Prediction-Based Learning and Processing of Event Knowledge

Top Cogn Sci. 2021 Jan;13(1):206-223. doi: 10.1111/tops.12482. Epub 2019 Dec 15.

Abstract

Knowledge of common events is central to many aspects of cognition. Intuitively, it seems as though events are linear chains of the activities of which they are comprised. In line with this intuition, a number of theories of the temporal structure of event knowledge have posited mental representations (data structures) consisting of linear chains of activities. Competing theories focus on the hierarchical nature of event knowledge, with representations comprising ordered scenes, and chains of activities within those scenes. We present evidence that the temporal structure of events typically is not well-defined, but it is much richer and more variable both within and across events than has usually been assumed. We also present evidence that prediction-based neural network models can learn these rich and variable event structures and produce behaviors that reflect human performance. We conclude that knowledge of the temporal structure of events in the human mind emerges as a consequence of prediction-based learning.

Keywords: Connectionist modeling; Event knowledge; Network science; Prediction.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Cognition
  • Humans
  • Knowledge*
  • Learning*
  • Neural Networks, Computer