HCAIApr 7, 2025

The Human Robot Social Interaction (HSRI) Dataset: Benchmarking Foundational Models' Social Reasoning

arXiv:2504.13898v11 citationsh-index: 88
Originality Synthesis-oriented
AI Analysis

This work addresses the need for better evaluation of social intelligence in AI for robotics and human-AI interaction, though it is incremental as it focuses on benchmarking rather than novel methods.

The authors tackled the problem of benchmarking social reasoning in AI agents by introducing the HSRI Dataset with 400 real-world human-robot interaction videos and over 10K annotations, and proposed eight benchmark tasks where current models struggle, showing a gap in AI capabilities.

Our work aims to advance the social reasoning of embodied artificial intelligence (AI) agents in real-world social interactions. Recently, language models (LMs) and foundational models (FMs) are being utilized as automatic evaluators of human-AI interactions with the goal of eventually being used to improve the policy of the AI agent. To enable further research in this direction, we introduce a large-scale real-world Human Robot Social Interaction (HSRI) Dataset to benchmark the capabilities of LMs and FMs to identify and reason about social interactions, specifically with regard to robot social errors and competencies . Our dataset consists of 400 real-world human social robot interaction videos and over 10K annotations, detailing the robot's social errors, competencies, rationale, and corrective actions, capturing unique aspects of human-AI interaction only present in real-world interactions. To further assess AI models' ability to reason about social interactions, we propose eight new benchmark tasks for evaluating centered around whether AI models can (1) evaluate social interactions via detecting social errors and competencies, (2) identify the explanatory factors associated to errors and competencies, (3) understand the flow of real-world social interactions, and (4) provide reasons and corrective actions for social errors. Human studies and experiments with modern LMs and FMs reveal that current models struggle with these tasks, demonstrating that our dataset and benchmark provides a step forward towards socially intelligent AI.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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