Publication | Open Access
Beating the Perils of Non-Convexity: Guaranteed Training of Neural Networks using Tensor Methods
146
Citations
37
References
2015
Year
Artificial IntelligenceMathematical ProgrammingModel OptimizationEngineeringMachine LearningGuaranteed TrainingComputational Learning TheoryTraining MethodSparse Neural NetworkConvex OptimizationComputational ComplexityLarge Scale OptimizationComputer ScienceTensor MethodsNeural NetworksNeural Architecture SearchSupervised Learning
Training neural networks is a challenging non-convex optimization problem, and backpropagation or gradient descent can get stuck in spurious local optima. We propose a novel algorithm based on tensor decomposition for guaranteed training of two-layer neural networks. We provide risk bounds for our proposed method, with a polynomial sample complexity in the relevant parameters, such as input dimension and number of neurons. While learning arbitrary target functions is NP-hard, we provide transparent conditions on the function and the input for learnability. Our training method is based on tensor decomposition, which provably converges to the global optimum, under a set of mild non-degeneracy conditions. It consists of simple embarrassingly parallel linear and multi-linear operations, and is competitive with standard stochastic gradient descent (SGD), in terms of computational complexity. Thus, we propose a computationally efficient method with guaranteed risk bounds for training neural networks with one hidden layer.
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