Online learning the consensus of multiple correspondences between sets

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摘要

When several subjects solve the assignment problem of two sets, differences on the correspondences computed by these subjects may occur. These differences appear due to several factors. For example, one of the subjects may give more importance to some of the elements’ attributes than another subject. Another factor could be that the assignment problem is computed through a suboptimal algorithm and different non-optimal correspondences can appear. In this paper, we present a consensus methodology to deduct the consensus of several correspondences between two sets. Moreover, we also present an online learning algorithm to deduct some weights that gauge the impact of each initial correspondence on the consensus. In the experimental section, we show the evolution of these parameters together with the evolution of the consensus accuracy. We observe that there is a clear dependence of the learned weights with respect to the quality of the initial correspondences. Moreover, we also observe that in the first iterations of the learning algorithm, the consensus accuracy drastically increases and then stabilises.

论文关键词:Consensus,Learning weights,Correspondence between sets,Linear solver,Hamming distance

论文评审过程:Received 21 June 2015, Revised 26 September 2015, Accepted 28 September 2015, Available online 8 October 2015, Version of Record 8 November 2015.

论文官网地址:https://doi.org/10.1016/j.knosys.2015.09.034