机器学习,意义创造:关于阅读计算机科学文本

IF 6.5 1区 社会学 Q1 SOCIAL SCIENCES, INTERDISCIPLINARY Big Data & Society Pub Date : 2023-01-01 DOI:10.1177/20539517231166887
Louise Amoore, Alexander Campolo, Benjamin N. Jacobsen, Ludovico Rella
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引用次数: 1

摘要

计算机科学倾向于排除社会科学和人文学者对其文本的阅读——通过代码和规模、数学、黑箱不透明、秘密或专有模型。然而,当人们为了更好地理解机器学习对社会的意义而阅读计算机科学论文时,就会产生一种阅读形式,这种阅读方式主要不是挖掘文本的隐藏含义,也不是揭露科学的潜在真相。阅读并不是严格地为了理解或辨别计算机科学文本的明确含义而阅读,阅读是一种参与其中的意义构建和意义构建。我们提出了一种阅读计算机科学的策略,它关注阅读本身的行为,与所有形式的阅读所涉及的困难保持密切联系,并与已经适当地属于这种困难所产生的伦理政治的文本一起工作。为了解决一系列的三个“阅读问题”——类型、可读性和意义——我们将机器学习教科书和论文作为网站来讨论,在这些网站上,今天的算法模型正在积极地给出它们的范式世界观的描述。文本不仅仅是技术定义或概念证明的问题,而是概念伪造和争论的场所。在我们这个时代,人工智能和机器学习的政治应用通常是为了提前解决或预测困难的社会问题,阅读策略必须打开那些无法解决或解决的差距和困难。
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Machine learning, meaning making: On reading computer science texts
Computer science tends to foreclose the reading of its texts by social science and humanities scholars – via code and scale, mathematics, black box opacities, secret or proprietary models. Yet, when computer science papers are read in order to better understand what machine learning means for societies, a form of reading is brought to bear that is not primarily about excavating the hidden meaning of a text or exposing underlying truths about science. Not strictly reading to make sense or to discern definitive meaning of computer science texts, reading is an engagement with the sense-making and meaning-making that takes place. We propose a strategy for reading computer science that is attentive to the act of reading itself, that stays close to the difficulty involved in all forms of reading, and that works with the text as already properly belonging to the ethico-politics that this difficulty engenders. Addressing a series of three “reading problems” – genre, readability, and meaning – we discuss machine learning textbooks and papers as sites where today's algorithmic models are actively giving accounts of their paradigmatic worldview. Much more than matters of technical definition or proof of concept, texts are sites where concepts are forged and contested. In our times, when the political application of AI and machine learning is so commonly geared to settle or predict difficult societal problems in advance, a reading strategy must open the gaps and difficulties of that which cannot be settled or resolved.
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来源期刊
Big Data & Society
Big Data & Society SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
10.90
自引率
10.60%
发文量
59
审稿时长
11 weeks
期刊介绍: Big Data & Society (BD&S) is an open access, peer-reviewed scholarly journal that publishes interdisciplinary work principally in the social sciences, humanities, and computing and their intersections with the arts and natural sciences. The journal focuses on the implications of Big Data for societies and aims to connect debates about Big Data practices and their effects on various sectors such as academia, social life, industry, business, and government. BD&S considers Big Data as an emerging field of practices, not solely defined by but generative of unique data qualities such as high volume, granularity, data linking, and mining. The journal pays attention to digital content generated both online and offline, encompassing social media, search engines, closed networks (e.g., commercial or government transactions), and open networks like digital archives, open government, and crowdsourced data. Rather than providing a fixed definition of Big Data, BD&S encourages interdisciplinary inquiries, debates, and studies on various topics and themes related to Big Data practices. BD&S seeks contributions that analyze Big Data practices, involve empirical engagements and experiments with innovative methods, and reflect on the consequences of these practices for the representation, realization, and governance of societies. As a digital-only journal, BD&S's platform can accommodate multimedia formats such as complex images, dynamic visualizations, videos, and audio content. The contents of the journal encompass peer-reviewed research articles, colloquia, bookcasts, think pieces, state-of-the-art methods, and work by early career researchers.
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