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Incremental learning approach for board game playing agents

机译:棋盘游戏代理商的增量学习方法

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摘要

In this paper an incremental learning method for neural network-based agent is introduced. The underlying idea of the presented method is the effective use of previously acquired knowledge in subsequent learning. Consequently, after a certain period of training, the agent gains the ability to gradually improve the learning process. The improvement is achieved due to the mechanism of sharing relevant features among "similar" learning problems along with a gradual increase of the complication level of the training examples. Preliminary experimental results are presented for the Othello game playing agent.
机译:本文介绍了一种基于神经网络的智能体增量学习方法。提出的方法的基本思想是在后续学习中有效利用先前获得的知识。因此,经过一定时间的训练后,座席即可逐渐改善学习过程。由于在“相似”学习问题之间共享相关特征的机制以及训练示例的复杂程度的逐步提高,实现了改进。给出了奥赛罗游戏代理的初步实验结果。

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