PLoS Computational Biology (Mar 2021)

Optimal prediction with resource constraints using the information bottleneck.

  • Vedant Sachdeva,
  • Thierry Mora,
  • Aleksandra M Walczak,
  • Stephanie E Palmer

DOI
https://doi.org/10.1371/journal.pcbi.1008743
Journal volume & issue
Vol. 17, no. 3
p. e1008743

Abstract

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Responding to stimuli requires that organisms encode information about the external world. Not all parts of the input are important for behavior, and resource limitations demand that signals be compressed. Prediction of the future input is widely beneficial in many biological systems. We compute the trade-offs between representing the past faithfully and predicting the future using the information bottleneck approach, for input dynamics with different levels of complexity. For motion prediction, we show that, depending on the parameters in the input dynamics, velocity or position information is more useful for accurate prediction. We show which motion representations are easiest to re-use for accurate prediction in other motion contexts, and identify and quantify those with the highest transferability. For non-Markovian dynamics, we explore the role of long-term memory in shaping the internal representation. Lastly, we show that prediction in evolutionary population dynamics is linked to clustering allele frequencies into non-overlapping memories.