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
NSChat: A Chatbot System To Rule Them All
Zenon Lamprou, Yashar Moshfeghi
CallNavi: A Study and Challenge on Function Calling Routing and Invocation in Large Language Models
Yewei Song, Cedric Lothritz, Xunzhu Tang, Saad Ezzini, Jacques Klein, Tegawendé F. Bissyandé, Andrey Boytsov, Ulrick Ble, Anne Goujon
A Statistical Framework for Ranking LLM-Based Chatbots
Siavash Ameli, Siyuan Zhuang, Ion Stoica, Michael W. Mahoney
ChaI-TeA: A Benchmark for Evaluating Autocompletion of Interactions with LLM-based Chatbots
Shani Goren, Oren Kalinsky, Tomer Stav, Yuri Rapoport, Yaron Fairstein, Ram Yazdy, Nachshon Cohen, Alexander Libov, Guy Kushilevitz
Test-Time Alignment via Hypothesis Reweighting
Yoonho Lee, Jonathan Williams, Henrik Marklund, Archit Sharma, Eric Mitchell, Anikait Singh, Chelsea Finn
Performance of a large language model-Artificial Intelligence based chatbot for counseling patients with sexually transmitted infections and genital diseases
Nikhil Mehta, Sithira Ambepitiya, Thanveer Ahamad, Dinuka Wijesundara, Yudara Kularathne
Der Effizienz- und Intelligenzbegriff in der Lexikographie und kuenstlichen Intelligenz: kann ChatGPT die lexikographische Textsorte nachbilden?
Ivan Arias-Arias, Maria Jose Dominguez Vazquez, Carlos Valcarcel Riveiro
Distinguishing Scams and Fraud with Ensemble Learning
Isha Chadalavada, Tianhui Huang, Jessica Staddon
A Survey on Uncertainty Quantification of Large Language Models: Taxonomy, Open Research Challenges, and Future Directions
Ola Shorinwa, Zhiting Mei, Justin Lidard, Allen Z. Ren, Anirudha Majumdar
TransitGPT: A Generative AI-based framework for interacting with GTFS data using Large Language Models
Saipraneeth Devunuri, Lewis Lehe