A novelty psychological cognition behaviour model based on reinforcement learning

Shiyong Liu, Ruosong Chang, Sang Fu
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引用次数: 0

Abstract

The goal of the paper is to effectively illustrate psychological cognition behaviours using the reinforcement learning. Combined with the trust behaviour of human society, an reinforcement learning model based on human trust habits is put forward: 1) self-adaptive overall knowability decision-making method based on the historical evidence window is constructed, which not only has overcome the subjective judgment method for the determination of weights commonly used in existing models, but also can solve the knowability forecast problem when the direct evidence is insufficient; 2) The concept of reinforcement learning weighted averaging (hereinafter referred to as RLWA for short) operator is introduced, and the direct trust forecast model based on the RLWA operator is established, which can be sued to solve the problem of insufficient dynamic adaptability of the traditional forecast model. The experimental results show that, compared with the existing models, the proposed model has more robust dynamic adaptability and also significant improvement in the forecast accuracy of the model.
基于强化学习的新型心理认知行为模型
本文的目的是利用强化学习有效地说明心理认知行为。结合人类社会的信任行为,提出了一种基于人类信任习惯的强化学习模型:1)构建了基于历史证据窗口的自适应全局可知性决策方法,不仅克服了现有模型中常用的权重确定的主观判断方法,而且解决了直接证据不足时的可知性预测问题;2)引入了强化学习加权平均(以下简称RLWA)算子的概念,建立了基于RLWA算子的直接信任预测模型,解决了传统预测模型动态适应性不足的问题。实验结果表明,与现有模型相比,所提模型具有更强的动态适应性,模型的预测精度也有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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