• Title of article

    An Intelligent System for Automated Binary Knowledge Document Classification and Content Analysis

  • From page
    1991
  • To page
    2008
  • Abstract
    Many companies rely on patent engineers to search patent documents and offer recommendations and advice to R D engineers. Given the increasing number of patent documents filed each year, new means to effectively and efficiently identify and manage technology specific patent documents are required. This research applies a back-propagation artificial neural network (BPANN), a hierarchical ontology technique, and a normalized term frequency (NTF) method to develop an intelligent system for binary knowledge document classification and content analysis. The intelligent system minimizes inappropriate patent document classification and reduces the effort required to search and screen patents for analysis. Finally, this paper uses the design of light emitting diode (LED) lamps as a case study to illustrate and verify the efficiency of automated binary knowledge document classification and content analysis.
  • Keywords
    BPANN , document classification , hierarchical ontology , normalized term frequency
  • Journal title
    Journal of J.UCS (Journal of Universal Computer Science)
  • Journal title
    Journal of J.UCS (Journal of Universal Computer Science)
  • Record number

    2662149