TY - JOUR
T1 - Re-ranking search results using an additional retrieved list
AU - Meister, Lior
AU - Kurland, Oren
AU - Kalmanovich, Inna Gelfer
N1 - Funding Information:
Acknowledgments We thank the reviewers for their comments. This paper is based upon work supported in part by Israel’s Science Foundation under grant no. 890015, by Google’s and IBM’s faculty research
PY - 2011/8
Y1 - 2011/8
N2 - We present a novel approach to re-ranking a document list that was retrieved in response to a query so as to improve precision at the very top ranks. The approach is based on utilizing a second list that was retrieved in response to the query by using, for example, a different retrieval method and/or query representation. In contrast to commonly-used methods for fusion of retrieved lists that rely solely on retrieval scores (ranks) of documents, our approach also exploits inter-document-similarities between the lists-a potentially rich source of additional information. Empirical evaluation shows that our methods are effective in re-ranking TREC runs; the resultant performance also favorably compares with that of a highly effective fusion method. Furthermore, we show that our methods can potentially help to tackle a long-standing challenge, namely, integration of document-based and cluster-based retrieved results.
AB - We present a novel approach to re-ranking a document list that was retrieved in response to a query so as to improve precision at the very top ranks. The approach is based on utilizing a second list that was retrieved in response to the query by using, for example, a different retrieval method and/or query representation. In contrast to commonly-used methods for fusion of retrieved lists that rely solely on retrieval scores (ranks) of documents, our approach also exploits inter-document-similarities between the lists-a potentially rich source of additional information. Empirical evaluation shows that our methods are effective in re-ranking TREC runs; the resultant performance also favorably compares with that of a highly effective fusion method. Furthermore, we show that our methods can potentially help to tackle a long-standing challenge, namely, integration of document-based and cluster-based retrieved results.
KW - Ad hoc retrieval
KW - Cluster-based retrieval
KW - Inter-document-similarities
KW - Re-ranking
KW - Similarity-based fusion
UR - http://www.scopus.com/inward/record.url?scp=79960610673&partnerID=8YFLogxK
U2 - 10.1007/s10791-010-9150-8
DO - 10.1007/s10791-010-9150-8
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AN - SCOPUS:79960610673
SN - 1386-4564
VL - 14
SP - 413
EP - 437
JO - Information Retrieval
JF - Information Retrieval
IS - 4
ER -