Probabilistic score normalization for rank aggregation
Advances in Information Retrieval: 28th European Conference on IR Research …, 2006•Springer
Rank aggregation is a pervading operation in IR technology. We hypothesize that the
performance of score-based aggregation may be affected by artificial, usually meaningless
deviations consistently occurring in the input score distributions, which distort the combined
result when the individual biases differ from each other. We propose a score-based rank
aggregation model where the source scores are normalized to a common distribution before
being combined. Early experiments on available data from several TREC collections are …
performance of score-based aggregation may be affected by artificial, usually meaningless
deviations consistently occurring in the input score distributions, which distort the combined
result when the individual biases differ from each other. We propose a score-based rank
aggregation model where the source scores are normalized to a common distribution before
being combined. Early experiments on available data from several TREC collections are …
Abstract
Rank aggregation is a pervading operation in IR technology. We hypothesize that the performance of score-based aggregation may be affected by artificial, usually meaningless deviations consistently occurring in the input score distributions, which distort the combined result when the individual biases differ from each other. We propose a score-based rank aggregation model where the source scores are normalized to a common distribution before being combined. Early experiments on available data from several TREC collections are shown to support our proposal.
Springer