Théo Charlot
2026
Frame of Reference: Addressing the Challenges of Common Ground Representation in Situational Dialogs
Biswesh Mohapatra | Théo Charlot | Giovanni Duca | Mayank Palan | Laurent Romary | Justine Cassell
Findings of the Association for Computational Linguistics: ACL 2026
Biswesh Mohapatra | Théo Charlot | Giovanni Duca | Mayank Palan | Laurent Romary | Justine Cassell
Findings of the Association for Computational Linguistics: ACL 2026
Common ground plays a critical role in situated spoken dialogues, where interlocutors must establish and maintain shared references to entities, events, and relations to sustain coherent interaction. For dialog systems, the ability to correctly ground conversational content in order to refer back to it later is particularly important. Prior studies have demonstrated that LLMs are capable of performing grounding acts such as requesting clarification or producing acknowledgments, yet relatively little work has investigated how common ground can be explicitly represented and stored for later use. Without such mechanisms, it remains unclear whether acknowledgment or clarification behaviors truly reflect a grounded understanding. In this work, we evaluate a model’s ability to establish and exploit common ground through relational references to entities within the shared context in a situational dialogue. We test multiple methods for representing common ground in situated dialogues and further propose approaches to improve both the establishment of common ground and its subsequent use in the conversation.
2024
DÉfi Fouille de Texte 2024
Théo Charlot | Elisabeth Sisarith | Nicolas Stucky | Rémi Ilango | Nicolas Gouget | Hreshvik Sewraj | Xavier Pillet
Actes du Défi Fouille de Textes@TALN 2024
Théo Charlot | Elisabeth Sisarith | Nicolas Stucky | Rémi Ilango | Nicolas Gouget | Hreshvik Sewraj | Xavier Pillet
Actes du Défi Fouille de Textes@TALN 2024
Cet article présente une série d’expériences sur la tâche de réponse à des questions à choix multiples de DEFT2024. En s’appuyant sur le corpus FrenchMedMCQA, nous avons mis en œuvre plusieurs approches, incluant des techniques de Récupération augmenté de modèle de langue pré entraîné (REALM).