Query expansion in information retrieval : What can we learn from a deep analysis of queries ?
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Key words: information retrieval, query expansion, analysis of query terms, relevance feedback, global analysis,
Many experiments were conducted to find the best configuration for query expan- sion. Table 2 lists two of the best runs with the proposed approach for the same que- ries. Run 4
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