• DocumentCode
    1407968
  • Title

    R-POPTVR: A Novel Reinforcement-Based POPTVR Fuzzy Neural Network for Pattern Classification

  • Author

    Wong, Wing-Cheong ; Cho, Siu-Yeung ; Quek, Chai

  • Volume
    20
  • Issue
    11
  • fYear
    2009
  • Firstpage
    1740
  • Lastpage
    1755
  • Abstract
    In general, a fuzzy neural network (FNN) is characterized by its learning algorithm and its linguistic knowledge representation. However, it does not necessarily interact with its environment when the training data is assumed to be an accurate description of the environment under consideration. In interactive problems, it would be more appropriate for an agent to learn from its own experience through interactions with the environment, i.e., reinforcement learning. In this paper, three clustering algorithms are developed based on the reinforcement learning paradigm. This allows a more accurate description of the clusters as the clustering process is influenced by the reinforcement signal. They are the REINFORCE clustering technique I (RCT-I), the REINFORCE clustering technique II (RCT-II), and the episodic REINFORCE clustering technique (ERCT). The integrations of the RCT-I, the RCT-II, and the ERCT within the pseudo-outer product truth value restriction (POPTVR), which is a fuzzy neural network integrated with the truth restriction value (TVR) inference scheme in its five layered feedforward neural network, form the RPOPTVR-I, the RPOPTVR-II, and the ERPOPTVR, respectively. The Iris, Phoneme, and Spiral data sets are used for benchmarking. For both Iris and Phoneme data, the RPOPTVR is able to yield better classification results which are higher than the original POPTVR and the modified POPTVR over the three test trials. For the Spiral data set, the RPOPTVR-II is able to outperform the others by at least a margin of 5.8% over multiple test trials. The three reinforcement-based clustering techniques applied to the POPTVR network are able to exhibit the trial-and-error search characteristic that yields higher qualitative performance.
  • Keywords
    feedforward neural nets; fuzzy neural nets; fuzzy set theory; inference mechanisms; knowledge representation; learning (artificial intelligence); pattern classification; pattern clustering; ERCT-I; FNN; R-POPTVR; TVR inference scheme; episodic reinforce clustering technique; fuzzy neural network; iris data set; layered feedforward neural network; linguistic knowledge representation; pattern classification; phoneme data set; pseudo-outer product truth value restriction; reinforcement learning algorithm; reinforcement-based POPTVR; truth restriction value; Clustering methods; fuzzy neural networks (FNNs); pattern classification; reinforcement learning; Artificial Intelligence; Computer Simulation; Data Interpretation, Statistical; Fuzzy Logic; Neural Networks (Computer); Pattern Recognition, Automated; Reinforcement (Psychology); Software;
  • fLanguage
    English
  • Journal_Title
    Neural Networks, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1045-9227
  • Type

    jour

  • DOI
    10.1109/TNN.2009.2029857
  • Filename
    5247017