Quantum Fair Machine Learning

Elija Perrier
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引用次数: 9

Abstract

In this paper, we inaugurate the field of quantum fair machine learning. We undertake a comparative analysis of differences and similarities between classical and quantum fair machine learning algorithms, specifying how the unique features of quantum computation alter measures, metrics and remediation strategies when quantum algorithms are subject to fairness constraints. We present the first results in quantum fair machine learning by demonstrating the use of Grover's search algorithm to satisfy statistical parity constraints imposed on quantum algorithms. We provide lower-bounds on iterations needed to achieve such statistical parity within ε-tolerance. We extend canonical Lipschitz-conditioned individual fairness criteria to the quantum setting using quantum metrics. We examine the consequences for typical measures of fairness in machine learning context when quantum information processing and quantum data are involved. Finally, we propose open questions and research programmes for this new field of interest to researchers in computer science, ethics and quantum computation.
量子公平机器学习
在本文中,我们开创了量子公平机器学习领域。我们对经典和量子公平机器学习算法之间的异同进行了比较分析,说明了当量子算法受到公平约束时,量子计算的独特特征如何改变度量、指标和补救策略。我们通过演示使用Grover搜索算法来满足施加在量子算法上的统计奇偶性约束,提出了量子公平机器学习的第一个结果。我们提供了在ε-容差范围内实现这种统计奇偶性所需的迭代的下界。我们使用量子度量将标准李普希茨条件下的个体公平性标准扩展到量子设置。当涉及量子信息处理和量子数据时,我们研究了机器学习环境中典型的公平度量的后果。最后,我们向计算机科学、伦理学和量子计算领域的研究人员提出了这个新领域的开放问题和研究计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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