A system for intergroup prejudice detection: The case of microblogging under terrorist attacks

作者:

Highlights:

• An automated process for detection of intergroup prejudice in social media feeds is presented.

• The process involves generation of theory driven linguistic features and annotating and modeling historic data.

• Empirical evaluation on a tweet data set successfully detects intergroup prejudice.

摘要

Intergroup prejudice is a distorted opinion held by one social group about another, without examination of facts. It is heightened during crises or threat. It finds expression in social media platforms when a group of people express anger, resentment and dissent towards another. This paper presents a system for automated detection of prejudiced messages from social media feeds. It uses a knowledge discovery framework that preprocesses data, generates theory-driven linguistic features along with other features engineered from textual content, annotates and models historical data to determine what drives detection of intergroup prejudice especially during a crisis. It is tested on tweets collected during the Boston Marathon bombing event. The system can be used to curb abuse and harassment by timely detection and reporting of intergroup prejudice.

论文关键词:Intergroup prejudice detection system,Machine learning,Logistic regression with regularization,Social media text classification

论文评审过程:Received 30 September 2017, Revised 2 June 2018, Accepted 13 June 2018, Available online 19 June 2018, Version of Record 11 August 2018.

论文官网地址:https://doi.org/10.1016/j.dss.2018.06.003