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Self-Reflective and Introspective Feature Model for Hate Content Detection in Sinhala YouTube Videos

机译:Sinhala YouTube视频中讨厌内容检测的自我反光和讨论特征模型

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摘要

YouTube is considered one of the most popular social media platforms, which provides users with the ability to interact with each other by sharing videos, commenting or liking or disliking. Its free nature has enabled the spread of offensive and hateful content within this environment, resulting in violence and discrimination within society. Therefore, identifying hate content is crucial to mitigating the spread of hatred. This study describes a system to detect hate in Sinhala content associated in YouTube videos by natural language processing techniques. The categorizations are done based on user comments, thumbnail text, and Meta-data, which includes the title, description and tags. Here, the features were derived through self-reflective and introspective data associated with the YouTube video. This system is capable of detecting hate expressions in Sinhala language YouTube videos with nearly 90 percent accuracy.
机译:YouTube被认为是最受欢迎的社交媒体平台之一,它为用户提供了通过共享视频,评论或喜好或不喜欢互相交互的能力。 它的自由性使其在这种环境中的冒犯性和可恶内容的传播使得社会中的暴力和歧视。 因此,识别仇恨内容对于减轻仇恨的传播至关重要。 本研究描述了一种通过自然语言处理技术检测在YouTube视频中关联的Sinhala内容中的仇恨的系统。 分类基于用户注释,缩略图文本和元数据来完成,包括标题,描述和标记。 这里,通过与YouTube视频相关联的自我反射和识别数据来导出该特征。 该系统能够检测僧伽纳语言YouTube视频的仇恨表达,精度近90%。

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