Nowadays users leave numerous comments on different social networks, news portals, and forums. Some of the comments are toxic or abusive. Due to numbers of comments, it is unfeasible to manually moderate them, so most of the systems use some kind of automatic discovery of toxicity using machine learning models. In this work, we performed a systematic review of the state-of-the-art in toxic comment classification using machine learning methods. We extracted data from 31 selected primary relevant studies. First, we have investigated when and where the papers were published and their maturity level. In our analysis of every primary study we investigated: data set used, evaluation metric, used machine learning methods, classes of toxicity, and ...
Toksični komentari na internetu bespotrebno kradu pozornost svemu korisnome što nam internet pruža, ...
Moderators of online discussion forums often struggle with controlling extremist comments on their p...
International audienceIn this paper, we propose a supervised approach for toxic comment classificati...
Toxic comments are the comments found in the online forums that are rude, offensive, or unfair and u...
The digital landscape has blossomed thanks to the surge of online platforms, boosting the variety an...
Due to the development in e-commerce, social media channels like twitter and Facebook flood of Infor...
With the growth of the Internet and data collection in the last twenty years, we have seen a rise wi...
This paper presents a novel application of Natural Language Processing techniques to classify unstru...
Social media sites and online forums have struggled with the issue of harassment and hateful speech ...
With the rising surge of online toxicity, automating the identification of abusive language becomes ...
In the current century, social media has created many job opportunities and has become a unique plac...
This article focuses on the problem of detecting toxicity in online discussions. Toxicity is current...
The purpose of this thesis was to implement a Deep Learning Model to classify the toxicity of online...
The paper addresses the questions of abusive content identification in the Internet. It is presented...
Due to increasing technologies in the interactive web applications, there has been a lot of developm...
Toksični komentari na internetu bespotrebno kradu pozornost svemu korisnome što nam internet pruža, ...
Moderators of online discussion forums often struggle with controlling extremist comments on their p...
International audienceIn this paper, we propose a supervised approach for toxic comment classificati...
Toxic comments are the comments found in the online forums that are rude, offensive, or unfair and u...
The digital landscape has blossomed thanks to the surge of online platforms, boosting the variety an...
Due to the development in e-commerce, social media channels like twitter and Facebook flood of Infor...
With the growth of the Internet and data collection in the last twenty years, we have seen a rise wi...
This paper presents a novel application of Natural Language Processing techniques to classify unstru...
Social media sites and online forums have struggled with the issue of harassment and hateful speech ...
With the rising surge of online toxicity, automating the identification of abusive language becomes ...
In the current century, social media has created many job opportunities and has become a unique plac...
This article focuses on the problem of detecting toxicity in online discussions. Toxicity is current...
The purpose of this thesis was to implement a Deep Learning Model to classify the toxicity of online...
The paper addresses the questions of abusive content identification in the Internet. It is presented...
Due to increasing technologies in the interactive web applications, there has been a lot of developm...
Toksični komentari na internetu bespotrebno kradu pozornost svemu korisnome što nam internet pruža, ...
Moderators of online discussion forums often struggle with controlling extremist comments on their p...
International audienceIn this paper, we propose a supervised approach for toxic comment classificati...