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The Impatient May Use Limited Optimism to Minimize Regret

Authors :
Cadilhac, Michaël
Perez, Guillermo A.
Van Den Bogaard, Marie
Cadilhac, Michaël
Perez, Guillermo A.
Van Den Bogaard, Marie
Source :
Lecture notes in computer science, 11425 LNCS
Publication Year :
2019

Abstract

Discounted-sum games provide a formal model for the study of reinforcement learning, where the agent is enticed to get rewards early since later rewards are discounted. When the agent interacts with the environment, she may realize that, with hindsight, she could have increased her reward by playing differently: this difference in outcomes constitutes her regret value. The agent may thus elect to follow a regret- minimal strategy. In this paper, it is shown that (1) there always exist regret-minimal strategies that are admissible—a strategy being inadmissible if there is another strategy that always performs better; (2) computing the minimum possible regret or checking that a strategy is regret-minimal can be done in, disregarding the computational cost of numerical analysis (otherwise, this bound becomes ).<br />SCOPUS: cp.k<br />info:eu-repo/semantics/published

Details

Database :
OAIster
Journal :
Lecture notes in computer science, 11425 LNCS
Notes :
1 full-text file(s): application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1281592710
Document Type :
Electronic Resource