Publication | Open Access
Toward Deeper Understanding of Neural Networks: The Power of Initialization and a Dual View on Expressivity
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2016
Year
Artificial IntelligenceEngineeringMachine LearningNeurolinguisticsAutoencodersAi FoundationRecurrent Neural NetworkSocial SciencesSparse Neural NetworkConnectionismToward Deeper UnderstandingRobot LearningCognitive ScienceMachine Learning ModelGeneral DualityComputer ScienceNeural NetworksDeep LearningNeural Architecture SearchDeep Neural NetworksComputational NeuroscienceNeuronal NetworkDual ViewBrain-like ComputingLinguistics
We develop a general duality between neural networks and compositional kernels, striving towards a better understanding of deep learning. We show that initial representations generated by common random initializations are sufficiently rich to express all functions in the dual kernel space. Hence, though the training objective is hard to optimize in the worst case, the initial weights form a good starting point for optimization. Our dual view also reveals a pragmatic and aesthetic perspective of neural networks and underscores their expressive power.