Return to Lacan: an approach to digital twin mind with free energy principle
Lingyu Li, Chunbo Li

TL;DR
This paper proposes a novel macro-level model of a Lacanian-inspired digital twin mind using the free energy principle, bridging neuroscience and psychoanalysis through a brain-wide FEP framework.
Contribution
It introduces a formal FEP-based approach to model Lacanian psychoanalytic concepts, mapping the three orders onto brain regions and proposing a minimal digital twin mind model.
Findings
FEP and Lacanian psychoanalysis share non-linear temporal structures.
The FEP-RSI model captures core dynamics of Lacanian mind.
Biological plausibility is discussed from cognitive neuroscience perspectives.
Abstract
Free energy principle (FEP) is a burgeoning theory in theoretical neuroscience that provides a universal law for modelling living systems of any scale. Expecting a digital twin mind from this first principle, we propose a macro-level interpretation that bridge neuroscience and psychoanalysis through the lens of computational Lacanian psychoanalysis. In this article, we claim three fundamental parallels between FEP and Lacanian psychoanalysis, and suggest a FEP approach to formalizing Lacan's theory. Sharing the non-linear temporal structure that combines prediction and retrospection (logical time), both of two theories focus on epistemological questions that how systems represented themselves and external world, and those elements failed to be represented (lacks and free energy) significantly influence the systems' subsequent states. Additionally, the fundamental hypothesis of FEP that…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · advanced mathematical theories · Nonlinear Dynamics and Pattern Formation
MethodsFocus
