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Aspect Sentiment Identification using Random Fourier Features
2018
International Journal of Intelligent Systems and Applications
The objective of the paper was to show the effectiveness of using random Fourier features in detection of sentiment polarities. The method presented in this paper proves that detection of aspect based polarities can be improved by selective choice of relevant features and mapping them to lower dimensions. In this study, random Fourier features were prepared corresponding to the polarity data. A regularized least square strategy was adopted to fit a model and perform the task of polarity
doi:10.5815/ijisa.2018.09.04
fatcat:aypiajolynbyxic7c4rtfxxav4