Error Correction and Adaptation in Conversational AI: A Review of Techniques and Applications in Chatbots

AI Pub Date : 2024-06-04 DOI:10.3390/ai5020041
Saadat Izadi, Mohamad Forouzanfar
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Abstract

This study explores the progress of chatbot technology, focusing on the aspect of error correction to enhance these smart conversational tools. Chatbots, powered by artificial intelligence (AI), are increasingly prevalent across industries such as customer service, healthcare, e-commerce, and education. Despite their use and increasing complexity, chatbots are prone to errors like misunderstandings, inappropriate responses, and factual inaccuracies. These issues can have an impact on user satisfaction and trust. This research provides an overview of chatbots, conducts an analysis of errors they encounter, and examines different approaches to rectifying these errors. These approaches include using data-driven feedback loops, involving humans in the learning process, and adjusting through learning methods like reinforcement learning, supervised learning, unsupervised learning, semi-supervised learning, and meta-learning. Through real life examples and case studies in different fields, we explore how these strategies are implemented. Looking ahead, we explore the different challenges faced by AI-powered chatbots, including ethical considerations and biases during implementation. Furthermore, we explore the transformative potential of new technological advancements, such as explainable AI models, autonomous content generation algorithms (e.g., generative adversarial networks), and quantum computing to enhance chatbot training. Our research provides information for developers and researchers looking to improve chatbot capabilities, which can be applied in service and support industries to effectively address user requirements.
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对话式人工智能中的纠错和适应:聊天机器人中的技术和应用综述
本研究探讨了聊天机器人技术的进步,重点关注纠错方面,以增强这些智能对话工具的功能。由人工智能(AI)驱动的聊天机器人在客户服务、医疗保健、电子商务和教育等行业日益普及。尽管聊天机器人的使用范围越来越广,复杂性也越来越高,但它们还是很容易出错,比如误解、不当回复和事实不准确。这些问题会影响用户满意度和信任度。本研究概述了聊天机器人,分析了聊天机器人遇到的错误,并研究了纠正这些错误的不同方法。这些方法包括使用数据驱动的反馈回路,让人类参与学习过程,以及通过强化学习、监督学习、无监督学习、半监督学习和元学习等学习方法进行调整。通过不同领域的真实案例和个案研究,我们探讨了如何实施这些策略。展望未来,我们将探讨人工智能驱动的聊天机器人所面临的不同挑战,包括实施过程中的道德考量和偏见。此外,我们还探讨了新技术进步的变革潜力,如可解释的人工智能模型、自主内容生成算法(如生成对抗网络)和量子计算,以加强聊天机器人的训练。我们的研究为希望提高聊天机器人能力的开发人员和研究人员提供了信息,这些信息可应用于服务和支持行业,以有效满足用户需求。
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