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Signal neutrality, scalar property, and collapsing boundaries as consequences of a learned multi-timescale strategy.

Luca ManneschiGuido GiganteEleni VasilakiPaolo Del Giudice
Published in: PLoS computational biology (2022)
We postulate that three fundamental elements underlie a decision making process: perception of time passing, information processing in multiple timescales and reward maximisation. We build a simple reinforcement learning agent upon these principles that we train on a random dot-like task. Our results, similar to the experimental data, demonstrate three emerging signatures. (1) signal neutrality: insensitivity to the signal coherence in the interval preceding the decision. (2) Scalar property: the mean of the response times varies widely for different signal coherences, yet the shape of the distributions stays almost unchanged. (3) Collapsing boundaries: the "effective" decision-making boundary changes over time in a manner reminiscent of the theoretical optimal. Removing the perception of time or the multiple timescales from the model does not preserve the distinguishing signatures. Our results suggest an alternative explanation for signal neutrality. We propose that it is not part of motor planning. It is part of the decision-making process and emerges from information processing on multiple timescales.
Keyphrases
  • decision making
  • genome wide
  • health information
  • machine learning
  • big data
  • dna methylation
  • high speed
  • quantum dots
  • artificial intelligence
  • monte carlo
  • neural network