Distributed Coordinate Descent for Generalized Linear Models with Regularization

11/07/2016
by   Ilya Trofimov, et al.
0

Generalized linear model with L_1 and L_2 regularization is a widely used technique for solving classification, class probability estimation and regression problems. With the numbers of both features and examples growing rapidly in the fields like text mining and clickstream data analysis parallelization and the use of cluster architectures becomes important. We present a novel algorithm for fitting regularized generalized linear models in the distributed environment. The algorithm splits data between nodes by features, uses coordinate descent on each node and line search to merge results globally. Convergence proof is provided. A modifications of the algorithm addresses slow node problem. For an important particular case of logistic regression we empirically compare our program with several state-of-the art approaches that rely on different algorithmic and data spitting methods. Experiments demonstrate that our approach is scalable and superior when training on large and sparse datasets.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/24/2014

Distributed Coordinate Descent for L1-regularized Logistic Regression

Solving logistic regression with L1-regularization in distributed settin...
research
01/15/2014

Coordinate Descent with Online Adaptation of Coordinate Frequencies

Coordinate descent (CD) algorithms have become the method of choice for ...
research
12/11/2022

Corruption-tolerant Algorithms for Generalized Linear Models

This paper presents SVAM (Sequential Variance-Altered MLE), a unified fr...
research
11/08/2019

Privacy-Preserving Generalized Linear Models using Distributed Block Coordinate Descent

Combining data from varied sources has considerable potential for knowle...
research
07/12/2019

Dual Extrapolation for Sparse Generalized Linear Models

Generalized Linear Models (GLM) form a wide class of regression and clas...
research
06/09/2020

Linear Models are Most Favorable among Generalized Linear Models

We establish a nonasymptotic lower bound on the L_2 minimax risk for a c...
research
02/28/2020

Modelling High-Dimensional Categorical Data Using Nonconvex Fusion Penalties

We propose a method for estimation in high-dimensional linear models wit...

Please sign up or login with your details

Forgot password? Click here to reset