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IJCAI 2017

Self-Paced Multitask Learning with Shared Knowledge

Conference Paper Machine Learning A-R Artificial Intelligence

Abstract

This paper introduces self-paced task selection to multitask learning, where instances from more closely related tasks are selected in a progression of easier-to-harder tasks, to emulate an effective human education strategy, but applied to multitask machine learning. We develop the mathematical foundation for the approach based on iterative selection of the most appropriate task, learning the task parameters, and updating the shared knowledge, optimizing a new bi-convex loss function. This proposed method applies quite generally, including to multitask feature learning, multitask learning with alternating structure optimization, etc. Results show that in each of the above formulations self-paced (easier-to-harder) task selection outperforms the baseline version of these methods in all the experiments.

Authors

Keywords

  • Machine Learning: Feature Selection/Construction
  • Machine Learning: Transfer, Adaptation, Multi-task Learning

Context

Venue
International Joint Conference on Artificial Intelligence
Archive span
1969-2025
Indexed papers
14525
Paper id
852753923310153148