跟踪情绪:基于多层次预测误差动态的内在动机

G. Schillaci, Alejandra Ciria, B. Lara
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引用次数: 9

摘要

我们提出了一种内在动机体系结构,该体系结构通过对预测误差动态的多层次监测来产生对自我生成和动态目标的行为,并调节目标选择和开发与探索之间的平衡。这种架构根据学习系统整体性能的动态来调节探索噪声和利用计算资源。结果表明,该架构优于固有动机方法,其中探索噪声和目标是固定的。我们建议,预测误差动态跟踪允许人工智能体具有内在动机去寻求新的经验,但限制在那些产生可减少的预测误差。我们争论情绪效价和朝着目标前进的速度之间的潜在关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tracking Emotions: Intrinsic Motivation Grounded on Multi - Level Prediction Error Dynamics
We present an intrinsic motivation architecture that generates behaviors towards self-generated and dynamic goals and that regulates goal selection and the balance between exploitation and exploration through multi-level monitoring of prediction error dynamics. This architecture modulates exploration noise and leverages computational resources according to the dynamics of the overall performance of the learning system. Results show that this architecture outperforms intrinsic motivation approaches where exploratory noise and goals are fixed. We suggest that the tracking of prediction error dynamics allows an artificial agent to be intrinsically motivated to seek new experiences but constrained to those that generate reducible prediction error. We argue about the potential relationship between emotional valence and rates of progress toward a goal.
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