Please use this identifier to cite or link to this item: http://dspace2020.uniten.edu.my:8080/handle/123456789/6485
Title: A comparative study of policies in Q-learning for foraging tasks
Authors: Mohan, Y.
Ponnambalam, S.G.
Inayat-Hussain, J.I.
Issue Date: 2009
Abstract: Q-learning is a machine learning technique that learns what to do and how to map states to actions to maximize rewards. Q-learning has been applied to various tasks such as foraging, soccer and prey-pursuing robots. In this paper, a simple foraging task has been considered to study the influences of the policies reported in the open literatures. A mobile robot is used to search and retrieve pucks back to a home location. The goal of this study is to identify an efficient policy for q-learning which maximizes the number of pucks collected and minimizes the number of collisions in the environment. Policies namely greedy, epsilon-greedy, Boltzmann distribution and random search are used to study their performances in the foraging task and the results are presented. ©2009 IEEE.
URI: http://dspace.uniten.edu.my/jspui/handle/123456789/6485
Appears in Collections:COGS Scholarly Publication

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