“优化用户体验”:优化技术与模拟生活,从模型到算法

Q3 Social Sciences Review of Communication Pub Date : 2021-04-03 DOI:10.1080/15358593.2021.1934523
R. Uliasz
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引用次数: 0

摘要

摘要本文讨论了优化问题,以考虑预测算法和平台用户体验之间的关系。企业数据分析实践越来越依赖于将模型应用于用户行为的机器学习算法,从而产生可以买卖的用户“知识”。本文考虑了当今算法在优化方面的不透明性。以下使用了一种从文化技术研究中汲取的概念装置,认为优化——为定义明确的问题找到充分解决方案的任务——利用模型来模拟行为不可理解性问题的可能答案。追踪一组处理预测行为问题的例子——“最低点”问题、约翰·冯·诺依曼的自动机理论和Facebook像素——优化的特点是从统计模型制作转向预测和算法技术。这种转变是在冷战理性向技术文化中“智能”算法嵌入性下降的背景下出现的。
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“Optimize user experience”: optimization techniques and the simulation of life, from the model to the algorithm
ABSTRACT This article takes up the issue of optimization to consider the relationship between predictive algorithms and platform user experience. Corporate data analytic practices increasingly rely on machine learning algorithms that apply models to user behaviors, producing “knowledge” about users that can be bought and sold. This article considers the opacity of algorithms today in relation to optimization. Using a conceptual apparatus that draws from the study of cultural techniques, the following argues that optimization—the task of finding a sufficient solution to a well-defined problem—makes use of models to simulate possible answers to problems around the incomputablity of behavior. Tracing a set of examples that deal with the problem of predicting behavior—the “minimum point” problem, John von Neumann's automata theory, and the Facebook pixel—optimization is characterized by a shift from statistical model making towards predictive and algorithmic techniques. This shift is seen within the context of the decline of Cold War rationality towards the embeddedness of “intelligent” algorithms across technoculture.
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来源期刊
Review of Communication
Review of Communication Social Sciences-Communication
CiteScore
1.70
自引率
0.00%
发文量
16
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