|
|
An Investigation into Weighted . . .
– Peter Wilkins
- 2009
|
|
|
Cluster-Based Fusion of Retrieved Lists
– Anna Khudyak Kozorovitsky, Oren Kurland
|
|
18
|
Language Models and Structured Document Retrieval
– Paul Ogilvie, Jamie Callan
- 2003
|
|
1
|
From “Identical” to “Similar”: Fusing Retrieved Lists Based on Inter-Document Similarities
– Anna Khudyak Kozorovitsky, Oren Kurland
|
|
|
Predicting Query Performance for Fusion-Based Retrieval Gad Markovits
– Anna Shtok, Oren Kurland, David Carmel
|
|
5
|
Segmentation of Search Engine Results for Effective Data-Fusion
– Milad Shokouhi
|
|
|
Two are better than one! Re-ranking search results using an . . .
– Lior Meister, Oren Kurland, Inna Gelfer Kalmanovich
|
|
|
Web Search Technologies for Text Documents
– Weiyi Meng, Clement Yu
|
|
6
|
Gravitationbased model for information retrieval (extended version
– Shuming Shi, Ji-rong Wen, Qing Yu, Ruihua Song, Wei-ying Ma
- 2005
|
|
18
|
Probabilistic Models for Combining Diverse Knowledge Sources in Multimedia Retrieval
– Rong Yan
- 2006
|
|
1
|
Incorporating context into the language modeling for ad hoc information retrieval
– Leif Azzopardi
|
|
1
|
Combining Speech Retrieval Results with Generalized Additive Models
– J. Scott Olsson, Douglas W. Oard
|
|
20
|
Very Large Scale Retrieval and Web Search
– David Hawking, Nick Craswell
- 2004
|
|
|
Ranking Experts with Discriminative Probabilistic Models
– Yi Fang, Luo Si, Aditya P. Mathur
|
|
46
|
Searching the Workplace Web
– Ronald Fagin, Ravi Kumar, Kevin S. Mccurley, Jasmine Novak, D. Sivakumar, John A. Tomlin, David P. Williamson
- 2003
|
|
|
The Benefits of Skimming in Data Fusion
– Anselm Spoerri
|
|
2
|
Top-k Dominant Web Services Under Multi-Criteria Matching
– Dimitrios Skoutas
|
|
11
|
A unified model for metasearch, pooling, and system evaluation
– Javed A. Aslam, Virgiliu Pavlu, Robert Savell
- 2003
|
|
2
|
A decision mechanism for the selective combination of evidence in topic distillation
– Vassilis Plachouras, Fidel Cacheda, Iadh Ounis
|