Learning polyhedral classifiers using logistic function


Autoria(s): Manwani, Naresh; Sastry, PS
Data(s)

2010

Resumo

In this paper we propose a new algorithm for learning polyhedral classifiers. In contrast to existing methods for learning polyhedral classifier which solve a constrained optimization problem, our method solves an unconstrained optimization problem. Our method is based on a logistic function based model for the posterior probability function. We propose an alternating optimization algorithm, namely, SPLA1 (Single Polyhedral Learning Algorithm1) which maximizes the loglikelihood of the training data to learn the parameters. We also extend our method to make it independent of any user specified parameter (e.g., number of hyperplanes required to form a polyhedral set) in SPLA2. We show the effectiveness of our approach with experiments on various synthetic and real world datasets and compare our approach with a standard decision tree method (OC1) and a constrained optimization based method for learning polyhedral sets.

Formato

application/pdf

Identificador

http://eprints.iisc.ernet.in/44040/1/Learning_Polyhedral.pdf

Manwani, Naresh and Sastry, PS (2010) Learning polyhedral classifiers using logistic function. In: 2nd Asian Conference on Machine Learning (ACML2010), Tokyo, Japan, Nov. 8-10, 2010.

Relação

http://jmlr.csail.mit.edu/proceedings/papers/v13/manwani10a.html

http://eprints.iisc.ernet.in/44040/

Palavras-Chave #Electrical Engineering
Tipo

Conference Paper

PeerReviewed