A greedy dimension reduction method for classification problems

Archive ouverte

Lombardi, Damiano | Raphel, Fabien

Edité par CCSD -

In numerous classification problems, the number of available samples to be used in the classifier training phase is small, and each sample is a vector whose dimension is large. This regime, called high-dimensional/low sample size is particularly challenging when classification tasks have to be performed. To overcome this shortcoming, several dimension reduction methods were proposed. This work investigates a greedy optimisation method that builds a low dimensional classifier input. Some numerical examples are proposed to illustrate the performances of the method and compare it to other dimension reduction strategies.

Suggestions

Du même auteur

Composite biomarkers derived from Micro-Electrode Array measurements and computer simulations improve the classification of drug-induced channel block

Archive ouverte | Tixier, Eliott | CCSD

International audience. The Micro-Electrode Array (MEA) device enables high-throughput electrophysiology measurements that are less labour-intensive than patch-clamp based techniques. Combined with human-induced plu...

Identification of ion currents components generating field potential recorded in MEA from hiPSC-CM

Archive ouverte | Raphel, Fabien | CCSD

International audience. Objective: Multi Electrodes Arrays (MEAs) combined with cardiomy-ocytes derived from human induced pluripotent stem cells (hiPSC-CMs) can enable high-or medium-throughput drug screening in sa...

Modeling Variability in Cardiac Electrophysiology: A Moment Matching Approach

Archive ouverte | Tixier, Eliott | CCSD

International audience. The variability observed in action potential (AP) cardiomyocyte measurements is the consequence of many different sources of randomness. Often ignored, this variability may be studied to gain...

Chargement des enrichissements...