SACRED: A Faithful Annotated Multimedia Multimodal Multilingual Dataset for Classifying Connectedness Types in Online Spirituality
Qinghao Guan, Yuchen Pan, Donghao Li, Zishi Zhang, Yiyang Chen, Lu Li, Flaminia Canu, Emilia Volkart, Gerold Schneider

TL;DR
This paper introduces SACRED, a novel high-quality multimedia dataset for classifying connectedness types in online spirituality, and evaluates various models, highlighting the effectiveness of DeepSeek-V3 and GPT-4o-mini.
Contribution
The creation of SACRED, the first annotated multi-modal dataset for online spirituality, and the comprehensive evaluation of 13 models on this dataset.
Findings
DeepSeek-V3 achieves 79.19% accuracy in classification.
GPT-4o-mini surpasses others with 63.99% F1 in vision tasks.
A new type of connectedness was identified for communication science.
Abstract
In religion and theology studies, spirituality has garnered significant research attention for the reason that it not only transcends culture but offers unique experience to each individual. However, social scientists often rely on limited datasets, which are basically unavailable online. In this study, we collaborated with social scientists to develop a high-quality multimedia multi-modal datasets, \textbf{SACRED}, in which the faithfulness of classification is guaranteed. Using \textbf{SACRED}, we evaluated the performance of 13 popular LLMs as well as traditional rule-based and fine-tuned approaches. The result suggests DeepSeek-V3 model performs well in classifying such abstract concepts (i.e., 79.19\% accuracy in the Quora test set), and the GPT-4o-mini model surpassed the other models in the vision tasks (63.99\% F1 score). Purportedly, this is the first annotated multi-modal…
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