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A Novel Information Measure for Predictive Learning in a Social System Setting

机译:社会系统背景下的预测学习新信息量度

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We introduce a new theoretical framework, based on Shannon's communication theory and on Ashby's law of requisite variety, suitable for artificial agents using predictive learning. The framework quantifies the performance constraints of a predictive adaptive controller as a function of its learning stage. In addition, we formulate a practical measure, based on information flow, that can be applied to adaptive controllers which use hebbian learning, input correlation learning (ICO/ISO) and temporal difference learning. The framework is also useful in quantifying the social division of tasks in a social group of honest, cooperative food foraging, communicating agents. Simulations are in accordance with Luhmann, who suggested that adaptive agents self-organise by reducing the amount of sensory information or, equivalently, reducing the complexity of the perceived environment from the agents perspective.
机译:我们介绍了一种新的理论框架,该框架基于Shannon的传播理论和阿什比的必要变化定律,适用于使用预测学习的人工代理。该框架根据其学习阶段来量化预测自适应控制器的性能约束。此外,我们基于信息流制定了一种实用的措施,可将其应用于使用hebbian学习,输入相关学习(ICO / ISO)和时差学习的自适应控制器。该框架在量化诚实,合作的食物觅食,交流媒介的社会群体中任务的社会划分方面也很有用。仿真符合Luhmann的观点,他认为,自适应代理通过减少感官信息量或等效地从代理角度降低感知环境的复杂性来自我组织。

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