协调智能:减少人工智能(AI)偏差的整体方法

Isha Mishra, Vedika Kashyap, Nancy Yadav, Dr. Ritu Pahwa
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引用次数: 0

摘要

人工智能(AI)正在改变我们与数据交互的方式,从而导致人们越来越关注偏见问题。本研究旨在通过开发能够识别和防止人工智能系统中出现新偏见的智能算法来解决这一问题。该策略将创新的机器学习技术、伦理考虑因素和跨学科视角结合起来,在数据收集、模型训练和决策过程等各个阶段解决偏见问题。所提出的策略采用了强大的模型评估技术、自适应学习策略和公平感知机器学习算法,以确保人工智能系统在不同人口群体中公平运行。论文还强调了多样化和具有代表性的数据集以及将代表性不足的群体纳入培训的重要性。我们的目标是开发既能减少偏见又能维护道德规范的人工智能模型,促进用户的接受度和信任度。实证评估和案例研究证明了这一方法的有效性,为正在进行的有关减少人工智能偏见的对话做出了贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Harmonizing Intelligence: A Holistic Approach to Bias Mitigation in Artificial Intelligence (AI)
Artificial intelligence (AI) is transforming the way we interact with data, leading to a growing concern about bias. This study aims to address this issue by developing intelligent algorithms that can identify and prevent new biases in AI systems. The strategy involves combining innovative machine-learning techniques, ethical considerations, and interdisciplinary perspectives to address bias at various stages, including data collection, model training, and decision-making processes. The proposed strategy uses robust model evaluation techniques, adaptive learning strategies, and fairness-aware machine learning algorithms to ensure AI systems function fairly across diverse demographic groups. The paper also highlights the importance of diverse and representative datasets and the inclusion of underrepresented groups in training. The goal is to develop AI models that reduce prejudice while maintaining moral norms, promoting user acceptance and trust. Empirical evaluations and case studies demonstrate the effectiveness of this approach, contributing to the ongoing conversation about bias reduction in AI.
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