Hate Speech Detection in Twitter using Natural Language Processing

Hate Speech Detection in Twitter using Natural Language Processing

Abstract:

Twitter's central goal is to enable everybody to make and share thoughts and data, and to communicate their suppositions and convictions without boundaries. Twitter's job is to serve the public discussion, which requires portrayal of a different scope of points of view. Yet, it does not advance viciousness against or straightforwardly assault or undermine others based on race, nationality, public cause, rank, sexual direction, age, inability, or genuine illness. Hate Speech can hurt a person or a community. So, it is not appropriate to use hate speech. Now, due to increase in social media usage, hate speech is very commonly used on these platforms. So, it is not possible to identify hate speeches manually. So, it is essential to develop an automated hate speech detection model and this research work shows different approaches of Natural Language Processing for classification of Hate Speech through Machine Learning Algorithms.