Subhojyoti Mukherjee
2026
A Survey on LLM-based Conversational User Simulation
Bo Ni | Yu Wang | Leyao Wang | Branislav Kveton | Franck Dernoncourt | Yu Xia | Hongjie Chen | Reuben Luera | Samyadeep Basu | Subhojyoti Mukherjee | Puneet Mathur | Nesreen K. Ahmed | Junda Wu | Li Li | Huixin Zhang | Ruiyi Zhang | Tong Yu | Sungchul Kim | Jiuxiang Gu | Zhengzhong Tu | Alexa Siu | Zichao Wang | Seunghyun Yoon | Nedim Lipka | Namyong Park | Zihao Lin | Trung Bui | Yue Zhao | Tyler Derr | Ryan A. Rossi
Proceedings of the 19th Conference of the European Chapter of the Association for Computational Linguistics (Volume 1: Long Papers)
Bo Ni | Yu Wang | Leyao Wang | Branislav Kveton | Franck Dernoncourt | Yu Xia | Hongjie Chen | Reuben Luera | Samyadeep Basu | Subhojyoti Mukherjee | Puneet Mathur | Nesreen K. Ahmed | Junda Wu | Li Li | Huixin Zhang | Ruiyi Zhang | Tong Yu | Sungchul Kim | Jiuxiang Gu | Zhengzhong Tu | Alexa Siu | Zichao Wang | Seunghyun Yoon | Nedim Lipka | Namyong Park | Zihao Lin | Trung Bui | Yue Zhao | Tyler Derr | Ryan A. Rossi
Proceedings of the 19th Conference of the European Chapter of the Association for Computational Linguistics (Volume 1: Long Papers)
User simulation has long played a vital role in computer science due to its potential to support a wide range of applications. Language, as the primary medium of human communication, forms the foundation of social interaction and behavior. Consequently, simulating conversational behavior has become a key area of study. Recent advancements in large language models (LLMs) have significantly catalyzed progress in this domain by enabling high-fidelity generation of synthetic user conversation. In this paper, we survey recent advancements in LLM-based conversational user simulation. We introduce a novel taxonomy covering user granularity and simulation objectives. Additionally, we systematically analyze core techniques and evaluation methodologies. We aim to keep the research community informed of the latest advancements in conversational user simulation and to further facilitate future research by identifying open challenges and organizing existing work under a unified framework.
2025
From Selection to Generation: A Survey of LLM-based Active Learning
Yu Xia | Subhojyoti Mukherjee | Zhouhang Xie | Junda Wu | Xintong Li | Ryan Aponte | Hanjia Lyu | Joe Barrow | Hongjie Chen | Franck Dernoncourt | Branislav Kveton | Tong Yu | Ruiyi Zhang | Jiuxiang Gu | Nesreen K. Ahmed | Yu Wang | Xiang Chen | Hanieh Deilamsalehy | Sungchul Kim | Zhengmian Hu | Yue Zhao | Nedim Lipka | Seunghyun Yoon | Ting-Hao Kenneth Huang | Zichao Wang | Puneet Mathur | Soumyabrata Pal | Koyel Mukherjee | Zhehao Zhang | Namyong Park | Thien Huu Nguyen | Jiebo Luo | Ryan A. Rossi | Julian McAuley
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Yu Xia | Subhojyoti Mukherjee | Zhouhang Xie | Junda Wu | Xintong Li | Ryan Aponte | Hanjia Lyu | Joe Barrow | Hongjie Chen | Franck Dernoncourt | Branislav Kveton | Tong Yu | Ruiyi Zhang | Jiuxiang Gu | Nesreen K. Ahmed | Yu Wang | Xiang Chen | Hanieh Deilamsalehy | Sungchul Kim | Zhengmian Hu | Yue Zhao | Nedim Lipka | Seunghyun Yoon | Ting-Hao Kenneth Huang | Zichao Wang | Puneet Mathur | Soumyabrata Pal | Koyel Mukherjee | Zhehao Zhang | Namyong Park | Thien Huu Nguyen | Jiebo Luo | Ryan A. Rossi | Julian McAuley
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Active Learning (AL) has been a powerful paradigm for improving model efficiency and performance by selecting the most informative data points for labeling and training. In recent active learning frameworks, Large Language Models (LLMs) have been employed not only for selection but also for generating entirely new data instances and providing more cost-effective annotations. Motivated by the increasing importance of high-quality data and efficient model training in the era of LLMs, we present a comprehensive survey on LLM-based Active Learning. We introduce an intuitive taxonomy that categorizes these techniques and discuss the transformative roles LLMs can play in the active learning loop. We further examine the impact of AL on LLM learning paradigms and its applications across various domains. Finally, we identify open challenges and propose future research directions. This survey aims to serve as an up-to-date resource for researchers and practitioners seeking to gain an intuitive understanding of LLM-based AL techniques and deploy them to new applications.
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Co-authors
- Nesreen K. Ahmed 2
- Hongjie Chen 2
- Franck Dernoncourt 2
- Jiuxiang Gu 2
- Sungchul Kim 2
- Branislav Kveton 2
- Nedim Lipka 2
- Puneet Mathur 2
- Namyong Park 2
- Ryan A. Rossi 2
- Yu Wang 2
- Zichao Wang 2
- Junda Wu 2
- Yu Xia 2
- Seunghyun Yoon 2
- Tong Yu 2
- Ruiyi Zhang 2
- Yue Zhao 2
- Ryan Aponte 1
- Joe Barrow 1
- Samyadeep Basu 1
- Trung Bui 1
- Xiang Chen 1
- Hanieh Deilamsalehy 1
- Tyler Derr 1
- Zhengmian Hu 1
- Ting-Hao Huang 1
- Xintong Li 1
- Li Li 1
- Zihao Lin 1
- Reuben Luera 1
- Jiebo Luo 1
- Hanjia Lyu 1
- Julian McAuley 1
- Koyel Mukherjee 1
- Thien Huu Nguyen 1
- Bo Ni 1
- Soumyabrata Pal 1
- Alexa Siu 1
- Zhengzhong Tu 1
- Leyao Wang 1
- Zhouhang Xie 1
- Zhehao Zhang 1
- Huixin Zhang 1