Supervised rank aggregation
Proceedings of the 16th international conference on World Wide Web, 2007•dl.acm.org
This paper is concerned with rank aggregation, the task of combining the ranking results of
individual rankers at meta-search. Previously, rank aggregation was performed mainly by
means of unsupervised learning. To further enhance ranking accuracies, we propose
employing supervised learning to perform the task, using labeled data. We refer to the
approach as Supervised Rank Aggregation. We set up a general framework for conducting
Supervised Rank Aggregation, in which learning is formalized an optimization which …
individual rankers at meta-search. Previously, rank aggregation was performed mainly by
means of unsupervised learning. To further enhance ranking accuracies, we propose
employing supervised learning to perform the task, using labeled data. We refer to the
approach as Supervised Rank Aggregation. We set up a general framework for conducting
Supervised Rank Aggregation, in which learning is formalized an optimization which …
This paper is concerned with rank aggregation, the task of combining the ranking results of individual rankers at meta-search. Previously, rank aggregation was performed mainly by means of unsupervised learning. To further enhance ranking accuracies, we propose employing supervised learning to perform the task, using labeled data. We refer to the approach as Supervised Rank Aggregation. We set up a general framework for conducting Supervised Rank Aggregation, in which learning is formalized an optimization which minimizes disagreements between ranking results and the labeled data. As case study, we focus on Markov Chain based rank aggregation in this paper. The optimization for Markov Chain based methods is not a convex optimization problem, however, and thus is hard to solve. We prove that we can transform the optimization problem into that of Semidefinite Programming and solve it efficiently. Experimental results on meta-searches show that Supervised Rank Aggregation can significantly outperform existing unsupervised methods.
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