The Covid-19 pandemic induced a vast increase in adolescents diagnosed with eating disorders and hospitalized due to eating disorders. This immense growth stemmed partially from the stress of the pandemic but also from increased exposure to content that promotes eating disorders via social media, which, within the last decade, has become plagued by pro-eating disorder content. This study aimed to create a deep learning model capable of determining whether a given social media post promotes eating disorders based solely on image data. Tweets from hashtags that have been documented to promote eating disorders along with Tweets from unrelated hashtags were collected. After prepossessing, these images were labeled as either pro-eating disorder or not based on which Twitter hashtag they were scraped from. Several deep-learning models were trained on the scraped dataset and were evaluated based on their accuracy, F1 score, precision, and recall. Ultimately, the Vision Transformer model was determined to be the most accurate, attaining an F1 score of 0.877 and an accuracy of 86.7% on the test set. The model, which was applied to unlabeled Twitter image data scraped from "#selfie", uncovered seasonal fluctuations in the relative abundance of pro-eating disorder content, which reached its peak in the summertime. These fluctuations correspond not only to the seasons, but also to stressors, such as the Covid-19 pandemic. Moreover, the Twitter image data indicated that the relative amount of pro-eating disorder content has been steadily rising over the last five years and is likely to continue increasing in the future.
翻译:Covid-19大流行导致被诊断患有饮食紊乱并因饮食紊乱住院的青少年人数大幅增加。这一巨大增长部分来自该流行病的压力,但也来自通过社交媒体对助长饮食紊乱的内容的接触增加,在过去十年中,这些内容受到助长饮食紊乱的内容的困扰。这一研究旨在创建一个深层次的学习模式,能够确定某个特定社交媒体职位是否完全根据图像数据促进饮食紊乱。收集了记录用于助长饮食紊乱的标签上的Tweets和来自无关标签的Tweets的86.7%的Tweets。这些图像被标为“助长饮食紊乱”或不是基于他们被刮掉的Twitter标签。一些深层次的学习模式在剪切的数据集上接受了培训,并根据这些数据的准确性、F1分、精确度和回顾进行了评估。最终,愿景变异模型被确定为最准确的,达到0.877分的F1分,测试集的准确度为86.7%。该模型用于未贴标签的Twitter图像数据,从“#selfie”中继续被标为“或非基于他们被刮除的“的”的“Twibal ” 标签。揭示的季节性波动性波动变化中,其内容在持续了相对波动波动波动性波动波动性波动不断上升的5年中不断上升的数据数量,显示了相对波动性数据在不断上升的频率上,其持续到持续到持续到升级的高峰期数据在持续到升级的高峰期。