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Multi-Task Learning as a Bargaining Game

Machine Learning 2022-07-11 v2 Computer Science and Game Theory

Abstract

In Multi-task learning (MTL), a joint model is trained to simultaneously make predictions for several tasks. Joint training reduces computation costs and improves data efficiency; however, since the gradients of these different tasks may conflict, training a joint model for MTL often yields lower performance than its corresponding single-task counterparts. A common method for alleviating this issue is to combine per-task gradients into a joint update direction using a particular heuristic. In this paper, we propose viewing the gradients combination step as a bargaining game, where tasks negotiate to reach an agreement on a joint direction of parameter update. Under certain assumptions, the bargaining problem has a unique solution, known as the Nash Bargaining Solution, which we propose to use as a principled approach to multi-task learning. We describe a new MTL optimization procedure, Nash-MTL, and derive theoretical guarantees for its convergence. Empirically, we show that Nash-MTL achieves state-of-the-art results on multiple MTL benchmarks in various domains.

Keywords

Cite

@article{arxiv.2202.01017,
  title  = {Multi-Task Learning as a Bargaining Game},
  author = {Aviv Navon and Aviv Shamsian and Idan Achituve and Haggai Maron and Kenji Kawaguchi and Gal Chechik and Ethan Fetaya},
  journal= {arXiv preprint arXiv:2202.01017},
  year   = {2022}
}

Comments

ICML 2022

R2 v1 2026-06-24T09:15:41.169Z