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#selfharm on Instagram: Quantitative Analysis and Classification of Non-Suicidal Self-Injury

机译:Instagram上的#selfharm:非自杀式自残的定量分析和分类

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Non-Suicidal Self-Injury (NSSI) is the intentional destruction of body tissue without the intent to die. NSSI is particularly prevalent among adolescents and young adults as a means of emotional regulation. With the proliferation of social media, NSSI content is frequently being posted, viewed, and shared on popular social media platforms, which may increase social contagion among adolescents. To address this problem, this work first quantifies the prevalence of NSSI content on social media. We develop a content crawler that searches for posts, images, and videos with NSSI-related hashtags (e.g., #selfharm), downloads NSSI content from target social media platforms, and stores them in cloud storage. We then perform a trend analysis, which confirms a steep increase in NSSI posts on social media. Moreover, this work develops an image classifier to identify NSSI or non-NSSI images from social media content. Our classifier is based on the idea of weakly supervised object localization. We evaluate our NSSI classifier with more than 30K labeled NSSI images collected from social media. In our evaluation, our classifier accurately identifies NSSI images with 94% accuracy, and it outperforms state-of-the-art pre-trained models. An accurate NSSI image classifier is an essential first step to enable us and/or social media providers to protect adolescents and young adults from social contagion due to NSSI exposure through such actions as legitimate filtering mechanisms.
机译:非自杀性自残(NSSI)是故意破坏人体组织而无意死亡的。作为情绪调节的一种手段,NSSI在青少年中特别普遍。随着社交媒体的普及,NSSI内容经常在流行的社交媒体平台上发布,查看和共享,这可能会增加青少年的社交传染性。为了解决这个问题,这项工作首先量化了社交媒体上NSSI内容的普遍性。我们开发了一种内容搜寻器,可搜索带有NSSI相关主题标签(例如,#selfharm)的帖子,图像和视频,从目标社交媒体平台下载NSSI内容,并将其存储在云存储中。然后,我们进行趋势分析,确认社交媒体上NSSI帖子的急剧增加。此外,这项工作开发了一种图像分类器,以从社交媒体内容中识别NSSI图像或非NSSI图像。我们的分类器基于弱监督对象定位的思想。我们使用从社交媒体收集的超过30K标记的NSSI图像评估我们的NSSI分类器。在我们的评估中,我们的分类器以94%的准确度准确识别了NSSI图像,并且胜过了最新的预训练模型。准确的NSSI图像分类器是使我们和/或社交媒体提供商能够通过诸如合法过滤机制之类的措施保护青少年和年轻人免受因NSSI暴露而引起的社会传染的重要的第一步。

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