The risk of trivial solutions in bipartite top ranking

作者:Aditya Krishna Menon

摘要

Given a sample of instances with binary labels, the bipartite top ranking problem is to produce a ranked list of instances whose head is dominated by positives. One popular existing approach to this problem is based on constructing surrogates to a performance measure known as the fraction of positives of the top (PTop). In this paper, we theoretically show that the measure and its surrogates have an undesirable property: for certain noisy distributions, it is optimal to trivially predict the same score for all instances. We propose a simple rectification which avoids such trivial solutions, while still focussing on the head of the ranked list and being as easy to optimise.

论文关键词:Bipartite ranking, Top rank optimisation, Positives at the top

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论文官网地址:https://doi.org/10.1007/s10994-018-5759-4