Title :
Knowledge conceptualization tool
Author :
Fujihara, Hiroko ; Simmons, Dick B. ; Ellis, Newton C. ; Shannon, Robert E.
Author_Institution :
R&D Lab., Hewlett-Packard, Boise, ID, USA
Abstract :
Knowledge acquisition is one of the most important and problematic aspects of developing knowledge-based systems. Many automated tools have been introduced in the past, however, manual techniques are still heavily used. Interviewing is one of the most commonly used manual techniques for a knowledge acquisition process, and few automated support tools exist to help knowledge engineers enhance their performance. The paper presents a knowledge conceptualization tool (KCT) in which the knowledge engineer can effectively retrieve, structure, and formalize knowledge components, so that the resulting knowledge base is accurate and complete. The KCT uses information retrieval technique to facilitate conceptualization, which is one of the human intensive activities of knowledge acquisition. Two information retrieval techniques employing best-match strategies are used: vector space model and probabilistic ranking principle model. A prototype of the KCT was implemented to demonstrate the concept. The results from KCT are compared with the outputs from a manual knowledge acquisition process in terms of amount of information retrieved and the process time spent. An analysis of the results shows that the process time to retrieve knowledge components (e.g., facts, rules, protocols, and uncertainty) of KCT is about half that of the manual process, and the number of knowledge components retrieved from knowledge acquisition activities is four times more than that retrieved through a manual process
Keywords :
information retrieval; knowledge acquisition; knowledge based systems; automated tools; best-match strategies; information retrieval technique; interviewing; knowledge acquisition; knowledge component formalisation; knowledge component retrieval; knowledge component structuring; knowledge conceptualization tool; knowledge engineering; knowledge-based system development; manual techniques; probabilistic ranking principle model; process time; vector space model; Computer Society; Data engineering; Filters; Humans; Information retrieval; Knowledge acquisition; Knowledge based systems; Knowledge engineering; Manuals; Prototypes;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on