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Overview:
The Semantic Web presents the vision of a distributed, dynamically growing knowledge base founded on formal logic. Common users, however, seem to have problems even with the simplest Boolean expression. So how can one help users to query a web of logic that they do not seem to understand? This paper addresses this issue by presenting Ginseng, a guided input natural language search engine for the Semantic Web.
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| Format: | Size: | 692 KB | |
| Date: | May 2006 | ||
| Pages: | 3 |
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