A fuzzy logic based expert system has been developed that automatically allocates resources in realtime over many dissimilar platforms. The platforms can be very general, e.g., ships, planes, etc. Potential foes can also be general. The resource manager has been embedded in an electronic game environment. This co-evolutionary game fully automates the data mining problem allowing determination of parameters essential to the resource manager. The game allows the resource manager to learn from human experts or computerized enemies. The game does not determine the structure of fuzzy decision trees. A new data mining algorithm that uses a genetic program, an algorithm that evolves other computer programs, as a data mining function has been developed to solve this problem. It not only determines the fuzzy decision tree structure it also creates fuzzy rules while mining scenario data bases. Finally, experimental results are discussed related to both data mining algorithms.


    Access

    Check access

    Check availability in my library

    Order at Subito €


    Export, share and cite



    Title :

    Data mining for multi-agent fuzzy decision tree structure and rules


    Contributors:
    Smith, J. (author)


    Publication date :

    2002-01-01


    Size :

    796789 byte




    Type of media :

    Conference paper


    Type of material :

    Electronic Resource


    Language :

    English



    Data Mining for Multi-agent Fuzzy Decision Tree Structure and Rules

    Smith, J. / International Society of Information Fusion / Institute of Electrical and Electronics Engineers | British Library Conference Proceedings | 2002


    Fuzzy variable-branch decision tree

    Yang, S.-B. | British Library Online Contents | 2010



    Fuzzy Logic Resource Manager: Multi-Agent Fuzzy Rules, Self-Organization and Validation

    Smith, J. / International Society of Information Fusion / Institute of Electrical and Electronics Engineers | British Library Conference Proceedings | 2002


    Mining traffic accident features by evolutionary fuzzy rules

    Kromer, Pavel / Beshah, Tibebe / Ejigu, Dejene et al. | IEEE | 2013