-
For most Web searching applications, queries are commonly ambiguous because words usually contain several senses. Traditional Word Sense Disambiguation (WSD) methods use statistic models or ontology-based knowledge models to find the most appropriate sense for the ambiguous word. Since queries are usually short and may not provide enough context information for disambiguating queries, more than one appropriate interpretation for ambiguous queries may be found. Thus, it is not always reasonable for finding only one interpretation of the query. In this paper, we propose a cluster-based WSD method, which finds out all appropriate interpretations for the query. Because some senses of ... (Read Full Article)
Bookmark or Share this article
Related Articles
- Abductive Reasoning, Interpretation and Collaborative Processes
- also published in SpringerLink Home
- Location-based services
- also mentions Atlanta
- A Two-Stage Approach for Context-Dependent Hypernym Extraction
- also categorized in Semantic
- Panel Discussion
- also categorized in Semantic
- A Probabilistic Relational Model for Characterizing Situations in Dynamic Multi-Agent Systems
- also categorized in Semantic
- Cognition Announces Natural Language Processing Technology
- also categorized in Semantic
- Personalised Multimedia Summaries
- also published in SpringerLink Home
- Cognition Announces the Commercial Release of Its Semantic Natural ...
- also categorized in Semantic
- Cognition Announces the Commercial Release of Its Semantic Natural Language Processing (nlp) Technology
- also categorized in Semantic
- Taxonomy-based partitioning of the Gene Ontology.
- also categorized in Semantic







Recent Comments
richie » Computer-Based Assessment: From Objective Tests to Automated Essay Grading. Now for Automated Essay Writing?
Technology does save essay grading time. I found a great essay grading resource that saves ...
See all recent comments