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Detection of Dangerous Web Pages Based on the Analysis of Suicidal Content Using Machine Learning Algorithms

机译:基于机床学习算法的自杀内容分析检测危险网页

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Nowadays, the task of preventing suicide is one of the priorities in the health sector. Therefore, it is important to identify people prone to suicide at an early stage. This article discusses the possibility of real-time detection of visited websites containing suicidal statements. The classification of web pages is based on the analysis of the text contained on it. This work can be divided into two parts: creating a browser extension and the server. The extension collects information about the content of the web pages visited by the user and transmits it to the server. The page classification process takes place on the server. In the final part of this work, a comparison of the effectiveness of detecting suicidal websites using various machine learning algorithms is presented.
机译:如今,防止自杀的任务是卫生部门的优先事项之一。因此,重要的是在早期阶段识别易于自杀的人。本文讨论了含有自杀陈述的访问网站实时检测的可能性。网页的分类基于对其上包含的文本的分析。这项工作可以分为两部分:创建浏览器扩展和服务器。扩展集收集有关用户访问的网页内容的信息并将其传输到服务器。页面分类过程在服务器上进行。在这项工作的最后部分,介绍了使用各种机器学习算法检测自杀网站的有效性的比较。

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