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Sentiment analysis under temporal shift

机译:时间转移下的情感分析

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摘要

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.
机译:情感分析模型通常依赖已有数年历史的训练数据。在本文中,我们证明了词汇特征随时间改变极性,从而导致性能下降。在仅依赖于高度预测特征的稀疏模型中,这种效果尤其明显。使用预测特征选择,我们能够随着时间的推移显着提高此类模型的准确性。

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