TY - JOUR
T1 - From "identical" to "similar"
T2 - Fusing retrieved lists based on inter-document similarities
AU - Kozorovitsky, Anna Khudyak
AU - Kurland, Oren
PY - 2011/5
Y1 - 2011/5
N2 - Methods for fusing document lists that were retrieved in response to a query often uti- lize the retrieval scores and/or ranks of documents in the lists. We present a novel fusion approach that is based on using, in addition, information induced from inter-document similarities. Specifically, our methods let similar documents from different lists provide relevance-status support to each other. We use a graph-based method to model relevance- status propagation between documents. The propagation is governed by inter-document- similarities and by retrieval scores of documents in the lists. Empirical evaluation demon- strates the effectiveness of our methods in fusing TREC runs. The performance of our most effective methods transcends that of effective fusion methods that utilize only re- trieval scores or ranks.
AB - Methods for fusing document lists that were retrieved in response to a query often uti- lize the retrieval scores and/or ranks of documents in the lists. We present a novel fusion approach that is based on using, in addition, information induced from inter-document similarities. Specifically, our methods let similar documents from different lists provide relevance-status support to each other. We use a graph-based method to model relevance- status propagation between documents. The propagation is governed by inter-document- similarities and by retrieval scores of documents in the lists. Empirical evaluation demon- strates the effectiveness of our methods in fusing TREC runs. The performance of our most effective methods transcends that of effective fusion methods that utilize only re- trieval scores or ranks.
UR - http://www.scopus.com/inward/record.url?scp=80052117940&partnerID=8YFLogxK
U2 - 10.1613/jair.3214
DO - 10.1613/jair.3214
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AN - SCOPUS:80052117940
SN - 1076-9757
VL - 41
SP - 267
EP - 296
JO - Journal of Artificial Intelligence Research
JF - Journal of Artificial Intelligence Research
ER -