Knowledge Sources for Textual CBR Applications
نویسنده
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.
منابع مشابه
Textual case-based reasoning
This commentary provides a definition of textual case-based reasoning (TCBR) and surveys research contributions according to four research questions. We also describe how TCBR can be distinguished from text mining and information retrieval. We conclude with potential directions for TCBR research. 1 What is textual case-based reasoning? Case-based reasoning (CBR) consists of comparing a new prob...
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