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    Machine Learning for Information Retrieval: Neural Networks, Symbolic Learning, and Genetic Algorithms

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    Author
    Chen, Hsinchun
    Issue Date
    1995-04
    Submitted date
    2004-10-01
    Keywords
    Artificial Intelligence
    Indexing
    Information Extraction
    Local subject classification
    National Science Digital Library
    NSDL
    Artificial intelligence lab
    AI lab
    Information retrieval
    
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    Citation
    Machine Learning for Information Retrieval: Neural Networks, Symbolic Learning, and Genetic Algorithms 1995-04, 46(3):194-216 Journal of the American Society for Information Science
    Publisher
    Wiley Periodicals, Inc
    Journal
    Journal of the American Society for Information Science
    Description
    Artificial Intelligence Lab, Department of MIS, University of Arizona
    URI
    http://hdl.handle.net/10150/106427
    Abstract
    Information retrieval using probabilistic techniques has attracted significant attention on the part of researchers in information and computer science over the past few decades. In the 1980s, knowledge-based techniques also made an impressive contribution to “intelligent” information retrieval and indexing. More recently, information science researchers have turned to other newer artificial-intelligence- based inductive learning techniques including neural networks, symbolic learning, and genetic algorithms. These newer techniques, which are grounded on diverse paradigms, have provided great opportunities for researchers to enhance the information processing and retrieval capabilities of current information storage and retrieval systems. In this article, we first provide an overview of these newer techniques and their use in information science research. To familiarize readers with these techniques, we present three popular methods: the connectionist Hopfield network; the symbolic ID3/ID5R; and evolution- based genetic algorithms. We discuss their knowledge representations and algorithms in the context of information retrieval. Sample implementation and testing results from our own research are also provided for each technique. We believe these techniques are promising in their ability to analyze user queries, identify users’ information needs, and suggest alternatives for search. With proper user-system interactions, these methods can greatly complement the prevailing full-text, keywordbased, probabilistic, and knowledge-based techniques.
    Type
    Journal Article (Paginated)
    Language
    en
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