DocumentCode
1667638
Title
Efficient monte carlo optimization for multi-label classifier chains
Author
Read, Jesse ; Martino, Luca ; Luengo, D.
Author_Institution
Dept. of Signal Theor. & Commun., Univ. Carlos III de Madrid, Madrid, Spain
fYear
2013
Firstpage
3457
Lastpage
3461
Abstract
Multi-label classification (MLC) is the supervised learning problem where an instance may be associated with multiple labels. Modeling dependencies between labels allows MLC methods to improve their performance at the expense of an increased computational cost. In this paper we focus on the classifier chains (CC) approach for modeling dependencies. On the one hand, the original CC algorithm makes a greedy approximation, and is fast but tends to propagate errors down the chain. On the other hand, a recent Bayes-optimal method improves the performance, but is computationally intractable in practice. Here we present a novel double-Monte Carlo scheme (M2CC), both for finding a good chain sequence and performing efficient inference. The M2CC algorithm remains tractable for high-dimensional data sets and obtains the best overall accuracy, as shown on several real data sets with input dimension as high as 1449 and up to 103 labels.
Keywords
Monte Carlo methods; learning (artificial intelligence); optimisation; pattern classification; Bayes-optimal method; CC algorithm; M2CC algorithm; MLC method; Monte Carlo optimization; double-Monte Carlo scheme; greedy approximation; high-dimensional data set; multilabel classifier chain; Computational efficiency; Computational modeling; Inference algorithms; Monte Carlo methods; Probabilistic logic; Training; Vectors; Monte Carlo methods; classifier chains; multi-label classification;
fLanguage
English
Publisher
ieee
Conference_Titel
Acoustics, Speech and Signal Processing (ICASSP), 2013 IEEE International Conference on
Conference_Location
Vancouver, BC
ISSN
1520-6149
Type
conf
DOI
10.1109/ICASSP.2013.6638300
Filename
6638300
Link To Document