基于神经网络的恶意词检测研究

Xiao-Chuang Chang
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引用次数: 0

摘要

目前,恶意言论的传播不仅破坏了网络环境,也给所有网民带来了不满意的体验。因此,即时检测恶意词语成为现有互联网社交网络的一个重要问题,可以帮助管理员处理突发问题。传统的方法主要集中在几个特定的关键字提取上,这可能会识别出错误的恶意词,并且耗费大量的计算成本。随后,利用机器学习对恶意词语进行检测,通过训练好的机器学习模型提高识别准确率。在本文中,我们建立了一个神经网络模型,在合理的计算成本下实现恶意词的识别。我们首先通过多层感知器提取句子特征,并将恶意特征划分到训练好的神经网络中。事实上,这些特征是为了准确识别恶意词语而划分的。从我们广泛的实验结果可以看出,我们提出的方法可以自动识别恶意词语,检测准确率超过85%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Malicious Words Detection based on Neural Network
At present, malicious words spreading not only damages the network environment but also bring an unsatisfied experience for all Internet users. Therefore, immediately detecting the malicious words becomes an important issue for existing Internet social networks and can assist the administrator to dispose the emergency issues. Traditional methods are primary concentrated on the several certain key words extraction, which may identify wrong malicious words and cost numerous computation costs. Subsequently, machine learning is utilized to detect malicious words, which enhances the identification accuracy with trained machine learning model. In this paper, we establish a neural network model to achieve malicious words identification with reasonable computation costs. We initially extract the sentence features through a multiple-layer perceptron and divide the malicious features to a trained neural network. Indeed, the features are divided to precisely identify the malicious words. From our extensive experimental results, we can conclude that our proposed methods can automatically identify the malicious words with more than 85% detection accuracy.
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