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首页> 外文期刊>Journal of Advanced Computatioanl Intelligence and Intelligent Informatics >Is Gradient Descent Update Consistent with Accuracy-Based Learning Classifier System?
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Is Gradient Descent Update Consistent with Accuracy-Based Learning Classifier System?

机译:梯度下降更新与基于精度的学习分类器系统一致吗?

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摘要

Learning Classifier Systems (LCSs) are rule-based adaptive systems that have both Reinforcement Learning (RL) and rule-discovery mechanisms for effective and practical online learning. An analysis of the reinforcement process of XCS, one of the currently mainstream LCSs, is performed from the aspect of RL. Upon comparing XCS's update method with gradient-descent-based parameter update in RL, differences are found in the following elements: (1) residual term, (2) gradient term, and (3) payoff definition. All possible combinations of the variants in each element are implemented and tested on multi-step benchmark problems. This revealed that few specific combinations work effectively with XCS's accuracy-based rule-discovery process, while pure gradient-descent-based update showed the worst performance.
机译:学习分类器系统(LCS)是基于规则的自适应系统,具有强化学习(RL)和规则发现机制,可进行有效而实用的在线学习。从RL的角度分析了XCS(目前主流的LCS之一)的加固过程。通过将XCS的更新方法与RL中基于梯度下降的参数更新进行比较,发现以下元素存在差异:(1)剩余项,(2)梯度项和(3)支付定义。每个元素中变体的所有可能组合都在多步骤基准问题上实现和测试。这表明,很少有特定的组合可以有效地使用XCS基于精度的规则发现过程,而基于纯梯度下降的更新则表现最差。

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