Least Squares Revisited: Scalable Approaches for Multi-class Prediction

10/07/2013
by   Alekh Agarwal, et al.
0

This work provides simple algorithms for multi-class (and multi-label) prediction in settings where both the number of examples n and the data dimension d are relatively large. These robust and parameter free algorithms are essentially iterative least-squares updates and very versatile both in theory and in practice. On the theoretical front, we present several variants with convergence guarantees. Owing to their effective use of second-order structure, these algorithms are substantially better than first-order methods in many practical scenarios. On the empirical side, we present a scalable stagewise variant of our approach, which achieves dramatic computational speedups over popular optimization packages such as Liblinear and Vowpal Wabbit on standard datasets (MNIST and CIFAR-10), while attaining state-of-the-art accuracies.

READ FULL TEXT
research
06/01/2019

On the computational complexity of the probabilistic label tree algorithms

Label tree-based algorithms are widely used to tackle multi-class and mu...
research
01/02/2019

Multi-class Classification without Multi-class Labels

This work presents a new strategy for multi-class classification that re...
research
02/20/2020

Unsupervised Multi-Class Domain Adaptation: Theory, Algorithms, and Practice

In this paper, we study the formalism of unsupervised multi-class domain...
research
07/10/2019

Deep Multi Label Classification in Affine Subspaces

Multi-label classification (MLC) problems are becoming increasingly popu...
research
09/06/2021

Tensor Normalization and Full Distribution Training

In this work, we introduce pixel wise tensor normalization, which is ins...
research
05/28/2018

Confidence Prediction for Lexicon-Free OCR

Having a reliable accuracy score is crucial for real world applications ...
research
07/25/2022

A novel Deep Learning approach for one-step Conformal Prediction approximation

Deep Learning predictions with measurable confidence are increasingly de...

Please sign up or login with your details

Forgot password? Click here to reset