LGDSSTMLSep 4, 2019

Learning Distributions Generated by One-Layer ReLU Networks

arXiv:1909.01812v225 citations
AI Analysis

This addresses parameter estimation for a specific generative model in machine learning, with incremental improvements in sample efficiency and lower bounds.

The paper tackles the problem of estimating parameters of a rectified Gaussian distribution, defined by a one-layer ReLU network, from samples, providing an algorithm with sample complexity Õ(1/ε²) and time complexity Õ(d²/ε²) for parameter error ε||W||_F, and Õ(κ²d²/ε²) for total variation distance error ε, assuming non-negative bias.

We consider the problem of estimating the parameters of a $d$-dimensional rectified Gaussian distribution from i.i.d. samples. A rectified Gaussian distribution is defined by passing a standard Gaussian distribution through a one-layer ReLU neural network. We give a simple algorithm to estimate the parameters (i.e., the weight matrix and bias vector of the ReLU neural network) up to an error $ε||W||_F$ using $\tilde{O}(1/ε^2)$ samples and $\tilde{O}(d^2/ε^2)$ time (log factors are ignored for simplicity). This implies that we can estimate the distribution up to $ε$ in total variation distance using $\tilde{O}(κ^2d^2/ε^2)$ samples, where $κ$ is the condition number of the covariance matrix. Our only assumption is that the bias vector is non-negative. Without this non-negativity assumption, we show that estimating the bias vector within any error requires the number of samples at least exponential in the infinity norm of the bias vector. Our algorithm is based on the key observation that vector norms and pairwise angles can be estimated separately. We use a recent result on learning from truncated samples. We also prove two sample complexity lower bounds: $Ω(1/ε^2)$ samples are required to estimate the parameters up to error $ε$, while $Ω(d/ε^2)$ samples are necessary to estimate the distribution up to $ε$ in total variation distance. The first lower bound implies that our algorithm is optimal for parameter estimation. Finally, we show an interesting connection between learning a two-layer generative model and non-negative matrix factorization. Experimental results are provided to support our analysis.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes