Date Published: September 2020
                    
                            
                
            
                    Supersedes:
                    
                            White Paper   (06/23/2020)                    
            
                
                Author(s)
                
                    
                            Apostol Vassilev (NIST),                             Munawar Hasan (NIST)                    
                
                
                
                
                    
                
            
                
                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 methods show the advantages of the new network architecture.
                
                        
                            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...
                            
See full abstract
                        
                            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 methods show the advantages of the new network architecture.
                            Hide full abstract
                         
                    Keywords
                    
                            natural language processing;                             machine learning;                             deep learning;                             artificial intelligence                    
             
                    
            Control Families
            
                    None selected