Abstract To investigate ideological symmetries and asymmetries in the expression of online prejudice. we used machine-learning methods to estimate the prevalence of extreme hostility in a large dataset of Twitter messages harvested in 2016. We analyzed language contained in 730. 000 tweets on the following dimensions of bias: (1) threat and intimidation. https://www.chiggate.com/shades-eq-gloss-07m-driftwood-for-sale/
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