Keyword search (4,163 papers available)

"Cognitive neuroscience" Keyword-tagged Publications:

Title Authors PubMed ID
1 Toward cognitive models of misophonia Savard MA; Coffey EBJ; 39874936
PSYCHOLOGY
2 Evoked and entrained pupillary activity while moving to preferred tempo and beyond Spiech C; Hope M; Bégel V; 39758823
PSYCHOLOGY
3 Overcoming boundaries: Interdisciplinary challenges and opportunities in cognitive neuroscience Brignol A; Paas A; Sotelo-Castro L; St-Onge D; Beltrame G; Coffey EBJ; 38750788
PSYCHOLOGY
4 Processing visual ambiguity in fractal patterns: Pareidolia as a sign of creativity Pepin AB; Harel Y; O' Byrne J; Mageau G; Dietrich A; Jerbi K; 36164655
PSYCHOLOGY
5 The Algorithms of Mindfulness Johannes Bruder 35103028
CONCORDIA
6 Meta-control: From psychology to computational neuroscience Eppinger B; Goschke T; Musslick S; 34081267
PSYCHOLOGY

 

Title:The Algorithms of Mindfulness
Authors:Johannes Bruder
Link:https://pubmed.ncbi.nlm.nih.gov/35103028/
DOI:10.1177/01622439211025632
Publication:Science, technology & human values
Keywords:artificial intelligenceattentioncognitive neuroscienceinformation overloadrestsleep
PMID:35103028 Category: Date Added:2022-02-01
Dept Affiliation: CONCORDIA
1 Institute of Experimental Design and Media Cultures/Critical Media Lab, FHNW Academy of Art and Design, Basel, Switzerland.
2 Milieux - Institute for Arts, Culture, Technology, Concordia University, Montreal, Quebec, Canada.

Description:

This paper analyzes notions and models of optimized cognition emerging at the intersections of psychology, neuroscience, and computing. What I somewhat polemically call the algorithms of mindfulness describes an ideal that determines algorithmic techniques of the self, geared at emotional resilience and creative cognition. A reframing of rest, exemplified in corporate mindfulness programs and the design of experimental artificial neural networks sits at the heart of this process. Mindfulness trainings provide cues as to this reframing, for they detail each in their own way how intermittent periods of rest are to be recruited to augment our cognitive capacities and combat the effects of stress and information overload. They typically rely on and co-opt neuroscience knowledge about what the brains of North Americans and Europeans do when we rest. Current designs for artificial neural networks draw on the same neuroscience research and incorporate coarse principles of cognition in brains to make machine learning systems more resilient and creative. These algorithmic techniques are primarily conceived to prevent psychopathologies where stress is considered the driving force of success. Against this backdrop, I ask how machine learning systems could be employed to unsettle the concept of pathological cognition itself.





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