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Sentiment analysis under temporal shift

2018-10-01WS 2018Unverified0· sign in to hype

Jan Lukes, Anders S{\o}gaard

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Abstract

Sentiment analysis models often rely on training data that is several years old. In this paper, we show that lexical features change polarity over time, leading to degrading performance. This effect is particularly strong in sparse models relying only on highly predictive features. Using predictive feature selection, we are able to significantly improve the accuracy of such models over time.

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