AICVAug 31, 2023

Socratis: Are large multimodal models emotionally aware?

arXiv:2308.16741v39 citationsh-index: 83
Originality Incremental advance
AI Analysis

This addresses the need for emotionally aware AI in content generation and delivery, though it is incremental as it builds on existing multimodal benchmarks.

The authors tackled the problem of coarse emotion labels in multimodal content by proposing Socratis, a benchmark with 18K free-form reactions for 980 emotions on 2075 image-caption pairs, and found that humans prefer human-written reasons over machine-generated ones by over 2 times more often.

Existing emotion prediction benchmarks contain coarse emotion labels which do not consider the diversity of emotions that an image and text can elicit in humans due to various reasons. Learning diverse reactions to multimodal content is important as intelligent machines take a central role in generating and delivering content to society. To address this gap, we propose Socratis, a societal reactions benchmark, where each image-caption (IC) pair is annotated with multiple emotions and the reasons for feeling them. Socratis contains 18K free-form reactions for 980 emotions on 2075 image-caption pairs from 5 widely-read news and image-caption (IC) datasets. We benchmark the capability of state-of-the-art multimodal large language models to generate the reasons for feeling an emotion given an IC pair. Based on a preliminary human study, we observe that humans prefer human-written reasons over 2 times more often than machine-generated ones. This shows our task is harder than standard generation tasks because it starkly contrasts recent findings where humans cannot tell apart machine vs human-written news articles, for instance. We further see that current captioning metrics based on large vision-language models also fail to correlate with human preferences. We hope that these findings and our benchmark will inspire further research on training emotionally aware models.

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