Edinburgh Research Archive

Approximate Bayesian inference in and for computational models of cognition: a simulation-based perspective

dc.contributor.advisor
Lucas, Christopher
dc.contributor.advisor
Bramley, Neil
dc.contributor.author
Valentin, Simon
dc.contributor.sponsor
University of Edinburgh: Principal’s Career Development PhD Scholarship
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dc.date.accessioned
2024-12-19T11:25:17Z
dc.date.available
2024-12-19T11:25:17Z
dc.date.issued
2024-12-19
dc.description.abstract
Bayesian inference provides a normative framework for reasoning under uncertainty, combining prior beliefs with observed evidence into posterior beliefs. Despite its theoretical elegance, Bayesian inference can be intractable, which presents problems both for Bayesian data analysis and Bayesian accounts of human inference under uncertainty. This work explores two complementary themes: First, how approximate Bayesian inference can answer challenges to traditional Bayesian models of cognition; Second, how we can perform Bayesian analyses of expressive models of human cognition. Both themes are examined through the lens of simulation-based inference, which can benefit computational models of cognition. The first theme addresses a fundamental paradox in human cognition: How do people routinely solve seemingly intractable inference problems in everyday life? We begin by examining human causal structure learning from events and their timings, accounting for potential hidden causes and cyclic causal structures. Next, we study human causal learning from event sequences, comparing traditional associative models to resource-rational models adopting an inference-by-sampling perspective. Finally, we investigate the apparent dichotomy between heuristics and Bayesian models, proposing to resolve this tension by viewing heuristics through the lens of likelihood-free inference and summary statistics. The second theme focuses on developing methodological tools to support richer, simulation-based theories of cognition. As models grow in complexity, intuiting and designing informative experiments becomes increasingly challenging. We present a methodology for Bayesian optimal experimental design (BOED) to address these issues, providing researchers with robust tools for developing and testing sophisticated cognitive models. Through a case study on models of human behavior in multi-armed bandit tasks, we demonstrate the approach’s usefulness and provide guidance for its practical adoption. The themes explored in this thesis – approximate Bayesian inference in and for computational models of cognition – are inherently complementary. As theories become more expressive, they necessitate more sophisticated tools, while advances in methodology may inspire novel theories about how people tackle challenging inference problems.
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dc.identifier.uri
https://hdl.handle.net/1842/42920
dc.identifier.uri
http://dx.doi.org/10.7488/era/5473
dc.language.iso
en
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dc.publisher
The University of Edinburgh
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dc.relation.hasversion
S. Valentin, N. R. Bramley, and C. G. Lucas. Discovering common hidden causes in sequences of events. Computational Brain & Behavior, 6(3):377–399, 2023
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S. Valentin, L. Castillo, A.N. Sanborn, and C. G. Lucas. Distinguishing between process models of causal learning. In preparation
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S. Valentin, S. Kleinegesse, N. R. Bramley, P. Seriès, M. U. Gutmann, and C. G. Lucas. Designing optimal behavioural experiments using machine learning. eLife, 13:e86224, 2024
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dc.relation.hasversion
S. Valentin, S. Kleinegesse, N. R. Bramley, M. U. Gutmann, and C. G. Lucas. Bayesian optimal experimental design for simulator models of cognition. In NeurIPS AI4Science Workshop, 2021
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dc.relation.hasversion
S. Valentin, T. Gong, N. R. Bramley, and C. G. Lucas. The ABC of heuristics. In preparation
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dc.relation.hasversion
S. Valentin, S. Kleinegesse, N. R. Bramley, M. U. Gutmann, and C. G. Lucas. Bayesian optimal experimental design for simulator models of cognition. arXiv preprint arXiv:2110.15632, 43(43), 2021.
en
dc.relation.hasversion
S. Valentin, N. R. Bramley, and C. G. Lucas. Discovering common hidden causes in sequences of events. Computational Brain & Behavior, 6(3):377– 399, 2023
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dc.subject
Bayesian inference
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dc.subject
simulation-based
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dc.subject
simulation-based inference
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dc.subject
human cognition
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dc.subject
Bayesian optimal experimental design (BOED)
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dc.title
Approximate Bayesian inference in and for computational models of cognition: a simulation-based perspective
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dc.type
Thesis or Dissertation
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dc.type.qualificationlevel
Doctoral
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dc.type.qualificationname
PhD Doctor of Philosophy
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