Sciweavers

SEMCO
2007
IEEE

Integrating Semantic Knowledge into Text Similarity and Information Retrieval

13 years 10 months ago
Integrating Semantic Knowledge into Text Similarity and Information Retrieval
This paper studies the influence of lexical semantic knowledge upon two related tasks: ad-hoc information retrieval and text similarity. For this purpose, we compare the performance of two algorithms: (i) using semantic relatedness, and (ii) using a conventional extended Boolean model [12]. For the evaluation, we use two different test collections in the German language: (i) GIRT [5] for the information retrieval task, and (ii) a collection of descriptions of professions built to evaluate a system for electronic career guidance in the information retrieval and text similarity task. We found that integrating lexical semantic knowledge improves performance for both tasks. On the GIRT corpus, the performance is improved only for short queries. The performance on the collection of professional descriptions is improved, but crucially depends on the preprocessing of natural language essays employed as topics.
Christof Müller, Iryna Gurevych, Max Müh
Added 04 Jun 2010
Updated 04 Jun 2010
Type Conference
Year 2007
Where SEMCO
Authors Christof Müller, Iryna Gurevych, Max Mühlhäuser
Comments (0)