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Please use this identifier to cite or link to this item: https://hdl.handle.net/20.500.12008/51581 How to cite
Title: Multi-task supervised learning via cross-learning
Authors: Cerviño, Juan
Bazerque, Juan Andrés
Calvo-Fullana, Miguel
Ribeiro, Alejandro
Type: Preprint
Keywords: Supervised learning, Multi-task learning, Optimization, Fitting, Neural networks, Signal processing algorithms, Europe, Signal processing, Gaussian distribution
Issue Date: 2021
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 which the goal is to estimate the means of two Gaussian variables, for the purpose of gaining some insights on the advantage of the proposed cross-learning strategy. Then we provide a stochastic projected gradient algorithm to perform cross-learning over a generic loss function. If the number of parameters is large, then the projection step becomes computationally expensive. To avoid this situation, we derive a primal-dual algorithm that exploits the structure of the dual problem, achieving a formulation whose complexity only depends on the number of tasks. Preliminary numerical experiments for image classification by neural networks trained on a dataset divided in different domains corroborate that the cross-learned function outperforms both the task-specific and the consensus approaches
Sponsors: NSF-Simons MoDLTheorinet
ANII FSE 1-2019-1-157459
Citation: Cerviño, J., Bazerque, J., Calvo-Fullana, M. y otros. Multi-task supervised learning via cross-learning [Preprint]. Publicado en: 2021 29th European Signal Processing Conference (EUSIPCO), Dublin, Ireland, 23-27 aug. 2021, pp. 1381-1385.
Academic department: Sistemas y Control
License: Licencia Creative Commons Atribución (CC - By 4.0)
Appears in Collections:Publicaciones académicas y científicas - Instituto de Ingeniería Eléctrica

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