Learning One-hidden-layer Neural Networks with Landscape Design

November 01, 2017 Β· Declared Dead Β· πŸ› International Conference on Learning Representations

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Authors Rong Ge, Jason D. Lee, Tengyu Ma arXiv ID 1711.00501 Category cs.LG: Machine Learning Cross-listed cs.DS, math.OC, stat.ML Citations 267 Venue International Conference on Learning Representations Last Checked 3 months ago
Abstract
We consider the problem of learning a one-hidden-layer neural network: we assume the input $x\in \mathbb{R}^d$ is from Gaussian distribution and the label $y = a^\top Οƒ(Bx) + ΞΎ$, where $a$ is a nonnegative vector in $\mathbb{R}^m$ with $m\le d$, $B\in \mathbb{R}^{m\times d}$ is a full-rank weight matrix, and $ΞΎ$ is a noise vector. We first give an analytic formula for the population risk of the standard squared loss and demonstrate that it implicitly attempts to decompose a sequence of low-rank tensors simultaneously. Inspired by the formula, we design a non-convex objective function $G(\cdot)$ whose landscape is guaranteed to have the following properties: 1. All local minima of $G$ are also global minima. 2. All global minima of $G$ correspond to the ground truth parameters. 3. The value and gradient of $G$ can be estimated using samples. With these properties, stochastic gradient descent on $G$ provably converges to the global minimum and learn the ground-truth parameters. We also prove finite sample complexity result and validate the results by simulations.
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