Nearly everyone in the field has heard the clichC that knowledge acquisition is the bottleneck in the development of knowledge-based systems. Developers frequently cite the so-called "knowledge-acquisition problem" as a reason to abandon knowledge-based systems in favor of other approaches, such as
Knowledge acquisition for model building
โ Scribed by Louis Anthony Cox Jr.
- Publisher
- John Wiley and Sons
- Year
- 1993
- Tongue
- English
- Weight
- 896 KB
- Volume
- 8
- Category
- Article
- ISSN
- 0884-8173
No coin nor oath required. For personal study only.
โฆ Synopsis
When the purpose of a knowledge acquisition (KA) system is to acquire the knowledge needed to build an analytic model of a complex system, the structure of the mode1 can be used to guide and streamline the KA process. Constraints on a system's structure can be used to generate an "intelligent questioning" sequence of requests for descriptive facts to minimize the burden on the expert or model-builder supplying the program with information. Moreover, general knowledge about the system domain can be supplied as "meta-knowledge" by an expert and used by the KA program to guide the search for specific knowledge ("facts") about a particular system from a less expert user. This article describes a KA methodology and program developed to streamline the acquisition of descriptive information about complex reliability systems (e.g., telecommunications networks, computer systems, industrial processes, etc.). The methodology treats knowledge acquisition and knowledge representation as two inseparable parts of an integrated process of model building. The goal of the KA dialogue is formulated as minimizing the effort needed for the user and the machine to achieve a shared model of the system to be analyzed. Models are built by specializing and instantiating templates constructed from background "meta-knowledge. " This perspective has several implications for dialogue-based KA shells that support modeling of complex systems in limited domains.
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