论文标题

目标功能:机器智能时代的科学与社会

The Objective Function: Science and Society in the Age of Machine Intelligence

论文作者

Moss, Emanuel

论文摘要

机器智能,或使用复杂的计算和统计实践根据现象的数据表示进行预测和分类,已应用于诸如刑事司法,商业,医学,媒体和艺术,机械工程等的不同领域。机器智能如何能够如此自由滑行并为这些领域造成这样的波浪?在本文中,我通过民族志通过如何构建机器学习的权威来实现这一问题,从而可以影响如此多的领域,并研究了它能够做到的后果。通过研究应用机器学习研究人员的工作场所实践,他们生产机器智能,与之合作的人以及生产的工件。论文首先要争辩说,机器智能是从一种幼稚的经验主义形式发展,并与17世纪和18世纪的实证主义知识传统相关。这种天真的经验主义避免了其他形式的知识和理论形成,以便应用机器学习研究人员制定数据性能,使分析对象的存在为能够受到机器智能的实体。通过数据性能,我的意思是生成构成,这些生成构成的存在是机器智能所声称要分析或描述的。将数据性能的颁布分析为一个代表性领域的固定削减,该领域既可以产生有关世界的稳定主张,又要出现这些主张可以实现的解释性框架。论文还研究了机器智能如何取决于其他机构和组织的一系列住宿,从数据收集和处理到组织承诺,以支持应用机器学习研究人员的工作。

Machine intelligence, or the use of complex computational and statistical practices to make predictions and classifications based on data representations of phenomena, has been applied to domains as disparate as criminal justice, commerce, medicine, media and the arts, mechanical engineering, among others. How has machine intelligence become able to glide so freely across, and to make such waves for, these domains? In this dissertation, I take up that question by ethnographically engaging with how the authority of machine learning has been constructed such that it can influence so many domains, and I investigate what the consequences are of it being able to do so. By examining the workplace practices of the applied machine learning researchers who produce machine intelligence, those they work with, and the artifacts they produce. The dissertation begins by arguing that machine intelligence proceeds from a naive form of empiricism with ties to positivist intellectual traditions of the 17th and 18th centuries. This naive empiricism eschews other forms of knowledge and theory formation in order for applied machine learning researchers to enact data performances that bring objects of analysis into existence as entities capable of being subjected to machine intelligence. By data performances, I mean generative enactments which bring into existence that which machine intelligence purports to analyze or describe. The enactment of data performances is analyzed as an agential cut into a representational field that produces both stable claims about the world and the interpretive frame in which those claims can hold true. The dissertation also examines how machine intelligence depends upon a range of accommodations from other institutions and organizations, from data collection and processing to organizational commitments to support the work of applied machine learning researchers.

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