We describe our top-team solution to Task 1 for Hindi in the HASOC contest organised by FIRE 2019. The task is to identify hate speech and offensive language in Hindi. More specifically, it is a binary classification problem where a system is required to classify tweets into two classes: (a) Hate and Offensive (HOF) and (b) Not Hate or Offensive (NOT). In contrast to the popular idea of pretraining word vectors (a.k.a. word embedding) with a large corpus from a general domain such as Wikipedia, we used a relatively small collection of relevant tweets (i.e. random and sarcasm tweets in Hindi and Hinglish) for pretraining. We trained a Convolutional Neural Network (CNN) on top of the pretrained word vectors. This approach allowed us to be ran...
The rapid increase in Internet users has increased online concerns such as hate speech, abusive text...
Twitter is one of the popular social media to channel opinions in the form of criticism and suggesti...
Abstract This paper presents the results and main findings of the HASOC-2021 Hate/Offensive Languag...
In our increasingly interconnected digital world, social media platforms have emerged as powerful ch...
International audienceThis paper presents the contribution of the LGI2P (Labo-ratoire de Génie Infor...
This is an accepted manuscript of a paper published by ACM in the proceedings of FIRE 2021: Forum fo...
Abstract The Code-mixed text classification is challenging due to the lack of code-mixed labeled da...
Social media platforms are used by a large number of people prominently to express their thoughts an...
Hate speech detection in social media communication has become one of the primary concerns to avoid ...
Code-switching in linguistically diverse, low resource languages is often semantically complex and l...
Due to the wide adoption of social media platforms like Facebook, Twitter, etc., there is an emergin...
Hate speech detection in social media communication has become one of the primary concerns to avoid ...
This paper describes neural models developed for the Hate Speech and Offensive Content Identificatio...
The rise in the number of social media users has led to an increase in the hateful content posted on...
Twitter is a popular social media for sending text messages, but the tweets that can send are limite...
The rapid increase in Internet users has increased online concerns such as hate speech, abusive text...
Twitter is one of the popular social media to channel opinions in the form of criticism and suggesti...
Abstract This paper presents the results and main findings of the HASOC-2021 Hate/Offensive Languag...
In our increasingly interconnected digital world, social media platforms have emerged as powerful ch...
International audienceThis paper presents the contribution of the LGI2P (Labo-ratoire de Génie Infor...
This is an accepted manuscript of a paper published by ACM in the proceedings of FIRE 2021: Forum fo...
Abstract The Code-mixed text classification is challenging due to the lack of code-mixed labeled da...
Social media platforms are used by a large number of people prominently to express their thoughts an...
Hate speech detection in social media communication has become one of the primary concerns to avoid ...
Code-switching in linguistically diverse, low resource languages is often semantically complex and l...
Due to the wide adoption of social media platforms like Facebook, Twitter, etc., there is an emergin...
Hate speech detection in social media communication has become one of the primary concerns to avoid ...
This paper describes neural models developed for the Hate Speech and Offensive Content Identificatio...
The rise in the number of social media users has led to an increase in the hateful content posted on...
Twitter is a popular social media for sending text messages, but the tweets that can send are limite...
The rapid increase in Internet users has increased online concerns such as hate speech, abusive text...
Twitter is one of the popular social media to channel opinions in the form of criticism and suggesti...
Abstract This paper presents the results and main findings of the HASOC-2021 Hate/Offensive Languag...