人工智能中的偏见:对因素和改进策略的综合考察

Amey Bhandari
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引用次数: 0

摘要

人工智能在我们的生活中变得非常流行,从工作申请到医疗诊断,它被应用于各个领域。由于各种因素,从有偏见的训练数据到缺乏多样性以及设计和建模团队,人工智能往往存在偏见。人工智能中的偏见是这篇研究论文的重点,它从讨论人工智能的发展和对人工智能模型如何工作的基本理解开始。随后,通过实例讨论了AI中的偏差及其原因,并对不同AI模型中的偏差进行了比较。分析了图像生成AI模型,如Stable Diffusion和dall - e2,以及文本生成AI模型,如ChatGPT。对人工智能在性别、宗教和种族等不同方面的偏见进行了详细探讨。最后,讨论了为减轻偏见所采取的步骤。
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Bias in AI: A Comprehensive Examination of Factors and Improvement Strategies
- Artificial intelligence is becoming extremely popular in our lives, being used in every sector, from job applications to medical diagnoses. AI is often biased due to various factors, ranging from biased training data to a lack of diversity and the designing and modeling team. Bias in AI is this research paper’s focus, which starts by discussing AI development and a basic understanding of how AI models work. Later, bias in AI and its reasons are discussed with examples, along with a comparison of bias in different AI models. Image generation AI models such as Stable Diffusion and DALL-E 2, along with text generation AIs such as ChatGPT, are analyzed. Bias in AI in different respects, such as Gender, Religion, and Race, has been explored in detail. Towards the end, steps that have been taken to mitigate bias have been discussed.
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