Learning classifier systems from a reinforcement learning perspective

被引:31
|
作者
P. L. Lanzi
机构
[1] Dipartimento di Elettronica ed Informazione,
[2] Politecnico di Milano,undefined
[3] Piazza Leonardo da Vinci n. 32,undefined
[4] 1-20133 Milano e-mail: pierluca.lanzi@polimi.it,undefined
关键词
Keywords Genetic algorithms, Reinforcement learning, XCS, Q-learning;
D O I
10.1007/s005000100113
中图分类号
学科分类号
摘要
 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.
引用
收藏
页码:162 / 170
页数:8
相关论文
共 50 条
  • [21] Learning classification systems for learning by reinforcement
    Padilla, Felipe
    Padilla, Alejandro
    Ponce, Julio C.
    [J]. CISCI 2007: 6TA CONFERENCIA IBEROAMERICANA EN SISTEMAS, CIBERNETICA E INFORMATICA, MEMORIAS, VOL III, 2007, : 184 - 189
  • [22] Multiagent reinforcement learning with organizational-learning oriented Classifier System
    Takadama, K
    Nakasuka, S
    Terano, T
    [J]. 1998 IEEE INTERNATIONAL CONFERENCE ON EVOLUTIONARY COMPUTATION - PROCEEDINGS, 1998, : 63 - 68
  • [23] A Distributional Perspective on Reinforcement Learning
    Bellemare, Marc G.
    Dabney, Will
    Munos, Remi
    [J]. INTERNATIONAL CONFERENCE ON MACHINE LEARNING, VOL 70, 2017, 70
  • [24] Learning classifier systems: a survey
    Sigaud, Olivier
    Wilson, Stewart W.
    [J]. SOFT COMPUTING, 2007, 11 (11) : 1065 - 1078
  • [25] Symbiogenesis in learning classifier systems
    Tomlinson, A
    Bull, L
    [J]. ARTIFICIAL LIFE, 2001, 7 (01) : 33 - 61
  • [26] Learning classifier systems: then and now
    Lanzi, Pier Luca
    [J]. EVOLUTIONARY INTELLIGENCE, 2008, 1 (01) : 63 - 82
  • [27] Learning classifier systems resources
    T. Kovacs
    [J]. Soft Computing, 2002, 6 (3) : 240 - 243
  • [28] Learning Unfair Trading: a Market Manipulation Analysis From the Reinforcement Learning Perspective
    Martinez-Miranda, Enrique
    McBurney, Peter
    Howard, Matthew J. W.
    [J]. PROCEEDINGS OF THE 2016 IEEE CONFERENCE ON EVOLVING AND ADAPTIVE INTELLIGENT SYSTEMS (EAIS), 2016, : 103 - 109
  • [29] Learning classifier systems: a survey
    Olivier Sigaud
    Stewart W. Wilson
    [J]. Soft Computing, 2007, 11 : 1065 - 1078
  • [30] A survey on computation offloading in edge systems: From the perspective of deep reinforcement learning approaches
    Peng, Peng
    Lin, Weiwei
    Wu, Wentai
    Zhang, Haotong
    Peng, Shaoliang
    Wu, Qingbo
    Li, Keqin
    [J]. COMPUTER SCIENCE REVIEW, 2024, 53