scispace - formally typeset
Open AccessProceedings Article

EfficientL 1 regularized logistic regression

Reads0
Chats0
TLDR
Theoretical results show that the proposed efficient algorithm for L1 regularized logistic regression is guaranteed to converge to the global optimum, and experiments show that it significantly outperforms standard algorithms for solving convex optimization problems.
Abstract
L1 regularized logistic regression is now a workhorse of machine learning: it is widely used for many classification problems, particularly ones with many features. L1 regularized logistic regression requires solving a convex optimization problem. However, standard algorithms for solving convex optimization problems do not scale well enough to handle the large datasets encountered in many practical settings. In this paper, we propose an efficient algorithm for L1 regularized logistic regression. Our algorithm iteratively approximates the objective function by a quadratic approximation at the current point, while maintaining the L1 constraint. In each iteration, it uses the efficient LARS (Least Angle Regression) algorithm to solve the resulting L1 constrained quadratic optimization problem. Our theoretical results show that our algorithm is guaranteed to converge to the global optimum. Our experiments show that our algorithm significantly outperforms standard algorithms for solving convex optimization problems. Moreover, our algorithm outperforms four previously published algorithms that were specifically designed to solve the L1 regularized logistic regression problem.

read more

Content maybe subject to copyright    Report

Citations
More filters

Exploiting non-redundant local patterns and probabilistic models for analyzing structured and semi-structured data

TL;DR: This work proposes a probabilistic framework under which the selectivity of a twig query can be estimated from the information of its subtrees and investigates learning approximate global MRFs on large transactional data and proposes a divide-and-conquer style modeling approach.
Journal ArticleDOI

A memory efficient incremental gradient method for regularized minimization

TL;DR: A new incremental gradient method for solving a regularized minimization problem whose objective is the sum of msmooth functions and a (possibly nonsmooth) convex function using an adaptive stepsize.
Journal ArticleDOI

Optimal quantile level selection for disease classification and biomarker discovery with application to electrocardiogram data.

TL;DR: This paper proposes an optimal quantile level selection procedure to reduce dimension by characterizing distributions with quantiles and combine with classification tools to produce sensible classification and biomarker discovery results.
Dissertation

Outil d'aide au diagnostic du cancer à partir d'extraction d'informations issues de bases de données et d'analyses par biopuces

TL;DR: This work addresses the use of machine learning techniques to develop more accurate predictive tools for breast cancer management using a unified principle to deal with the data heterogeneity problem and designed a supervised fuzzy feature weighting approach.
Journal ArticleDOI

A Framework of Meta Functional Learning for Regularising Knowledge Transfer

Pan Li, +2 more
- 28 Mar 2022 - 
TL;DR: A novel framework of Meta Functional Learning is proposed by meta-learning a generalisable functional model from data-rich tasks whilst simultaneously regularising knowledge transfer to data-scarce tasks to improve FSL classifiers.
References
More filters
Journal ArticleDOI

Regression Shrinkage and Selection via the Lasso

TL;DR: A new method for estimation in linear models called the lasso, which minimizes the residual sum of squares subject to the sum of the absolute value of the coefficients being less than a constant, is proposed.
Book

Convex Optimization

TL;DR: In this article, the focus is on recognizing convex optimization problems and then finding the most appropriate technique for solving them, and a comprehensive introduction to the subject is given. But the focus of this book is not on the optimization problem itself, but on the problem of finding the appropriate technique to solve it.
Book

Generalized Linear Models

TL;DR: In this paper, a generalization of the analysis of variance is given for these models using log- likelihoods, illustrated by examples relating to four distributions; the Normal, Binomial (probit analysis, etc.), Poisson (contingency tables), and gamma (variance components).
Journal ArticleDOI

Generalized Linear Models

Eric R. Ziegel
- 01 Aug 2002 - 
TL;DR: This is the Ž rst book on generalized linear models written by authors not mostly associated with the biological sciences, and it is thoroughly enjoyable to read.
Related Papers (5)