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Detection of Abusive Language: the Problem of Biased Datasets

2019-06-01NAACL 2019Unverified0· sign in to hype

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Abstract

We discuss the impact of data bias on abusive language detection. We show that classification scores on popular datasets reported in previous work are much lower under realistic settings in which this bias is reduced. Such biases are most notably observed on datasets that are created by focused sampling instead of random sampling. Datasets with a higher proportion of implicit abuse are more affected than datasets with a lower proportion.

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