The stochastic multi-gradient algorithm for multi-objective optimization and its application to supervised machine learning

07/10/2019
by   Suyun Liu, et al.
0

Optimization of conflicting functions is of paramount importance in decision making, and real world applications frequently involve data that is uncertain or unknown, resulting in multi-objective optimization (MOO) problems of stochastic type. We study the stochastic multi-gradient (SMG) method, seen as an extension of the classical stochastic gradient method for single-objective optimization. At each iteration of the SMG method, a stochastic multi-gradient direction is calculated by solving a quadratic subproblem, and it is shown that this direction is biased even when all individual gradient estimators are unbiased. We establish rates to compute a point in the Pareto front, of order similar to what is known for stochastic gradient in both convex and strongly convex cases. The analysis handles the bias in the multi-gradient and the unknown a priori weights of the limiting Pareto point. The SMG method is framed into a Pareto-front type algorithm for the computation of the entire Pareto front. The Pareto-front SMG algorithm is capable of robustly determining Pareto fronts for a number of synthetic test problems. One can apply it to any stochastic MOO problem arising from supervised machine learning, and we report results for logistic binary classification where multiple objectives correspond to distinct-sources data groups.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/23/2022

Mitigating Gradient Bias in Multi-objective Learning: A Provably Convergent Stochastic Approach

Machine learning problems with multiple objective functions appear eithe...
research
09/25/2015

A hybrid COAε-constraint method for solving multi-objective problems

In this paper, a hybrid method for solving multi-objective problem has b...
research
04/18/2017

Simple Problems: The Simplicial Gluing Structure of Pareto Sets and Pareto Fronts

Quite a few studies on real-world applications of multi-objective optimi...
research
09/15/2022

Efficient first-order predictor-corrector multiple objective optimization for fair misinformation detection

Multiple-objective optimization (MOO) aims to simultaneously optimize mu...
research
10/19/2022

A Pareto-optimal compositional energy-based model for sampling and optimization of protein sequences

Deep generative models have emerged as a popular machine learning-based ...
research
03/05/2022

Pareto Optimization or Cascaded Weighted Sum: A Comparison of Concepts

According to the published papers and books since the turn of the centur...
research
01/26/2020

Scalable and Customizable Benchmark Problems for Many-Objective Optimization

Solving many-objective problems (MaOPs) is still a significant challenge...

Please sign up or login with your details

Forgot password? Click here to reset