Publication | Open Access
TrueHappiness: Neuromorphic emotion recognition on TrueNorth
14
Citations
26
References
2016
Year
Unknown Venue
EngineeringNeurolinguisticsNeural NetworkAffective NeuroscienceMultimodal Sentiment AnalysisRecurrent Neural NetworkPsychologySocial SciencesNeuromorphic DeviceNeuromorphic Emotion RecognitionNatural Language ProcessingEmotional ResponseAffective ComputingSpiking Neural NetworksNeuromorphic EngineeringLanguage InputNeurocomputersCognitive ScienceDeep LearningFacial Expression RecognitionNeuroscienceBrain-like ComputingEmotionEmotion Recognition
We present an approach to constructing a neuromorphic device that responds to language input by producing neuron spikes in proportion to the strength of the appropriate positive or negative emotional response. Specifically, we perform a fine-grained sentiment analysis task with implementations on two different systems: one using conventional spiking neural network (SNN) simulators and the other one using IBM's Neurosynaptic System TrueNorth. Input words are projected into a high-dimensional semantic space and processed through a fully-connected neural network (FCNN) containing rectified linear units (ReLU) trained via backpropagation. After training, this FCNN is converted to a SNN by substituting the ReLUs with integrate-and-fire neurons. We show that there is practically no performance loss due to conversion to a spiking network on a sentiment analysis test set, i.e. correlations with human annotations differ by less than 0.02 between the original DNN and its spiking equivalent. Additionally, we show that the SNN generated with this technique can be mapped to existing neuromorphic hardware - in our case, the TrueNorth chip. Mapping to the chip involves 4-bit synaptic weight discretization and adjustment of the neuron thresholds. The resulting end-to-end system can take a user input, i.e. a word in a vocabulary of over 300,000 words, and estimate its sentiment on TrueNorth with a power consumption of approximately 50 μW.
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