2023
Conference article  Open Access

The emotions of the crowd: learning image sentiment from tweets via cross-modal distillation

Serra A., Carrara F., Tesconi M., Falchi F.

Visual sentiment analysis  Social data mining 

Trends and opinion mining in social media increasingly focus on novel interactions involving visual media, like images and short videos, in addition to text. In this work, we tackle the problem of visual sentiment analysis of social media images -- specifically, the prediction of image sentiment polarity. While previous work relied on manually labeled training sets, we propose an automated approach for building sentiment polarity classifiers based on a cross-modal distillation paradigm; starting from scraped multimodal (text + images) data, we train a student model on the visual modality based on the outputs of a textual teacher model that analyses the sentiment of the corresponding textual modality. We applied our method to randomly collected images crawled from Twitter over three months and produced, after automatic cleaning, a weakly-labeled dataset of $\sim$1.5 million images. Despite exploiting noisy labeled samples, our training pipeline produces classifiers showing strong generalization capabilities and outperforming the current state of the art on five manually labeled benchmarks for image sentiment polarity prediction.

Source: ECAI 2023 - Twenty-sixth European Conference on Artificial Intelligence, pp. 2089–2096, Cracow, Poland, 30/09-04/10/2023

Publisher: IOS Press, Amsterdam, NLD


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BibTeX entry
@inproceedings{oai:it.cnr:prodotti:488198,
	title = {The emotions of the crowd: learning image sentiment from tweets via cross-modal distillation},
	author = {Serra A. and Carrara F. and Tesconi M. and Falchi F.},
	publisher = {IOS Press, Amsterdam, NLD},
	doi = {10.3233/faia230503},
	booktitle = {ECAI 2023 - Twenty-sixth European Conference on Artificial Intelligence, pp. 2089–2096, Cracow, Poland, 30/09-04/10/2023},
	year = {2023}
}

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