Explanatory power by vagueness: Challenges to the strong prior hypothesis on hallucinations exemplified by the Charles-Bonnet-Syndrome

Franz R. Schmid (Corresponding author), Moritz Kriegleder

Publications: Contribution to journalArticlePeer Reviewed

Abstract

Predictive processing models are often ascribed a certain generality in conceptually unifying the relationships between perception, action, and cognition or the potential to posit a ‘grand unified theory’ of the mind. The limitations of this unification can be seen when these models are applied to specific cognitive phenomena or phenomenal consciousness. Our article discusses these shortcomings for predictive processing models of hallucinations by the example of the Charles-Bonnet-Syndrome. This case study shows that the current predictive processing account omits essential characteristics of stimulus-independent perception in general, which has critical phenomenological implications. We argue that the most popular predictive processing model of hallucinatory conditions – the strong prior hypothesis – fails to fully account for the characteristics of nonveridical perceptual experiences associated with Charles-Bonnet-Syndrome. To fill this explanatory gap, we propose that the strong prior hypothesis needs to include reality monitoring to apply to more than just veridical percepts.
Original languageEnglish
Article number103620
JournalConsciousness and Cognition
Volume117
Issue number103620
DOIs
Publication statusPublished - Jan 2024

Austrian Fields of Science 2012

  • 501030 Cognitive science
  • 301401 Brain research
  • 603114 Philosophy of mind

Keywords

  • Charles-Bonnet-Syndrome
  • Reality monitoring
  • Hallucinations
  • Predictive processing
  • Veridicality
  • Pseudohallucinations
  • Strong priors
  • Stimulus-independent perception

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