The datasets most widely used for abusive language detection contain lists of messages, usually tweets, that have been manually judged as abusive or not by one or more annotators, with the annotation performed at message level. In this paper, we investigate what happens when the hateful content of a message is judged also based on the context, given that messages are often ambiguous and need to be interpreted in the context of occurrence. We first re-annotate part of a widely used dataset for abusive language detection in English in two conditions, i.e. with and without context. Then, we compare the performance of three classification algorithms obtained on these two types of dataset, arguing that a context-aware classification is ...
Work on Abusive Language Detection has tackled a wide range of subtasks and domains. As a result of ...
We discuss the impact of data bias on abusive language detection. We show that classification scores...
This is an open access article distributed under the terms of the Creative Commons Attribution Licen...
Abusive language detection is an unsolved and challenging problem for the NLP community. Recent lite...
Abusive language detection is an unsolved and challenging problem for the NLP community. Recent lite...
Abusive language is a massive problem in online social platforms. Existing abusive language detectio...
Abusive language is a growing phenomenon on social media platforms. Its effects can reach beyond the...
Abusive language detection is an emerging field in natural language processing which has received a ...
Nowadays, social media experience an increase in hostility, which leads to many people suffering fro...
Well-annotated data is a prerequisite for good Natural Language Processing models. Too often, though...
The rise of online communication platforms has been accompanied by some undesirable effects, such as...
Work on Abusive Language Detection has tackled a wide range of subtasks and domains. As a result of ...
We discuss the impact of data bias on abusive language detection. We show that classification scores...
This is an open access article distributed under the terms of the Creative Commons Attribution Licen...
Abusive language detection is an unsolved and challenging problem for the NLP community. Recent lite...
Abusive language detection is an unsolved and challenging problem for the NLP community. Recent lite...
Abusive language is a massive problem in online social platforms. Existing abusive language detectio...
Abusive language is a growing phenomenon on social media platforms. Its effects can reach beyond the...
Abusive language detection is an emerging field in natural language processing which has received a ...
Nowadays, social media experience an increase in hostility, which leads to many people suffering fro...
Well-annotated data is a prerequisite for good Natural Language Processing models. Too often, though...
The rise of online communication platforms has been accompanied by some undesirable effects, such as...
Work on Abusive Language Detection has tackled a wide range of subtasks and domains. As a result of ...
We discuss the impact of data bias on abusive language detection. We show that classification scores...
This is an open access article distributed under the terms of the Creative Commons Attribution Licen...