Racist Speech On Twitter Predicts Real-Life Hate Crimes

Cities with a higher incidence of racist tweets showed more actual hate crimes related to race, ethnicity, and national origin, according to an analysis of the location and linguistic features of 532 million tweets published between 2011 and 2016. A machine learning model identified and analyze two types of tweets: those that are targeted (directly espousing discriminatory views) and those that are self-narrative (describing or commenting upon discriminatory remarks or acts) and then the team compared the prevalence of each type of discriminatory tweet to the number of actual hate crimes reported during that same time period in those same cities.

Cities with a higher incidence of racist tweets showed more actual hate crimes related to race, ethnicity, and national origin, according to an analysis of the location and linguistic features of 532 million tweets published between 2011 and 2016.

A machine learning model identified and analyze two types of tweets: those that are targeted (directly espousing discriminatory views) and those that are self-narrative (describing or commenting upon discriminatory remarks or acts) and then the team compared the prevalence of each type of discriminatory tweet to the number of actual hate crimes reported during that same time period in those same cities.

The analysis included cities with a wide range of urbanization, varying degrees of population diversity, and different levels of social media usage. The team limited the dataset to tweets and bias crimes describing or motivated by race, ethnic or national origin-based discrimination. Those are categorized and tracked by the Federal Bureau of Investigation, and crimes motivated by race, ethnicity, or national origin represent the largest proportion of hate crimes in the nation.  While most tweets included in this analysis were generated by actual Twitter users, the team found that an average of 8% of tweets containing targeted discriminatory language was generated by bots.

There was a negative relationship between the proportion of race/ethnicity/national-origin-based discrimination tweets that were self-narrations of experiences and the number of crimes based on the same biases in cities. 

The authors say the results represent one of the largest, most comprehensive analyses of discriminatory social media posts and real-life bias crimes in this country, but this is simply statistical, there are no known causal mechanisms between social media hate speech and real-life acts of violence.

Old NID
239100
Categories

Latest reads

Article teaser image
Donald Trump does not have the power to rescind either constitutional amendments or federal laws by mere executive order, no matter how strongly he might wish otherwise. No president of the United…
Article teaser image
The Biden administration recently issued a new report showing causal links between alcohol and cancer, and it's about time. The link has been long-known, but alcohol carcinogenic properties have been…
Article teaser image
In British Iron Age society, land was inherited through the female line and husbands moved to live with the wife’s community. Strong women like Margaret Thatcher resulted.That was inferred due to DNA…