Challenge: Theory of Mind (ToM) is a key aspect of human social intelligence, yet chatbots and LLMs do not typically integrate it.
Approach: They propose a method that integrates Theory of Mind (ToM) into chatbots and dialogue agents to generate mental states between dialogue turns.
Outcome: The proposed method improves dialogue and social interaction by integrating ToM with dialogue lookahead.

Similar Papers

Agentic-ToM: Cognition-Inspired Agentic Processing For Enhancing Theory of Mind Reasoning (2025.findings-emnlp)

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Challenge: Current models struggle with reasoning about others’ perspectives, limiting their ability to attribute mental states to oneself and others.
Approach: They propose to embed psychologically-grounded functions into LLMs to enable them to attribute mental states to oneself and others, known as Theory of Mind.
Outcome: The proposed approach outperforms baselines on three ToM datasets without task-specific modifications.
Beyond Words: Integrating Theory of Mind into Conversational Agents for Human-Like Belief, Desire, and Intention Alignment (2025.findings-acl)

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Challenge: Empirical evaluations of LLaMA-3 models demonstrate that ToM-informed alignment improves response quality, achieving win rates of 63% and 67%, respectively.
Approach: They investigate whether open-source LLaMA models can represent and retain ToM-related constructs and whether they can be used to generate more aligned responses.
Outcome: The proposed models can represent and retain ToM-related constructs and improve response quality.
Theory of Mind in Large Language Models: Assessment and Enhancement (2025.acl-long)

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Challenge: Theory of Mind (ToM) is a cornerstone of human social intelligence . Large Language Models (LLMs) are increasingly integrated into daily life .
Approach: They analyze evaluation benchmarks and enhancement strategies to evaluate LLMs' ToM capabilities.
Outcome: The proposed and widely used story-based benchmarks and enhancement strategies are used to evaluate LLMs' ToM capabilities.
Does Theory of Mind Improvement Really Benefit Human-AI Interactions? Empirical Findings from Interactive Evaluations (2026.findings-acl)

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Challenge: Existing benchmarks measure ToM capability improvement through story-reading, multiple-choice questions from a third-person perspective, while ignoring the first-person, dynamic nature of human-AI interactions.
Approach: They propose a new paradigm of interactive ToM evaluation with both perspective and metric shifts.
Outcome: The proposed approach improves the performance of four representative LLM enhancement techniques using real-world datasets and a user study.
EnigmaToM: Improve LLMs’ Theory-of-Mind Reasoning Capabilities with Neural Knowledge Base of Entity States (2025.findings-acl)

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Challenge: Existing ToM reasoning methods rely excessively on off-the-shelf LLMs, reducing their efficiency and limiting their applicability to high-order ToM.
Approach: They propose a neuro-symbolic framework that integrates a Neural Knowledge Base of Entity States and knowledge injection to enhance ToM reasoning.
Outcome: The proposed framework improves ToM reasoning on ToMi, HiToM, and FANToM benchmarks.
Decompose-ToM: Enhancing Theory of Mind Reasoning in Large Language Models through Simulation and Task Decomposition (2025.coling-main)

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Challenge: Theory of Mind (ToM) is the ability to attribute and infer the mental states of others.
Approach: They propose an LLM-based inference algorithm that improves model performance on complex ToM tasks by simulating user perspectives.
Outcome: The proposed algorithm improves model performance on complex ToM tasks while requiring minimal prompt tuning across tasks and no additional model training.
Theory of Mind for Multi-Agent Collaboration via Large Language Models (2023.emnlp-main)

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Challenge: Recent large language models (LLMs) have demonstrated impressive accomplishments in reasoning and planning, but their abilities in multi-agent collaborations remain unexplored.
Approach: They propose to use explicit belief state representations to enhance task performance and the accuracy of ToM inferences for LLM-based agents.
Outcome: The proposed model improves performance and accuracy of ToM inferences for LLM-based agents.
Mind Your Theory: Theory of Mind Goes Deeper Than Reasoning (2025.findings-acl)

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Challenge: Existing benchmarks for Theory of Mind (ToM) focus on whether agents have correct beliefs about others.
Approach: They propose to evaluate Theory of Mind (ToM) capabilities in Large Language Models (LLMs) they propose to use the theory of mind to determine whether and how to invoke ToM .
Outcome: The proposed frameworks can be used to evaluate the performance of large language models (LLMs) in biological agents.
Neural Theory-of-Mind? On the Limits of Social Intelligence in Large LMs (2022.emnlp-main)

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Challenge: We show that one of today’s largest language models lacks this kind of social intelligence out-of-the-box, using two tasks: SocialIQa and ToMi.
Approach: They propose to use social intelligence and Theory of Mind to examine whether modern large-scale language models lack this kind of social intelligence out-of-the-box.
Outcome: The proposed model lacks social intelligence out-of-the-box, and has well-below human accuracies on SocialIQa and ToMi, respectively.
Sentient Agent as a Judge: Evaluating Higher-Order Social Cognition in Large Language Models (2026.findings-acl)

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Challenge: Large language models (LLMs) have evolved from statistical sequence predictors to sophisticated autonomous agents capable of reasoning, planning, and sustaining multi-turn conversa-tions.
Approach: They propose a system that instantiates a "Sentient Agent" that simulates human-like emotional changes and inner thoughts to provide a more realistic evaluation of the model in multi-turn conversations.
Outcome: The proposed framework measures the agent's higher-order social cognition in multi-turn conversations.

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