Improving Retrieval Performance for Verbose Queries via Axiomatic Analysis of Term Discrimination Heuristic
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Azadeh Shakery | Hamed Zamani | Ali Montazeralghaem | Mozhdeh Ariannezhad | Hamed Zamani | A. Shakery | Mozhdeh Ariannezhad | Ali Montazeralghaem
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