Challenge: examining the behaviors of Large Language Models as artificial social actors is underexplored, especially in unverifiable scenarios where conventional benchmarking has little to help improve their abilities.
Approach: They propose a method to collect, compare, and reason about human and LLMs' decisions in an unverifiable scenario and use it to examine their behaviors.
Outcome: The proposed method compared human and LLM decisions in an unverifiable scenario on GitHub and found that proprietary LLMs behave more like humans than open-source LLM systems.

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Systematic Biases in LLM Simulations of Debates (2024.emnlp-main)

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Challenge: Current research suggests that LLM-based agents become increasingly human-like in their performance, sparking interest in using these AI agents as substitutes for human participants in behavioral studies.
Approach: They propose to use LLMs to simulate political debates on topics that are important aspects of people’s day-to-day lives and decision-making processes.
Outcome: The proposed model can simulate political debates on topics that are important aspects of people’s day-to-day lives and decision-making processes.
Do LLMs Align Human Values Regarding Social Biases? Judging and Explaining Social Biases with LLMs (2025.findings-emnlp)

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Challenge: Large language models can lead to undesired consequences when misaligned with human values . previous studies have shown misalignment of LLMs with human value using expert-designed or agent-based emulated bias scenarios .
Approach: They investigate whether large language models (LLMs) are misaligned with human values . they find no significant differences in understanding of HVSB between LLMs .
Outcome: The results show that large language models do not have lower misalignment rates and attack success rates . the study also shows that smaller language models have the ability to explain HVSB .
Human Alignment: How Much Do We Adapt to LLMs? (2025.acl-short)

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Challenge: Large Language Models (LLMs) are becoming a common part of our lives, yet few studies have examined how they influence our behavior.
Approach: They propose a cooperative language game in which players aim to converge on a word and play a game in a group.
Outcome: The proposed game shows that humans notice and adapt to differences regardless of whether they are aware they are interacting with an LLM.
Will LLMs Sink or Swim? Exploring Decision-Making Under Pressure (2024.findings-emnlp)

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Challenge: Recent advances in Large Language Models (LLMs) have shown their ability to simulate human-like decision-making, yet the impact of psychological pressures on their decision- making processes remains underexplored.
Approach: They used explicit and implicit pressure prompts to induce specific pressures and tested them on reasoning, psychometric, and game theory tasks.
Outcome: The results show that pressures significantly affect LLMs’ decision-making, varying across tasks and models.
Is this the real life? Is this just fantasy? The Misleading Success of Simulating Social Interactions With LLMs (2024.emnlp-main)

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Challenge: Recent advances in large language models have enabled richer social simulations . however, the role of information asymmetry in these simulations has been overlooked .
Approach: They develop an evaluation framework to simulate social interactions with LLMs in different settings.
Outcome: The proposed framework performs better in unrealistic, omniscient simulation settings but struggles in those with information asymmetry.
Social Intelligence in the Age of LLMs (2025.naacl-tutorial)

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Challenge: Large Language Models (LLMs) are a powerful tool for integrating human-like communication and context-aware interactions into artificial systems.
Approach: They propose to introduce and overview different aspects of artificial social intelligence and their relationship with LLMs by introducing scientific methods for evaluating social intelligence in LLM.
Outcome: This tutorial will introduce scientific methods for evaluating social intelligence in LLMs, highlighting the key challenges, and identifying promising research directions.
Exploring the Choice Behavior of Large Language Models (2025.findings-acl)

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Challenge: Large Language Models (LLMs) are increasingly being adopted across various domains where they help to make choices.
Approach: They construct a virtual QA platform that includes three different experimental conditions, with four models from GPT and Llama series participating in repeated experiments.
Outcome: The proposed model includes three experimental conditions and four models from GPT and Llama series.
The LLM Effect: Are Humans Truly Using LLMs, or Are They Being Influenced By Them Instead? (2024.emnlp-main)

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Challenge: Large language models have shown capabilities close to human performance in various analytical tasks.
Approach: They investigate the efficiency and accuracy of Large Language Models in specialized tasks . they integrate LLMs with expert annotators to observe the impact of LLM suggestions .
Outcome: The proposed model improves task completion speed but introduces anchoring bias . the proposed model is not suitable for open-ended analysis, but is capable of handling specialized tasks.
Implicit Values Embedded in How Humans and LLMs Complete Subjective Everyday Tasks (2025.emnlp-main)

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Challenge: Large language models (LLMs) can underpin AI assistants that help users with everyday tasks, such as making recommendations or performing basic computation.
Approach: They audit how six popular large language models (LLMs) complete 30 everyday tasks and compare them to 100 human crowdworkers from the US.
Outcome: The LLMs perform 30 tasks and are compared to 100 human crowdworkers in the US.
Real or Robotic? Assessing Whether LLMs Accurately Simulate Qualities of Human Responses in Human-LLM Dialogue (2026.findings-acl)

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Challenge: Recent work has sought to use large language models to simulate human-human and human-LLM interactions.
Approach: They use a large-scale dataset to generate a paired LLM-LLM and human-LLm dialogues from the WildChat dataset and quantify how well they align with their human counterparts.
Outcome: The proposed models perform similarly in simulating English, Chinese, and Russian dialogues.

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