Learning classifier systems from a reinforcement learning perspective (Q1864377)

From MaRDI portal





scientific article; zbMATH DE number 1883899
Language Label Description Also known as
English
Learning classifier systems from a reinforcement learning perspective
scientific article; zbMATH DE number 1883899

    Statements

    Learning classifier systems from a reinforcement learning perspective (English)
    0 references
    18 March 2003
    0 references
    We analyze learning classifier systems in the light of tabular reinforcement learning. We note that although genetic algorithms are the most distinctive feature of learning classifier systems, it is not clear whether genetic algorithms are important to learning classifiers systems. In fact, there are models which are strongly based on evolutionary computation (e.g., Wilson's XCS) and others which do not exploit evolutionary computation at all (e.g., Stolzmann's ACS). To find some clarifications, we try to develop learning classifier systems ''from scratch'', i.e., starting from one of the most known reinforcement learning technique, Q-learning. We first consider thebasics of reinforcement learning: a problem modeled as a Markov decision process and tabular Q-learning. We introduce a formal framework to define a general purpose rule-based representation which we use to implement tabular Q-learning. We formally define generalization within rules and discuss the possible approaches to extend our rule-based Q-learning with generalization capabilities. We suggest that genetic algorithms are probably the most general approach for adding generalization although they might be not the only solution.
    0 references
    learning classifier systems
    0 references
    tabular reinforcement learning
    0 references
    0 references

    Identifiers