Datum-Wise Classification: A Sequential Approach to Sparsity

08/29/2011
by   Gabriel Dulac-Arnold, et al.
0

We propose a novel classification technique whose aim is to select an appropriate representation for each datapoint, in contrast to the usual approach of selecting a representation encompassing the whole dataset. This datum-wise representation is found by using a sparsity inducing empirical risk, which is a relaxation of the standard L 0 regularized risk. The classification problem is modeled as a sequential decision process that sequentially chooses, for each datapoint, which features to use before classifying. Datum-Wise Classification extends naturally to multi-class tasks, and we describe a specific case where our inference has equivalent complexity to a traditional linear classifier, while still using a variable number of features. We compare our classifier to classical L 1 regularized linear models (L 1-SVM and LARS) on a set of common binary and multi-class datasets and show that for an equal average number of features used we can get improved performance using our method.

READ FULL TEXT
research
06/30/2016

Multi-class classification: mirror descent approach

We consider the problem of multi-class classification and a stochastic o...
research
12/26/2014

Exploring Sparsity in Multi-class Linear Discriminant Analysis

Recent studies in the literature have paid much attention to the sparsit...
research
01/23/2017

Aggressive Sampling for Multi-class to Binary Reduction with Applications to Text Classification

We address the problem of multi-class classification in the case where t...
research
03/07/2023

Scatter-based common spatial patterns – a unified spatial filtering framework

The common spatial pattern (CSP) approach is known as one of the most po...
research
09/01/2022

CPS Attack Detection under Limited Local Information in Cyber Security: A Multi-node Multi-class Classification Ensemble Approach

Cybersecurity breaches are the common anomalies for distributed cyber-ph...
research
12/03/2019

Sequential Classification with Empirically Observed Statistics

Motivated by real-world machine learning applications, we consider a sta...
research
06/19/2016

Building an Interpretable Recommender via Loss-Preserving Transformation

We propose a method for building an interpretable recommender system for...

Please sign up or login with your details

Forgot password? Click here to reset