Chatbot Response
Chatbot response research centers on improving the accuracy, empathy, and safety of chatbot interactions across diverse applications, from customer service to mental health support. Current efforts focus on refining large language models (LLMs) like BERT and GPT, often through fine-tuning and techniques such as Retrieval Augmented Generation (RAG), to enhance context awareness and generate more human-like, relevant, and unbiased responses. This field is crucial for advancing human-computer interaction and ensuring responsible AI development, with implications for various sectors including healthcare, education, and customer service. Ongoing research emphasizes the need for robust evaluation frameworks, incorporating both automated and human assessment, to address issues like bias and ensure trustworthy chatbot performance.
Papers
Conversational Crowdsensing: A Parallel Intelligence Powered Novel Sensing Approach
Zhengqiu Zhu, Yong Zhao, Bin Chen, Sihang Qiu, Kai Xu, Quanjun Yin, Jincai Huang, Zhong Liu, Fei-Yue Wang
History of generative Artificial Intelligence (AI) chatbots: past, present, and future development
Md. Al-Amin, Mohammad Shazed Ali, Abdus Salam, Arif Khan, Ashraf Ali, Ahsan Ullah, Md Nur Alam, Shamsul Kabir Chowdhury