Hate speech detection on social media platforms remains a challenging task. Manual moderation by humans is the most reliable but infeasible, and machine learning models for detecting hate speech are scalable but unreliable as they often perform poorly on unseen data. Therefore, human-AI collaborative systems, in which we combine the strengths of humans' reliability and the scalability of machine learning, offer great potential for detecting hate speech. While methods for task handover in human-AI collaboration exist that consider the costs of incorrect predictions, insufficient attention has been paid to estimating these costs. In this work, we propose a value-sensitive rejector that automatically rejects machine learning predictions when t...
This project developed and tested an alternative methodology for dataset creation informing AI hate ...
The detection of hate speech in online spaces is traditionally conceptualized as a classification t...
Many Artificial Intelligence (AI) systems rely on finding patterns in large datasets, which are pron...
Hate speech detection on social media platforms remains a challenging task. Manual moderation by hum...
The increasing use of social media and information sharing has given major benefits to humanity. How...
As a result of social network popularity, in recent years, hate speech phenomenon has significantly ...
Hate speech is an important problem in the management of user-generated content. To remove offensive...
Hate speech has been identified as a pressing problem in society and several automated approaches ha...
Hate speech has been identified as a pressing problem in society and several automated approaches ha...
We discuss an experiment on comparison of deep learning models for hate speech detection. Online hat...
University of Minnesota M.S. thesis. May 2020. Major: Computer Science. Advisor: Richard Maclin. 1 c...
The evolvement of the Internet and social websites gave society multiple platforms where everyone ha...
Hate speech is one of the most challenging problem internet is facing today. This systematic literat...
In this paper, we discuss some of the ethical and technical challenges of using Artificial Intellige...
Given the explosion in the size of social media, the amount of hate speech is also growing. To effic...
This project developed and tested an alternative methodology for dataset creation informing AI hate ...
The detection of hate speech in online spaces is traditionally conceptualized as a classification t...
Many Artificial Intelligence (AI) systems rely on finding patterns in large datasets, which are pron...
Hate speech detection on social media platforms remains a challenging task. Manual moderation by hum...
The increasing use of social media and information sharing has given major benefits to humanity. How...
As a result of social network popularity, in recent years, hate speech phenomenon has significantly ...
Hate speech is an important problem in the management of user-generated content. To remove offensive...
Hate speech has been identified as a pressing problem in society and several automated approaches ha...
Hate speech has been identified as a pressing problem in society and several automated approaches ha...
We discuss an experiment on comparison of deep learning models for hate speech detection. Online hat...
University of Minnesota M.S. thesis. May 2020. Major: Computer Science. Advisor: Richard Maclin. 1 c...
The evolvement of the Internet and social websites gave society multiple platforms where everyone ha...
Hate speech is one of the most challenging problem internet is facing today. This systematic literat...
In this paper, we discuss some of the ethical and technical challenges of using Artificial Intellige...
Given the explosion in the size of social media, the amount of hate speech is also growing. To effic...
This project developed and tested an alternative methodology for dataset creation informing AI hate ...
The detection of hate speech in online spaces is traditionally conceptualized as a classification t...
Many Artificial Intelligence (AI) systems rely on finding patterns in large datasets, which are pron...