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Characterizing the Visual Social Media Environment of Eating Disorders

机译:表征饮食障碍的视觉社交媒体环境

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Eating disorders are often exacerbated by exposure to triggering images on social media. Standard approaches to filtering of social media by detecting hashtags or keywords are difficult to keep accurate because those migrate or change over time. In this work we present proof-of-concept demonstrations to show that Deep Learning classification algorithms are effective at classifying images related to eating disorders. We discuss some of the challenges in this domain and show that careful curation of the training data improves performance substantially.
机译:饮食障碍通常通过暴露在社交媒体上触发图像而加剧。通过检测Hashtags或关键字来过滤社交媒体的标准方法很难保持准确,因为这些迁移或随时间变化。在这项工作中,我们提出了概念证明演示,以表明深度学习分类算法在分类与饮食障碍相关的图像中是有效的。我们讨论了该领域的一些挑战,并表明训练数据的仔细策策大大提高了性能。

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