| Literature DB >> 27114040 |
Johan Kwisthout1, Harold Bekkering2, Iris van Rooij2.
Abstract
Many theoretical and empirical contributions to the Predictive Processing account emphasize the important role of precision modulation of prediction errors. Recently it has been proposed that the causal models used in human predictive processing are best formally modeled by categorical probability distributions. Crucially, such distributions assume a well-defined, discrete state space. In this paper we explore the consequences of this formalization. In particular we argue that the level of detail of generative models and predictions modulates prediction error. We show that both increasing the level of detail of the generative models and decreasing the level of detail of the predictions can be suitable mechanisms for lowering prediction errors. Both increase precision, yet come at the price of lowering the amount of information that can be gained by correct predictions. Our theoretical result establishes a key open empirical question to address: How does the brain optimize the trade-off between high precision and information gain when making its predictions?Entities:
Keywords: Causal Bayesian networks; Formal modeling; Level of detail; Precision; Predictive processing; Structured representations
Mesh:
Year: 2016 PMID: 27114040 DOI: 10.1016/j.bandc.2016.02.008
Source DB: PubMed Journal: Brain Cogn ISSN: 0278-2626 Impact factor: 2.310