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Open AccessJournal ArticleDOI

A survey of multi-objective sequential decision-making

TLDR
This article surveys algorithms designed for sequential decision-making problems with multiple objectives and proposes a taxonomy that classifies multi-objective methods according to the applicable scenario, the nature of the scalarization function, and the type of policies considered.
Abstract
Sequential decision-making problems with multiple objectives arise naturally in practice and pose unique challenges for research in decision-theoretic planning and learning, which has largely focused on single-objective settings. This article surveys algorithms designed for sequential decision-making problems with multiple objectives. Though there is a growing body of literature on this subject, little of it makes explicit under what circumstances special methods are needed to solve multi-objective problems. Therefore, we identify three distinct scenarios in which converting such a problem to a single-objective one is impossible, infeasible, or undesirable. Furthermore, we propose a taxonomy that classifies multi-objective methods according to the applicable scenario, the nature of the scalarization function (which projects multi-objective values to scalar ones), and the type of policies considered. We show how these factors determine the nature of an optimal solution, which can be a single policy, a convex hull, or a Pareto front. Using this taxonomy, we survey the literature on multi-objective methods for planning and learning. Finally, we discuss key applications of such methods and outline opportunities for future work.

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Journal ArticleDOI

Pareto Optimal Solutions for Network Defense Strategy Selection Simulator in Multi-Objective Reinforcement Learning

TL;DR: A Pareto Defense Strategy Selection Simulator (PDSSS) system is built for assisting network administrators on decision-making, specifically, on defense strategy selection, and the experiment results show that the Satisficing Trade-Off Method (STOM) scalarization approach performs better than linear scalarizations or GUESS method.
Proceedings ArticleDOI

ANGEL: A Hierarchical Approach to Multi-Objective Online Auto-Tuning

TL;DR: This paper introduces the Automated Navigation Given Enumerated Leeways (ANGEL) auto-tuning method, and demonstrates the quality of ANGEL using a multi-objective benchmark test suite and its utility by approximating various sections of a Pareto front from a real-world proxy application.
Book ChapterDOI

Model-Based Multi-objective Reinforcement Learning with Unknown Weights

TL;DR: The experimental results show that the proposed model-based MORL method by reward occurrence probability (ROP) with unknown weights collected all optimal policies under four dimensional Pareto optimal policies, and it takes a small computation time though previous MORL methods learn at most two or three dimensions.

Abstractions in Reasoning for Long-Term Autonomy

TL;DR: ions in Reasoning for Long-Term Autonomy Kyle Hollins Wray University of Massachusetts Amherst Follow this and additional works at: https://scholarworks.umass.edu/dissertations_2
Posted Content

Multi-objective Neural Architecture Search via Non-stationary Policy Gradient.

TL;DR: This work explores the novel reinforcement learning (RL) based paradigm of non-stationary policy gradient (NPG), and demonstrates the potential of NPG as a simple, efficient, and effective paradigm for multi-objective NAS.
References
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Book

Dynamic Programming

TL;DR: The more the authors study the information processing aspects of the mind, the more perplexed and impressed they become, and it will be a very long time before they understand these processes sufficiently to reproduce them.
Book

Markov Decision Processes: Discrete Stochastic Dynamic Programming

TL;DR: Puterman as discussed by the authors provides a uniquely up-to-date, unified, and rigorous treatment of the theoretical, computational, and applied research on Markov decision process models, focusing primarily on infinite horizon discrete time models and models with discrete time spaces while also examining models with arbitrary state spaces, finite horizon models, and continuous time discrete state models.
Book

Introduction to Reinforcement Learning

TL;DR: In Reinforcement Learning, Richard Sutton and Andrew Barto provide a clear and simple account of the key ideas and algorithms of reinforcement learning.
Book

Evolutionary algorithms for solving multi-objective problems

TL;DR: This paper presents a meta-anatomy of the multi-Criteria Decision Making process, which aims to provide a scaffolding for the future development of multi-criteria decision-making systems.
Proceedings Article

Policy Gradient Methods for Reinforcement Learning with Function Approximation

TL;DR: This paper proves for the first time that a version of policy iteration with arbitrary differentiable function approximation is convergent to a locally optimal policy.
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