relation on inductive theories we can characterize the inductive bias of ICL algorithms. The second part of the paper shows how this logical characterization of inductive generalization can be integrated with another form of non-monotonic reasoning (argumentation), to define a model of multiagent ICL. This integration allows two or more agents to learn, in a consistent way, both from induction and from arguments used in the communication between them. We show that the inductive theories achieved by multiagent induction plus argumentation are sound, i.e. they are precisely the same as the inductive theories built by a single agent with all data.

论文关键词:Induction,Logic,Argumentation,Machine learning,Concept learning

论文评审过程:Received 27 September 2011, Revised 14 June 2012, Accepted 29 August 2012, Available online 30 August 2012.

论文官网地址:https://doi.org/10.1016/j.artint.2012.08.006