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  • × author_ss:"Savic, D."
  1. Savic, D.: CUTT-x: an expert system for automatic assignment of Cutter numbers (1996) 0.03
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    Abstract
    Briefly describes the form and function of Cutter numbers in the classification of books and describes the CUTT-x expert system for the automatic assignment of Cutter numbers with particular reference to the 3 basic elements in the system: knowledge base; inference engine; and user interface. The system was designed, tested and implemented in the Library of the International Civil Aviation Organization and was developed using the MS Access relational database management system in a Windows environment
    Source
    Cataloging and classification quarterly. 22(1996) no.2, S.71-87
    Type
    a
  2. Savic, D.: Automatic classification of office documents : review of available methods and techniques (1995) 0.00
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    Abstract
    Classification of office documents is one of the administrative functions carried out by almost every organization and institution which sends and receives correspondence. Processing of this increasing amount of information coming and out going mail, in particular its classification, is time consuming and expensive. More and more organizations are seeking a solution for meeting this challenge by designing computer based systems for automatic classification. Examines the present status of available knowledge and methodology which can be used for automatic classification of office documents. Besides a review of classic methods and techniques, the focus id also placed on the application of artificial intelligence
    Type
    a
  3. Savic, D.: Designing an expert system for classifying office documents (1994) 0.00
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    Abstract
    Can records management benefit from artificial intelligence technology, in particular from expert systems? Gives an answer to this question by showing an example of a small scale prototype project in automatic classification of office documents. Project methodology and basic elements of an expert system's approach are elaborated to give guidelines to potential users of this promising technology
    Type
    a