: A Dataset for ynamic nformation nd ental modeling f umeric iscussions

Understanding multiparty conversations demands robust Theory of Mind (ToM) capabilities, including the ability to track dynamic information, manage knowledge asymmetries, and distinguish relevant information across extended exchanges. To advance ToM evaluation in such settings, we present a carefully designed scalable methodology for generating high-quality benchmark conversation-question pairs with these characteristics. Using this methodology, we create , a new conversational QA dataset covering common business, financial or other group interactions. In these goal-oriented conversations, participants often have to track certain numerical quantities (say ) of interest that can be derived from other variable quantities (like , etc.), whose values also change over the course of the conversation. questions pose simple numerical reasoning problems over such quantities of interest (e.g., , etc.) in the context of the information exchanged in conversations. This allows for precisely evaluating ToM capabilities for carefully tracking and reasoning over participants' knowledge states.Our evaluation of state-of-the-art language models reveals significant challenges in handling participant-centric reasoning, specifically in situations where participants have false beliefs. Models also struggle with conversations containing distractors and show limited ability to identify scenarios with insufficient information. These findings highlight current models' ToM limitations in handling real-world multi-party conversations.
View on arXiv@article{ghosh2025_2505.12651, title={ $\texttt{DIAMONDs}$: A Dataset for $\mathbb{D}$ynamic $\mathbb{I}$nformation $\mathbb{A}$nd $\mathbb{M}$ental modeling $\mathbb{O}$f $\mathbb{N}$umeric $\mathbb{D}$iscussions }, author={ Sayontan Ghosh and Mahnaz Koupaee and Yash Kumar Lal and Pegah Alipoormolabashi and Mohammad Saqib Hasan and Jun Seok Kang and Niranjan Balasubramanian }, journal={arXiv preprint arXiv:2505.12651}, year={ 2025 } }