SemEval 2019 Task 6 was OffensEval: Identifying and Categorizing Offensive Language in Social Media. The task was further divided into three sub-tasks: offensive language identification, automatic categorization of offense types, and offense target identification. In this paper, we present the approaches used by the Embeddia team, who qualified as fourth, eighteenth and fifth on the tree sub-tasks. A different model was trained for each sub-task. For the first sub-task, we used a BERT model fine-tuned on the OLID dataset, while for the second and third tasks we developed a custom neural network architecture which combines bag-of-words features and automatically generated sequence-based features. Our results show that combining automatically...
In this paper, we describe the team BRUMS entry to OffensEval 2: Multilingual Offensive Language Ide...
In this paper we present our submission to sub-task A at SemEval 2020 Task 12: Multilingual Offensiv...
This paper presents the different models submitted by the LT@Helsinki team for the SemEval2020 Share...
Abstract This paper presents the results and main findings of the HASOC-2021 Hate/Offensive Languag...
Hate speech detection on social media platforms is crucial as it helps to avoid severe harm to margi...
This paper describes the entry hshl coarse 1.txt for Task I (Binary Classification) of the Germeval ...
This paper describes the system submitted by the RGCL team to GermEval 2019 Shared Task 2: Identific...
Social media has been an effective carrier of information from the day of its inception. People worl...
In this paper we describe our submissions to task I of the GermEval 2018 Shared Task with the goal o...
Hateful and abusive speech presents a major challenge for all online social media platforms. Recent ...
The paper describes the systems submitted to OffensEval (SemEval 2019, Task 6) on ‘Identifying and C...
The detection of offensive, hateful and profane language has become a critical challenge since many ...
Disparate biases associated with datasets and trained classifiers in hateful and abusive content ide...
In this paper, we describe two systems for predicting message-level offensive language in German twe...
Social media platforms receive massive amounts of user-generated content that may include offensive ...
In this paper, we describe the team BRUMS entry to OffensEval 2: Multilingual Offensive Language Ide...
In this paper we present our submission to sub-task A at SemEval 2020 Task 12: Multilingual Offensiv...
This paper presents the different models submitted by the LT@Helsinki team for the SemEval2020 Share...
Abstract This paper presents the results and main findings of the HASOC-2021 Hate/Offensive Languag...
Hate speech detection on social media platforms is crucial as it helps to avoid severe harm to margi...
This paper describes the entry hshl coarse 1.txt for Task I (Binary Classification) of the Germeval ...
This paper describes the system submitted by the RGCL team to GermEval 2019 Shared Task 2: Identific...
Social media has been an effective carrier of information from the day of its inception. People worl...
In this paper we describe our submissions to task I of the GermEval 2018 Shared Task with the goal o...
Hateful and abusive speech presents a major challenge for all online social media platforms. Recent ...
The paper describes the systems submitted to OffensEval (SemEval 2019, Task 6) on ‘Identifying and C...
The detection of offensive, hateful and profane language has become a critical challenge since many ...
Disparate biases associated with datasets and trained classifiers in hateful and abusive content ide...
In this paper, we describe two systems for predicting message-level offensive language in German twe...
Social media platforms receive massive amounts of user-generated content that may include offensive ...
In this paper, we describe the team BRUMS entry to OffensEval 2: Multilingual Offensive Language Ide...
In this paper we present our submission to sub-task A at SemEval 2020 Task 12: Multilingual Offensiv...
This paper presents the different models submitted by the LT@Helsinki team for the SemEval2020 Share...