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Efficient Continuous Pareto Exploration in Multi-Task Learning

About

Tasks in multi-task learning often correlate, conflict, or even compete with each other. As a result, a single solution that is optimal for all tasks rarely exists. Recent papers introduced the concept of Pareto optimality to this field and directly cast multi-task learning as multi-objective optimization problems, but solutions returned by existing methods are typically finite, sparse, and discrete. We present a novel, efficient method that generates locally continuous Pareto sets and Pareto fronts, which opens up the possibility of continuous analysis of Pareto optimal solutions in machine learning problems. We scale up theoretical results in multi-objective optimization to modern machine learning problems by proposing a sample-based sparse linear system, for which standard Hessian-free solvers in machine learning can be applied. We compare our method to the state-of-the-art algorithms and demonstrate its usage of analyzing local Pareto sets on various multi-task classification and regression problems. The experimental results confirm that our algorithm reveals the primary directions in local Pareto sets for trade-off balancing, finds more solutions with different trade-offs efficiently, and scales well to tasks with millions of parameters.

Pingchuan Ma, Tao Du, Wojciech Matusik• 2020

Related benchmarks

TaskDatasetResultRank
Multi-Objective OptimizationRE21
Log HV Difference2.853
16
Multi-Objective OptimizationDTLZ 5
Log Hypervolume Difference-7.033
16
Multi-Objective OptimizationRE36
Log Hypervolume Difference-2.702
16
Multi-Objective OptimizationRE37
Log Hypervolume Difference-4.491
16
Multi-Objective OptimizationZDT3
Log Hypervolume Difference-5.317
16
Multi-Objective OptimizationDTLZ7
Log Hypervolume Difference-1.905
16
Multi-Objective OptimizationRE33
Log Hypervolume Difference2.451
16
Multi-Objective OptimizationDTLZ5
IGD0.002
15
Multi-Objective OptimizationRE37
IGD0.06
15
Multi-Objective OptimizationZDT3
IGD0.029
15
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