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Published November 2024 | Supplemental Material
Journal Article Open

Perceptual tri-stability, measured and fitted as emergent from a model for bistable alternations

  • 1. ROR icon New York University
  • 2. ROR icon New York University Shanghai
  • 3. ROR icon Courant Institute of Mathematical Sciences
  • 4. ROR icon California Institute of Technology
  • 5. ROR icon University of Exeter

Abstract

The human auditory system in attempting to decipher ambiguous sounds appears to resort to perceptual exploration as evidenced by multi-stable perceptual alternations. This phenomenon has been widely investigated via the auditory streaming paradigm, employing ABA_ triplet sequences with much research focused on perceptual bi-stability with the alternate percepts as either a single integrated stream or as two simultaneous distinct streams. We extend this inquiry with experiments and modeling to include tri-stable perception. Here, the segregated percepts may involve a foreground/background distinction. We collected empirical data from participants engaged in a tri-stable auditory task, utilizing this dataset to refine a neural mechanistic model that had successfully reproduced multiple features of auditory bi-stability. Remarkably, the model successfully emulated basic statistical characteristics of tri-stability without substantial modification. This model also allows us to demonstrate a parsimonious approach to account for individual variability by adjusting the parameter of either the noise level or the neural adaptation strength.

Copyright and License

© 2024 Elsevier B.V. All rights are reserved, including those for text and data mining, AI training, and similar technologies.

Funding

Jiaqiu Vince Sun was supported by the National Natural Science Foundation of China (NSFC) 32071099 and 32271101Program of Introducing Talents of Discipline to Universities, Base B16018, NYU Shanghai Boost Fund and Shanghai Frontiers Science Center of Artificial Intelligence and Deep Learning at NYU Shanghai.
Zeyu Jing was partially supported by Summer Undergraduate Research Experience, Courant Institute of Mathematical Sciences, NYU.
James Rankin was partially supported by the Engineering and Physical Sciences Research Council (EPSRC) of the United Kingdom, EP/W032422/1.

Acknowledgement

We thank Gemma Huguet, Rodica Curtu, Jean-Michel Hupé, and Sue Denham for their valuable feedback on our manuscript.

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Additional details

Created:
December 5, 2024
Modified:
December 5, 2024