Improving Hate Speech Classification with Cross-Taxonomy Dataset Integration
By: Jan Fillies, Adrian Paschke
Potential Business Impact:
Finds hate speech using one smart system.
Algorithmic hate speech detection faces significant challenges due to the diverse definitions and datasets used in research and practice. Social media platforms, legal frameworks, and institutions each apply distinct yet overlapping definitions, complicating classification efforts. This study addresses these challenges by demonstrating that existing datasets and taxonomies can be integrated into a unified model, enhancing prediction performance and reducing reliance on multiple specialized classifiers. The work introduces a universal taxonomy and a hate speech classifier capable of detecting a wide range of definitions within a single framework. Our approach is validated by combining two widely used but differently annotated datasets, showing improved classification performance on an independent test set. This work highlights the potential of dataset and taxonomy integration in advancing hate speech detection, increasing efficiency, and ensuring broader applicability across contexts.
Similar Papers
A Survey of Machine Learning Models and Datasets for the Multi-label Classification of Textual Hate Speech in English
Computation and Language
Helps computers find different kinds of online hate.
Cross-Platform Violence Detection on Social Media: A Dataset and Analysis
Computation and Language
Helps stop online threats by teaching computers.
Feature Selection Empowered BERT for Detection of Hate Speech with Vocabulary Augmentation
Computation and Language
Filters hate speech online faster and better.