Automatic hate speech identification in unstructured Twitter is significantly more difficult to analyze, posing a significant challenge. Existing models heavily depend on feature engineering, which increases the time complexity of detecting hate speech. This work aims to classify and detect hate speech using a linguistic pattern-based approach as pre-trained transformer language models. As a result, a novel Pattern-based Deep Hate Speech (PDHS) detection model was proposed to detect the presence of hate speech using a cross-attention encoder with a dual-level attention mechanism. Instead of concatenating the features, our model computes dot product attention for better representation by reducing the irrelevant features. The first level of A...
Disparate biases associated with datasets and trained classifiers in hateful and abusive content ide...
Social media platforms provide users with a powerful platform to share their ideas. Using one’s righ...
We discuss an experiment on comparison of deep learning models for hate speech detection. Online hat...
International audienceHate speech (HS) is legally punished in many countries. Manual moderation of h...
Hateful and abusive speech presents a major challenge for all online social media platforms. Recent ...
International audienceMultiword expression (MWE) identification in tweets is a complex task due to t...
University of Minnesota M.S. thesis. May 2020. Major: Computer Science. Advisor: Richard Maclin. 1 c...
Given the explosion in the size of social media, the amount of hate speech is also growing. To effic...
Hate speech is abusive or stereotyping speech against a group of people, based on characteristics su...
The detection of hate speech in social media is a crucial task. The uncontrolled spread of hate has ...
A plethora of negative behavioural activities have recently been found in social media. Incidents su...
The objective of this dissertation is to explore the use of machine learning algorithms in understan...
The increasing use of social media and information sharing has given major benefits to humanity. How...
The pervasiveness of the Internet and social media have enabled the rapid and anonymous spread of Ha...
In recent years, the increasing propagation of hate speech on social media and the urgent need for e...
Disparate biases associated with datasets and trained classifiers in hateful and abusive content ide...
Social media platforms provide users with a powerful platform to share their ideas. Using one’s righ...
We discuss an experiment on comparison of deep learning models for hate speech detection. Online hat...
International audienceHate speech (HS) is legally punished in many countries. Manual moderation of h...
Hateful and abusive speech presents a major challenge for all online social media platforms. Recent ...
International audienceMultiword expression (MWE) identification in tweets is a complex task due to t...
University of Minnesota M.S. thesis. May 2020. Major: Computer Science. Advisor: Richard Maclin. 1 c...
Given the explosion in the size of social media, the amount of hate speech is also growing. To effic...
Hate speech is abusive or stereotyping speech against a group of people, based on characteristics su...
The detection of hate speech in social media is a crucial task. The uncontrolled spread of hate has ...
A plethora of negative behavioural activities have recently been found in social media. Incidents su...
The objective of this dissertation is to explore the use of machine learning algorithms in understan...
The increasing use of social media and information sharing has given major benefits to humanity. How...
The pervasiveness of the Internet and social media have enabled the rapid and anonymous spread of Ha...
In recent years, the increasing propagation of hate speech on social media and the urgent need for e...
Disparate biases associated with datasets and trained classifiers in hateful and abusive content ide...
Social media platforms provide users with a powerful platform to share their ideas. Using one’s righ...
We discuss an experiment on comparison of deep learning models for hate speech detection. Online hat...