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Familiarity Detection with the Component Process Model

机译:组件过程模型的熟悉度检测

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We propose a computational model for the Component Process Model (CPM) of Scherer, the most recent and the most complete model of emotion in psychology. This one proposes to appraise a stimulus through a sequence of sixteen appraisal variables dealing with a large number of its characteristics. As CPM is very abstract and high level, it is not really used in affective computing and no formal models exist for its appraisal variables. Based on the CPM, in this paper we propose a mathematical function for one appraisal variable detecting the familiarity of a perceived event according to the state of the cognitive component of an agent (goals, needs, semantic memory, and episodic memory).
机译:我们为Scherer的组件过程模型(CPM)提出了一种计算模型,这是心理学中最新,最完​​整的情感模型。该提议提议通过一系列涉及其大量特征的十六种评估变量来评估一种刺激。由于CPM非常抽象且层次很高,因此并未真正用于情感计算中,也没有用于其评估变量的正式模型。基于CPM,本文提出了一种数学函数,用于一个评估变量,该变量根据主体的认知组件状态(目标,需求,语义记忆和情节记忆)检测感知事件的熟悉程度。

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