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Scaling Ant Colony Optimization with Hierarchical Reinforcement Learning Partitioning 2012 Edition at Meripustak

Scaling Ant Colony Optimization with Hierarchical Reinforcement Learning Partitioning 2012 Edition by Erik Dries , Biblioscholar

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  • General Information  
    Author(s)Erik Dries
    PublisherBiblioscholar
    ISBN9781288395354
    Pages94
    BindingPaperback
    LanguageEnglish
    Publish YearDecember 2012

    Description

    Biblioscholar Scaling Ant Colony Optimization with Hierarchical Reinforcement Learning Partitioning 2012 Edition by Erik Dries

    This research merges the hierarchical reinforcement learning (HRL) domain and the ant colony optimization (ACO) domain. The merger produces a HRL ACO algorithm capable of generating solutions for both domains. This research also provides two specific implementations of the new algorithm: the first a modification to Dietterich's MAXQ-Q HRL algorithm, the second a hierarchical ACO algorithm. These implementations generate faster results, with little to no significant change in the quality of solutions for the tested problem domains. The application of ACO to the MAXQ-Q algorithm replaces the reinforcement learning, Q-learning and SARSA, with the modified ant colony optimization method, Ant-Q. This algorithm, MAXQ-AntQ, converges to solutions not significantly different from MAXQ-Q in 88% of the time. This research then transfers HRL techniques to the ACO domain and traveling salesman problem (TSP). To apply HRL to ACO, a hierarchy must be created for the TSP. A data clustering algorithm creates these subtasks, with an ACO algorithm to solve the individual and complete problems. This research tests two clustering algorithms, k-means and G-means.



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