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Classification of online toxic comments using the logistic regression and neural networks models

Authors :
Saif, M. A.
Medvedev, A. N.
Medvedev, M. A.
Atanasova, T.
Saif, M. A.
Medvedev, A. N.
Medvedev, M. A.
Atanasova, T.
Source :
AIP Conference Proceedings
Publication Year :
2018

Abstract

The paper addresses the questions of abusive content identification in the Internet. It is presented the solving of the task of toxic online comments classification, which was issued on the site of machine learning Kaggle (www.Kaggle.com) in March of 2018. Based on the analysis of initial data, four models for solving the task are proposed: logistic regression model and three neural networks models - convolutional neural network (Conv), long shortterm memory (LSTM), and Conv + LSTM. All models are realized as a program in Python 3, which has simple structure and can be adapted to solve other tasks. The results of the classification problem solving with help of proposed models are presented. It is concluded that all models provide successful solving of the task, but the combined model Conv + LSTM is the most effective, so as it provides the best accuracy. © 2018 Author(s).

Details

Database :
OAIster
Journal :
AIP Conference Proceedings
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1113863385
Document Type :
Electronic Resource