2020
DOI: 10.48550/arxiv.2010.12993
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Multi-task Supervised Learning via Cross-learning

Abstract: In this paper we consider a problem known as multi-task learning, consisting of fitting a set of classifier or regression functions intended for solving different tasks. In our novel formulation, we couple the parameters of these functions, so that they learn in their task specific domains while staying close to each other. This facilitates cross-fertilization in which data collected across different domains help improving the learning performance at each other task. First, we present a simplified case in whic… Show more

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