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Inferring an Observer's Prediction Strategy in Sequence Learning Experiments.

Abhinuv Uppal1, Vanessa Ferdinand2, Sarah Marzen1

  • 1W.M. Keck Science Department, Pitzer, Scripps, and Claremont McKenna Colleges, Claremont, CA 91711, USA.

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Summary
This summary is machine-generated.

Understanding how organisms predict their environment is key. This study shows inferring prediction strategies is possible for simple cases but becomes computationally intensive for complex stimuli, limiting experimental inference.

Keywords:
Bayesian modelspredictionsequence learningstochastic processes

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Area of Science:

  • Cognitive science
  • Computational neuroscience
  • Machine learning

Background:

  • Cognitive systems excel at predicting environmental regularities for rewards.
  • Understanding the mechanisms and accuracy of biological prediction is a fundamental question.

Purpose of the Study:

  • To investigate the limits of inferring an observer's prediction strategy from input-output data.
  • To analyze the feasibility of inferring Bayesian observer models, including random data ignoring.

Main Methods:

  • Mathematical modeling of Bayesian observers.
  • Analysis of prediction strategy inference for binary stimuli from finite-order Markov models.
  • Simulation and theoretical analysis of data requirements for complex stimuli.

Main Results:

  • Observer prediction models can be inferred for simple binary stimuli from Markov models.
  • Inference of model parameters requires multiple "clones" (repeated observations) of the observer.
  • Inference complexity grows exponentially with stimulus complexity, demanding more data and computation.

Conclusions:

  • Accurate inference of prediction strategies is feasible for simplified systems.
  • Practical limitations in data acquisition and computation restrict the ability to infer complex prediction strategies in real-world settings.