正念算法。

IF 3.1 2区 社会学 Q1 SOCIAL ISSUES Science Technology & Human Values Pub Date : 2022-03-01 Epub Date: 2021-06-22 DOI:10.1177/01622439211025632
Johannes Bruder
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引用次数: 1

摘要

本文分析了在心理学、神经科学和计算机交叉领域出现的优化认知的概念和模型。我有点争议地称之为正念算法,它描述了一种理想,它决定了自我的算法技术,面向情感弹性和创造性认知。企业正念项目和实验性人工神经网络的设计体现了休息的重构,这是这一过程的核心。正念训练为这种重构提供了线索,因为它们以自己的方式详细说明了如何利用间歇休息来增强我们的认知能力,并对抗压力和信息过载的影响。他们通常依赖并吸收有关北美人和欧洲人在休息时大脑活动的神经科学知识。目前人工神经网络的设计借鉴了同样的神经科学研究,并将大脑认知的粗略原理结合起来,使机器学习系统更具弹性和创造性。这些算法技术主要是为了防止精神病理,在这种情况下,压力被认为是成功的驱动力。在这种背景下,我想知道如何利用机器学习系统来扰乱病理认知本身的概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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The Algorithms of Mindfulness.

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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来源期刊
CiteScore
7.70
自引率
6.50%
发文量
49
期刊介绍: As scientific advances improve our lives, they also complicate how we live and react to the new technologies. More and more, human values come into conflict with scientific advancement as we deal with important issues such as nuclear power, environmental degradation and information technology. Science, Technology, & Human Values is a peer-reviewed, international, interdisciplinary journal containing research, analyses and commentary on the development and dynamics of science and technology, including their relationship to politics, society and culture.
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