Can you tell? SSNet – a Sagittal Stratum-inspired Neural Network Framework for Sentiment Analysis

06/23/2020
by   Apostol Vassilev, et al.
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When people try to understand nuanced language they typically process multiple input sensor modalities to complete this cognitive task. It turns out the human brain has even a specialized neuron formation, called sagittal stratum, to help us understand sarcasm. We use this biological formation as the inspiration for designing a neural network architecture that combines predictions of different models on the same text to construct a robust, accurate and computationally efficient classifier for sentiment analysis. Experimental results on representative benchmark datasets and comparisons to other methods1show the advantages of the new network architecture.

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