A Contrast‐Based Computational Model of Surprise and Its Applications

Topics in Cognitive Science 11 (1):88-102 (2019)
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Abstract

This paper reviews computational models of surprise, with a specific focus on the authors’ probabilistic, contrast model. The contrast model casts surprise, and its intensity, as emerging from the difference between the probability of the surprising event and the probability of the highest expected‐event in a given situation. Strong arguments are made for the central role of surprise in creativity and learning by natural and artificial agents.

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