ISM@FIRE-2012 Adhoc Retrieval Task and Morpheme Extraction Task
نویسنده
چکیده
This paper describes the work that we did at Indian School of Mines, Dhanbad for FIRE 2012. This year we participated in two tasks: Adhoc Retrieval Task and Morpheme Extraction Task (MET). Within the adhoc task, we participated in two monolingual retrieval activities, namely English and Hindi using Lemur and Indri search engine respectively. We submitted a total of 6 runs (3 in English and Hindi respectively) in the adhoc task. In MET, we submitted a morpheme extraction tool which takes a single file of documents in any language as input and produces a two-column file listing words in the language and their corresponding stemmed root words.
منابع مشابه
ISM@FIRE-2013 Morpheme Extraction Task
This is third year of participation from Indian School of Mines Dhanbad at FIRE. At FIRE-2013, we have participated in Morpheme Extraction Task (MET).In MET,we submitted a morpheme extraction tool which takes input a single file of documents in any language and produces a twocolumn file listing words in the language and their corresponding stemmed root words.
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