使用LSTM检测有毒注释

K. Dubey, Rahul Nair, Mohd. Usman Khan, Prof. Sanober Shaikh
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引用次数: 8

摘要

虽然网络传播媒体为人们提供了联系、合作和讨论的平台,克服了沟通障碍,但也有一些人将其作为引导仇恨和辱骂言论的媒介,这些言论可能会损害个人的情感和精神健康。在线交流的爆炸式增长使得人工过滤仇恨言论几乎是不可能的,因此需要一种方法来过滤仇恨言论,使社交媒体更干净、更安全。本文旨在通过文本挖掘和使用LSTM神经网络构建的深度学习模型来实现相同的目标,该模型可以接近准确地识别和分类仇恨言论并为我们过滤掉它。我们开发的模型能够将给定的评论分类为有毒或无毒,准确率为94.49%,召回率为92.79%,准确率为94.94%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toxic Comment Detection using LSTM
While online communication media acts as a platform for people to connect, collaborate and discuss, overcoming the barriers for communication, some take it as a medium to direct hateful and abusive comments that may prejudice an individual's emotional and mental well being. Explosion of online communication makes it virtually impossible for filtering out the hateful tweets manually, and hence there is a need for a method to filter out the hate-speech and make social media cleaner and safer to use. The paper aims to achieve the same by text mining and making use of deep learning models constructed using LSTM neural networks that can near accurately identify and classify hate-speech and filter it out for us. The model that we have developed is able to classify given comments as toxic or nontoxic with 94.49% precision, 92.79% recall and 94.94% Accuracy score.
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