以人为本算法设计的特点

M. Cherrington, David Airehrour, Joan Lu, Qiang Xu, David Cameron-Brown, Ihaka Dunn
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引用次数: 1

摘要

算法是无处不在的、看不见的决策影响者。算法特征可能波动很大,这取决于使用、用户或应用的标准。本文考虑了以人为中心的算法设计(HCAD)的新兴领域,交叉以人为中心的设计和算法系统。以人为本,超过度量的特征选择方法,创造更公平和更深刻的意义。创造更多的价值。本文的独特影响是将特征选择集成到技术HCAD策略中,为机器学习提供了一种新颖、创新的HCAD方法。这种灵活和可评估的方法可以支持具有人类社会细微差别的数据进步,旨在为数据驱动的决策提供知识。机器学习算法的设计将以用户为中心。这在使用自动化、半自动化或高性能分析的环境中非常重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Features of Human-Centred Algorithm Design
Algorithms are pervasive, unseen influencers of decisions. Algorithmic features can fluctuate widely, depending on use, user or criteria applied. This paper considers the nascent field of human-centred algorithm design (HCAD), intersecting human-centred design and algorithmic systems. Human-centred, more-than-metric feature selection approaches, create fairer and deeper meaning. More value is created. The unique impact of this paper is to integrate feature selection within a technology HCAD strategy, for a novel, innovative HCAD approach to machine learning. This flexible and evaluative approach can support data advances with human-social nuance, designed for purpose with knowledge for data-driven decisions. The design of machine learning algorithms to the uses in which they will be employed is user-centric. This is important within environments utilising automated, semi-automated or high-performance analytics.
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