Knowledge Sources for Textual CBR Applications

نویسنده

  • Mario Lenz
چکیده

Textual CBR applications address issues that have traditionally been dealt with in the Information Retrieval community, namely the handling of textual documents. As CBR is a knowledge-based technique, the question arises where items of knowledge may come from and how they might contribute to the implementation of a Textual CBR system. In this paper, we will show how various pieces of knowledge available in a specific domain can be utilized for acquiring the knowledge required for a CBR system.

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تاریخ انتشار 1998