06.09.2022

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Teaser image to Hinrich Schütze awarded Proof of Concept Grant grant for his project Respond2Hate

Hinrich Schütze Awarded Proof of Concept Grant Grant for His Project Respond2Hate

LMU News

MCML PI Hinrich Schütze received a Proof of Concept Grant for his project "Respond2Hate" (Responsive classifiers against hate speech in low-resource settings).

In his project, Professor Schütze is seeking to develop a pilot browser extension that allows users to locally remove hateful content from their social media feeds themselves – including in countries with little representation in current training datasets. To this end, he will validate self-developed adaptive models, continuously enhanced by means of natural language processing and deep learning techniques, for the filtering of hate speech.

Congrats from us!

#award #research #schuetze
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