ADAPTIVE OFF-RAMP TRAINING AND INFERENCE FOR EARLY EXITS IN A DEEP NEURAL NETWORK
Systems and methods are provided for training and using a deep neural network with adaptively trained off-ramps for an early exit at an intermediate representation layer. The training includes, for respective intermediate representation layers of a sequence of intermediate representation layers, pre...
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creator | PFEIFFER, Joseph John, III SURYA, Siva Kalyana Pavan Kumar Mallapragada Naga GILTON, Davis Leland |
description | Systems and methods are provided for training and using a deep neural network with adaptively trained off-ramps for an early exit at an intermediate representation layer. The training includes, for respective intermediate representation layers of a sequence of intermediate representation layers, predicting a label based on the training data and comparing against a correct label. The training further includes generating a confidence value associated with the predicted label. The confidence value is based on optimizing an objective function that includes a weighted entropy of a probability distribution of the likelihood, weighted based on whether previous intermediate representation layer has accurately predicted the label. Use of the weighted entropy provides the training with a focus on predicting labels that the previous intermediate representation layers has performed poorly and not labels that have existed before the intermediate representation layer being trained. Among alternative methods include a distilled twin, parallel neural network for predicting labels using adaptively trained off-ramps. |
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subjects | CALCULATING COMPUTER SYSTEMS BASED ON SPECIFIC COMPUTATIONAL MODELS COMPUTING COUNTING ELECTRIC DIGITAL DATA PROCESSING PHYSICS |
title | ADAPTIVE OFF-RAMP TRAINING AND INFERENCE FOR EARLY EXITS IN A DEEP NEURAL NETWORK |
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