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Data Science as Machinic Neoplatonism

机译:数据科学作为机械新柏拉图主义

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Data science is not simply a method but an organising idea. Commitment to the new paradigm overrides concerns caused by collateral damage, and only a counterculture can constitute an effective critique. Understanding data science requires an appreciation of what algorithms actually do; in particular, how machine learning learns. The resulting ‘insight through opacity’ drives the observable problems of algorithmic discrimination and the evasion of due process. But attempts to stem the tide have not grasped the nature of data science as both metaphysical and machinic. Data science strongly echoes the neoplatonism that informed the early science of Copernicus and Galileo. It appears to reveal a hidden mathematical order in the world that is superior to our direct experience. The new symmetry of these orderings is more compelling than the actual results. Data science does not only make possible a new way of knowing but acts directly on it; by converting predictions to pre-emptions, it becomes a machinic metaphysics. The people enrolled in this apparatus risk an abstraction of accountability and the production of ‘thoughtlessness’. Susceptibility to data science can be contested through critiques of science, especially standpoint theory, which opposes the ‘view from nowhere’ without abandoning the empirical methods. But a counterculture of data science must be material as well as discursive. Karen Barad’s idea of agential realism can reconfigure data science to produce both non-dualistic philosophy and participatory agency. An example of relevant praxis points to the real possibility of ‘machine learning for the people’.
机译:数据科学不仅是一种方法,而且是一种组织思想。对新范式的承诺超越了由附带损害引起的担忧,只有反文化才能构成有效的批评。了解数据科学需要了解算法的实际作用。特别是机器学习的学习方式。由此产生的“通过不透明的洞察力”引发了可观察到的算法歧视和规避正当程序的问题。但是阻止潮流的尝试并没有掌握数据科学的本质,即形而上学和机器学。数据科学强烈呼应了新柏拉图主义,该思想为哥白尼和伽利略的早期科学提供了信息。它似乎揭示了世界上隐藏的数学顺序,该顺序优于我们的直接经验。这些排序的新对称性比实际结果更具说服力。数据科学不仅为人们提供了一种新的认识方式,而且还直接对其采取了行动。通过将预测转换为先发制人,它变成了机器形而上学。参加这种活动的人可能会冒犯问责制和产生“无意识”的风险。数据科学的易感性可以通过对科学的批判(尤其是立场论)进行争论,科学批判反对“无处不在的观点”而又不放弃经验方法。但是,数据科学的反文化必须既具有实质性又具有话语性。卡伦·巴拉德(Karen Barad)的代理现实主义思想可以重新配置数据科学,以产生非二元论哲学和参与性代理。有关实践的一个例子指出了“为人民服务的机器学习”的真正可能性。

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