Silicon Minds versus Human Hearts: The Wisdom of Crowds Beats the Wisdom of AI in Emotion Recognition
Mustafa Akben, Vinayaka Gude, Haya Ajjan

TL;DR
This study compares AI and human emotion recognition abilities, revealing that while AI models excel individually, collective human judgment and human-AI collaboration outperform AI alone, emphasizing the importance of crowds and teamwork.
Contribution
The paper demonstrates that collective human decisions and human-AI collaboration outperform individual AI in emotion recognition tasks, highlighting the value of crowd wisdom and hybrid approaches.
Findings
MLLMs outperform humans individually in emotion recognition.
Human groups surpass AI when decisions are aggregated.
Collaborative human-AI predictions improve accuracy beyond individual performances.
Abstract
The ability to discern subtle emotional cues is fundamental to human social intelligence. As artificial intelligence (AI) becomes increasingly common, AI's ability to recognize and respond to human emotions is crucial for effective human-AI interactions. In particular, whether such systems can match or surpass human experts remains to be seen. However, the emotional intelligence of AI, particularly multimodal large language models (MLLMs), remains largely unexplored. This study evaluates the emotion recognition abilities of MLLMs using the Reading the Mind in the Eyes Test (RMET) and its multiracial counterpart (MRMET), and compares their performance against human participants. Results show that, on average, MLLMs outperform humans in accurately identifying emotions across both tests. This trend persists even when comparing performance across low, medium, and expert-level performing…
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Taxonomy
TopicsEmotion and Mood Recognition · Face Recognition and Perception · Mental Health via Writing
