| Literature DB >> 34130210 |
Tim Julian Möller1, Yasmin Kim Georgie2, Guido Schillaci3, Martin Voss4, Verena Vanessa Hafner5, Laura Kaltwasser6.
Abstract
The notion that self-disorders are at the root of the emergence of schizophrenia rather than a symptom of the disease, is getting more traction in the cognitive sciences. This is in line with philosophical approaches that consider an enactive self, constituted through action and interaction with the environment. We thereby analyze different definitions of the self and evaluate various computational theories lending to these ideas. Bayesian and predictive processing are promising approaches for computational modeling of the "active self". We evaluate their implementation and challenges in computational psychiatry and cognitive developmental robotics. We describe how and why embodied robotic systems provide a valuable tool in psychiatry to assess, validate, and simulate mechanisms of self-disorders. Specifically, mechanisms involving sensorimotor learning, prediction, and self-other distinction, can be assessed with artificial agents. This link can provide essential insights to the formation of the self and new avenues in the treatment of psychiatric disorders.Entities:
Keywords: Active self; Cognitive robotics; Computational psychiatry; Developmental robotics; Minimal self; Predictive processing; Schizophrenia; Self-disorders; Sense of agency; Sense of ownership
Year: 2021 PMID: 34130210 DOI: 10.1016/j.concog.2021.103155
Source DB: PubMed Journal: Conscious Cogn ISSN: 1053-8100