These are not the Stereotypes You are Looking For: Bias and Fairness in Authorial Gender Attribution

WS 2017 Corina KoolenAndreas van Cranenburgh

Stylometric and text categorization results show that author gender can be discerned in texts with relatively high accuracy. However, it is difficult to explain what gives rise to these results and there are many possible confounding factors, such as the domain, genre, and target audience of a text... (read more)

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