Laurent Charlin
2026
Optimizing User Profiles via Contextual Bandits for Retrieval-Augmented LLM Personalization
Linfeng Du | Ye Yuan | Zichen Zhao | Fuyuan Lyu | Emiliano Penaloza | Xiuying Chen | Zipeng Sun | Jikun Kang | Laurent Charlin | Xue Liu | Haolun Wu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Linfeng Du | Ye Yuan | Zichen Zhao | Fuyuan Lyu | Emiliano Penaloza | Xiuying Chen | Zipeng Sun | Jikun Kang | Laurent Charlin | Xue Liu | Haolun Wu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Large language models (LLMs) excel at general-purpose tasks, yet adapting their responses to individual users remains challenging. Retrieval augmentation provides a lightweight alternative to fine-tuning by conditioning LLMs on user history records, and existing approaches typically select these records based on semantic relevance. We argue that relevance serves as an unreliable proxy for utility: a record may be semantically similar to a query yet fail to improve generation quality or even degrade it due to redundancy or conflicting information. To bridge this gap, we propose PURPLE, a contextual bandit framework that oPtimizes UseR Profiles for LLM pErsonalization. In contrast to a greedy selection of the most relevant records, PURPLE treats profile construction as an order-sensitive generation process and utilizes a Plackett-Luce ranking model to capture complex inter-record dependencies. By training with semantically rich feedback provided by the likelihood of the reference response, our method aligns retrieval directly with generation quality. Extensive experiments on nine personalization tasks demonstrate that PURPLE consistently outperforms strong heuristic and retrieval-augmented baselines in both effectiveness and efficiency, establishing a principled and scalable solution for optimizing user profiles.
2020
Multi-XScience: A Large-scale Dataset for Extreme Multi-document Summarization of Scientific Articles
Yao Lu | Yue Dong | Laurent Charlin
Proceedings of the 2020 Conference on Empirical Methods in Natural Language Processing (EMNLP)
Yao Lu | Yue Dong | Laurent Charlin
Proceedings of the 2020 Conference on Empirical Methods in Natural Language Processing (EMNLP)
Multi-document summarization is a challenging task for which there exists little large-scale datasets. We propose Multi-XScience, a large-scale multi-document summarization dataset created from scientific articles. Multi-XScience introduces a challenging multi-document summarization task: writing the related-work section of a paper based on its abstract and the articles it references. Our work is inspired by extreme summarization, a dataset construction protocol that favours abstractive modeling approaches. Descriptive statistics and empirical results—using several state-of-the-art models trained on the Multi-XScience dataset—reveal that Multi-XScience is well suited for abstractive models.
2018
A Survey of Available Corpora For Building Data-Driven Dialogue Systems: The Journal Version
Iulian Vlad Serban | Ryan Lowe | Peter Henderson | Laurent Charlin | Joelle Pineau
Dialogue & Discourse Volume 9
Iulian Vlad Serban | Ryan Lowe | Peter Henderson | Laurent Charlin | Joelle Pineau
Dialogue & Discourse Volume 9
During the past decade, several areas of speech and language understanding have witnessed substantial breakthroughs from the use of data-driven models. In the area of dialogue systems, the trend is less obvious, and most practical systems are still built through significant engineering and expert knowledge. Nevertheless, several recent results suggest that data-driven approaches are feasible and quite promising. To facilitate research in this area, we have carried out a wide survey of publicly available datasets suitable for data-driven learning of dialogue systems. We discuss important characteristics of these datasets, how they can be used to learn diverse dialogue strategies, and their other potential uses. We also examine methods for transfer learning between datasets and the use of external knowledge. Finally, we discuss appropriate choice of evaluation metrics for the learning objective.
2017
Training End-to-End Dialogue Systems with the Ubuntu Dialogue Corpus
Ryan Lowe | Nissan Pow | Iulian Vlad Serban | Laurent Charlin | Chia-Wei Liu | Joelle Pineau
Dialogue & Discourse Volume 8
Ryan Lowe | Nissan Pow | Iulian Vlad Serban | Laurent Charlin | Chia-Wei Liu | Joelle Pineau
Dialogue & Discourse Volume 8
In this paper, we construct and train end-to-end neural network-based dialogue systems usingan updated version of the recent Ubuntu Dialogue Corpus, a dataset containing almost 1 million multi-turn dialogues, with a total of over 7 million utterances and 100 million words. This dataset is interesting because of its size, long context lengths, and technical nature; thus, it can be used to train large models directly from data with minimal feature engineering, which can be both time consuming and expensive. We provide baselines in two different environments: one where models are trained to maximize the log-likelihood of a generated utterance conditioned on the context of the conversation, and one where models are trained to select the correct next response from a list of candidate responses. These are both evaluated on a recall task that we call Next Utterance Classification (NUC), as well as other generation-specific metrics. Finally, we provide a qualitative error analysis to help determine the most promising directions for future research on the Ubuntu Dialogue Corpus, and for end-to-end dialogue systems in general.
2016
On the Evaluation of Dialogue Systems with Next Utterance Classification
Ryan Lowe | Iulian Vlad Serban | Michael Noseworthy | Laurent Charlin | Joelle Pineau
Proceedings of the 17th Annual Meeting of the Special Interest Group on Discourse and Dialogue
Ryan Lowe | Iulian Vlad Serban | Michael Noseworthy | Laurent Charlin | Joelle Pineau
Proceedings of the 17th Annual Meeting of the Special Interest Group on Discourse and Dialogue
How NOT To Evaluate Your Dialogue System: An Empirical Study of Unsupervised Evaluation Metrics for Dialogue Response Generation
Chia-Wei Liu | Ryan Lowe | Iulian Serban | Mike Noseworthy | Laurent Charlin | Joelle Pineau
Proceedings of the 2016 Conference on Empirical Methods in Natural Language Processing
Chia-Wei Liu | Ryan Lowe | Iulian Serban | Mike Noseworthy | Laurent Charlin | Joelle Pineau
Proceedings of the 2016 Conference on Empirical Methods in Natural Language Processing