Learning with tree-based tensor formats

11/11/2018
by   Erwan Grelier, et al.
0

This paper is concerned with the approximation of high-dimensional functions in a statistical learning setting, by empirical risk minimization over model classes of functions in tree-based tensor format. These are particular classes of rank-structured functions that can be seen as deep neural networks with a sparse architecture related to the tree and multilinear activation functions. For learning in a given model class, we exploit the fact that tree-based tensor formats are multilinear models and recast the problem of risk minimization over a nonlinear set into a succession of learning problems with linear models. Suitable changes of representation yield numerically stable learning problems and allow to exploit sparsity. For high-dimensional problems or when only a small data set is available, the selection of a good model class is a critical issue. For a given tree, the selection of the tuple of tree-based ranks that minimize the risk is a combinatorial problem. Here, we propose a rank adaptation strategy which provides in practice a good convergence of the risk as a function of the model class complexity. Finding a good tree is also a combinatorial problem, which can be related to the choice of a particular sparse architecture for deep neural networks. Here, we propose a stochastic algorithm for minimizing the complexity of the representation of a given function over a class of trees with a given arity, allowing changes in the topology of the tree. This tree optimization algorithm is then included in a learning scheme that successively adapts the tree and the corresponding tree-based ranks. Contrary to classical learning algorithms for nonlinear model classes, the proposed algorithms are numerically stable, reliable, and require only a low level expertise of the user.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/17/2019

Learning high-dimensional probability distributions using tree tensor networks

We consider the problem of the estimation of a high-dimensional probabil...
research
07/02/2020

Learning with tree tensor networks: complexity estimates and model selection

In this paper, we propose and analyze a model selection method for tree ...
research
12/02/2021

Approximation by tree tensor networks in high dimensions: Sobolev and compositional functions

This paper is concerned with convergence estimates for fully discrete tr...
research
06/30/2020

Approximation with Tensor Networks. Part II: Approximation Rates for Smoothness Classes

We study the approximation by tensor networks (TNs) of functions from cl...
research
04/27/2021

Active learning of tree tensor networks using optimal least-squares

In this paper, we propose new learning algorithms for approximating high...
research
09/16/2022

Exploring the Whole Rashomon Set of Sparse Decision Trees

In any given machine learning problem, there may be many models that cou...
research
03/17/2020

Nonlinear system identification with regularized Tensor Network B-splines

This article introduces the Tensor Network B-spline model for the regula...

Please sign up or login with your details

Forgot password? Click here to reset