Should Chatgpt Be Biased? Challenges And Risks Of Bias In Large Language Models · The Large Language Model Bible Contribute to LLM-Bible

Should Chatgpt Be Biased? Challenges And Risks Of Bias In Large Language Models

Ferrara Emilio. First Monday Volume 2023

[Paper]    
Applications Attention Mechanism Ethics And Bias GPT Model Architecture RAG Reinforcement Learning Responsible AI Survey Paper Training Techniques

As the capabilities of generative language models continue to advance, the implications of biases ingrained within these models have garnered increasing attention from researchers, practitioners, and the broader public. This article investigates the challenges and risks associated with biases in large-scale language models like ChatGPT. We discuss the origins of biases, stemming from, among others, the nature of training data, model specifications, algorithmic constraints, product design, and policy decisions. We explore the ethical concerns arising from the unintended consequences of biased model outputs. We further analyze the potential opportunities to mitigate biases, the inevitability of some biases, and the implications of deploying these models in various applications, such as virtual assistants, content generation, and chatbots. Finally, we review the current approaches to identify, quantify, and mitigate biases in language models, emphasizing the need for a multi-disciplinary, collaborative effort to develop more equitable, transparent, and responsible AI systems. This article aims to stimulate a thoughtful dialogue within the artificial intelligence community, encouraging researchers and developers to reflect on the role of biases in generative language models and the ongoing pursuit of ethical AI.

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