Title of article :
Improved sentence retrieval using local context and sentence length
Author/Authors :
Alen Doko، نويسنده , , Maja ?tula، نويسنده , , Ljiljana ?eri?، نويسنده ,
Issue Information :
دوماهنامه با شماره پیاپی سال 2013
Pages :
12
From page :
1301
To page :
1312
Abstract :
In this paper we propose improved variants of the sentence retrieval method TF–ISF (a TF–IDF or Term Frequency–Inverse Document Frequency variant for sentence retrieval). The improvement is achieved by using context consisting of neighboring sentences and at the same time promoting the retrieval of longer sentences. We thoroughly compare new modified TF–ISF methods to the TF–ISF baseline, to an earlier attempt to include context into TF–ISF named tfmix and to a language modeling based method that uses context and promoting retrieval of long sentences named 3MMPDS. Experimental results show that the TF–ISF method can be improved using local context. Results also show that the TF–ISF method can be improved by promoting the retrieval of longer sentences. Finally we show that the best results are achieved when combining both modifications. All new methods (TF–ISF variants) also show statistically significant better results than the other tested methods.
Keywords :
Sentence retrieval , TF–ISF , CONTEXT , Sentence length
Journal title :
Information Processing and Management
Serial Year :
2013
Journal title :
Information Processing and Management
Record number :
1229466
Link To Document :
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