Detect Profane Language in Streaming Services to Protect Young Audiences

Jingxiang Chen, Kaimin Wei, Xiang Hao
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引用次数: 1

Abstract

With the rapid growth of online video streaming, recent years have seen increasing concerns about profane language in their content. Detecting profane language in streaming services is challenging due to the long sentences appeared in a video. While recent research on handling long sentences has focused on developing deep learning modeling techniques, little work has focused on techniques on improving data pipelines. In this work, we develop a data collection pipeline to address long sequence of texts and integrate this pipeline with a multi-head self-attention model. With this pipeline, our experiments show the self-attention model offers 12.5% relative accuracy improvement over state-of-the-art distilBERT model on profane language detection while requiring only 3% of parameters. This research designs a better system for informing users of profane language in video streaming services.
检测流媒体服务中的亵渎语言,以保护年轻观众
随着在线视频流媒体的快速发展,近年来人们越来越关注其内容中的亵渎语言。由于视频中出现了长句子,因此在流媒体服务中检测亵渎语言是一项挑战。虽然最近关于处理长句子的研究主要集中在开发深度学习建模技术上,但很少有工作集中在改进数据管道的技术上。在这项工作中,我们开发了一个数据收集管道来处理长序列的文本,并将该管道与多头自关注模型相结合。有了这个管道,我们的实验表明,自关注模型在亵渎语言检测上比最先进的蒸馏器模型提供了12.5%的相对准确性提高,而只需要3%的参数。本研究设计了一个更好的系统来通知用户在视频流媒体服务中的亵渎语言。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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