Robot team learning enhancement using Human Advice

Justin Girard, M. Emami
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引用次数: 1

Abstract

The paper discusses the augmentation of the Concurrent Individual and Social Learning (CISL) mechanism with a new Human Advice Layer (HAL). The new layer is characterized by a Gaussian Mixture Model (GMM), which is trained on human experience data. The CISL mechanism consists of the Individual Performance and Task Allocation Markov Decision Processes (MDP), and the HAL can provide preferred action selection policies to the individual agents. The data utilized for training the GMM is collected using a heterogeneous team foraging simulation. When leveraging human experience in the multi-agent learning process, the team performance is enhanced significantly.
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利用人类建议增强机器人团队学习
本文讨论了一个新的人类建议层(HAL)对个人与社会并行学习(CISL)机制的增强。新层采用基于人类经验数据训练的高斯混合模型(GMM)来表征。CISL机制由个体性能和任务分配马尔可夫决策过程(MDP)组成,HAL可以为个体代理提供首选的行为选择策略。用于训练GMM的数据是使用异构团队觅食模拟收集的。当在多智能体学习过程中利用人类经验时,团队绩效显著提高。
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