Revealing the hidden patterns of news photos: Analysis of millions of news photos through GDELT & deep learning-based vision APIs

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Abstract

In this work, we analyze more than two million news photos published in January 2016. We demonstrate i) which objects appear the most in news photos; ii) what the sentiments of news photos are; iii) whether the sentiment of news photos is aligned with the tone of the text; iv) how gender is treated; and v) how differently political candidates are portrayed. To our best knowledge, this is the first large-scale study of news photo contents using deep learning-based vision APIs.

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CITATION STYLE

APA

Kwak, H., & An, J. (2016). Revealing the hidden patterns of news photos: Analysis of millions of news photos through GDELT & deep learning-based vision APIs. In AAAI Workshop - Technical Report (Vol. WS-16-16-WS-16-20, pp. 99–107). AI Access Foundation. https://doi.org/10.1609/icwsm.v10i2.14840

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