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Adult Content Classification on Indonesian Tweets using LSTM Neural Network

机译:使用LSTM神经网络对印度尼西亚推文进行成人内容分类

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In the last decade, social media networking sites have become an inseparable part of people's life. However, not all of content in social media contain beneficial and necessary information. This can be seen from the existing of negative and harmful content in social media, such as adult or pornographic content. Therefore, this study aims to build a model for adult content classification by using Long Short Term Memory (LSTM) Neural Network to classify adult content and non-adult content. We also compared our LSTM methods with Multinomial Naive Bayes, Logistic Regression, and Support Vector Classification. According to our experiments, the best model was obtained from the LSTM model with two LSTM layers and dropout reached the accuracy of 98,39% and the loss value of 5,08&.
机译:在过去的十年中,社交媒体网站已成为人们生活中不可分割的一部分。但是,并非社交媒体中的所有内容都包含有益且必要的信息。从社交媒体中存在的负面和有害内容(例如成人或色情内容)可以看出这一点。因此,本研究旨在通过使用长期短期记忆(LSTM)神经网络对成人内容和非成人内容进行分类来建立成人内容分类模型。我们还将LSTM方法与多项朴素贝叶斯,对数回归和支持向量分类进行了比较。根据我们的实验,从具有两个LSTM层的LSTM模型中获得了最佳模型,并且压降达到了98.39%的精度和5.08&的损耗值。

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