适用于数据偏见伦理分析的工具

W. Lee
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引用次数: 0

摘要

数据偏见是一种嵌入在数据收集、存储和使用过程以及人类使用的应用程序中的偏见,是一个新兴的数据隐私问题,以人工智能偏见(AI偏见)为例。这一问题正逐渐成为数据伦理的一个附加漏洞,对数据安全的一个附加威胁,以及对数据保护的一个附加负担。它具有诱导数据保护支出减少的效果,对于数据驱动的技术密集型时代(包括工程)的任何创造性努力的成功至关重要,以人工智能偏见为例,人工智能偏见是在人工智能算法的设计、开发和培训过程中,当有偏见的数据潜入时产生的偏见。人工智能确实在一种现象中达到顶峰,即大众跳起来,但由于人工智能偏见带来的无处不在的网络威胁,少数清醒的人避开了这种现象。问题不是数据偏见本身,也不是由人类偏见引起的多维问题,这通常是复杂和棘手的,而是需要一种方法来实现一个全面的观点,涵盖给定问题、行动、政策或决定的技术、金融、法律、社会、伦理和生态方面。推荐是一种分别基于伦理矩阵和六维度量(Lee, 2021),由伦理矩阵算法和六维度量算法(Lee,即将出版)组成的方法。
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Tools adapted to Ethical Analysis of Data Bias
Data Bias, a bias embedded in data during collection, storing, and use, and in the apps used by a human, is an emerging issue of data privacy exemplified by Artificial Intelligence bias (AI bias). This issue is becoming gradually an added vulnerability to data ethics, an added threat to data security, and an added burden to data protection. It has an effect to induce a reduction in data protection expenditure, and is crucial to the success of any creative endeavours in the data-driven technology-intensive era, including Engineering, exemplified by AI bias, and AI bias is bias created when biased data creeps in during design, development, and training of AI algorithms. AI indeed culminates in a phenomenon in which the populace jumps, yet a sober minority steers away from because of the pervasive cyber-threats that AI bias raises. At issue is not data bias per se, nor the multi-dimensional issues induced by human bias, which are usually complex and slippery, but a need for a method to enable a holistic view covering the technical, financial, legal, social, ethical, and ecological aspects of a given problem, action, policy, or decision. Recommendable is a method composed of the Ethical Matrix Algorithm and Hexa-dimension Metric Algorithm (Lee, forthcoming) based respectively on the Ethical Matrix and Hexa-dimension Metric (Lee, 2021).
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来源期刊
Transactions Hong Kong Institution of Engineers
Transactions Hong Kong Institution of Engineers Engineering-Engineering (all)
CiteScore
2.70
自引率
0.00%
发文量
22
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