将情感智能与学习相结合提高决策主体的行动选择

Jason B. Williams, Xiaoqin Zhang
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引用次数: 1

摘要

复杂的环境包含的信息比自然或人工智能体能够及时完全处理的信息要多。神经科学的研究表明,自然代理利用情感(或情绪)过滤掉不相关的输入。在这项工作中,我们提出在人工智能体中集成一种影响过滤机制,以改善包含大量选择选项的环境中行为选择的审议时间。为了评估这个模型,我们创建了两种智能体架构:第一种架构基于主动强化学习算法,第二种架构利用了主动强化学习和基于影响的过滤机制的混合设计。我们比较了这两个智能体在相同环境下的审议时间和总体效用得分。结果表明,基于情感的过滤机制在不影响智能体效用得分的情况下,可以有效地减少决策时间。这项研究的结果加强了情感在智能行为中起重要作用的前提。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining affective intelligence with learning to improve action selection in decision-making agents
Complex environments contain more information than either natural or artificial agents can fully process in a timely manner. Studies in neuroscience have demonstrated that natural agents utilize affect (or emotion) to filter out irrelevant inputs. In this work, we propose to integrate an affect filtering mechanism in artificial agents to improve the deliberation time for action selection in environment containing a massive number of selection options. To evaluate this model, we create two agent architectures: the first architecture is based on an active reinforcement learning algorithm and the second architecture utilizes a hybrid design with both active reinforcement learning and the affect-based filtering mechanism. We have compared the deliberation time and the overall utility score of these two agents in the same environment. The results showed that the affect-based filtering mechanism is effective in decreasing the deliberation time without compromising the agent’s utility score. The results from this study strengthen the premise that affect plays an important role in intelligent behavior.
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CiteScore
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