Reinforced Multiple Instance Selection for Speaker Attribute Prediction (2024.naacl-long)

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Challenge: Current methods for predicting speaker attributes take a speaker’s utterances as input and provide a prediction per speaker attribute.
Approach: They propose a Multiple Instance Learning approach that uses Reinforcement Learning to predict speaker attributes using a set of utterances from social media posts and political ideologies from transcribed speeches.
Outcome: The proposed approach outperforms existing methods on a range of related tasks including predicting speakers’ psychographics and demographics from social media posts and political ideologies from transcribed speeches.

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