The Mind as a Predictive Modelling Engine: Generative Models, Structural Similarity, and Mental Representation


Type
Thesis
Change log
Authors
Williams, Daniel George  ORCID logo  https://orcid.org/0000-0002-9774-2910
Abstract

I outline and defend a theory of mental representation based on three ideas that I extract from the work of the mid-twentieth century philosopher, psychologist, and cybernetician Kenneth Craik: first, an account of mental representation in terms of idealised models that capitalize on structural similarity to their targets; second, an appreciation of prediction as the core function of such models; and third, a regulatory understanding of brain function. I clarify and elaborate on each of these ideas, relate them to contemporary advances in neuroscience and machine learning, and favourably contrast a predictive model-based theory of mental representation with other prominent accounts of the nature, importance, and functions of mental representations in cognitive science and philosophy.

Description
Date
2018-08-24
Advisors
Holton, Richard
Keywords
mental representation, predictive coding, predictive processing, philosophy, generative models, structural resemblance, structural similarity
Qualification
Doctor of Philosophy (PhD)
Awarding Institution
University of Cambridge
Sponsorship
This work was supported by the Arts and Humanities Research Council.