Title :
PruDent: A Pruned and Confident Stacking Approach for Multi-Label Classification
Author :
Alali, Abdulaziz ; Kubat, Miroslav
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Miami, Coral Gables, FL, USA
Abstract :
Over the past decade or so, several research groups have addressed the problem of multi-label classification where each example can belong to more than one class at the same time. A common approach, called Binary Relevance (BR), addresses this problem by inducing a separate classifier for each class. Research has shown that this framework can be improved if mutual class dependence is exploited: an example that belongs to class X is likely to belong also to class Y ; conversely, belonging to X can make an example less likely to belong to Z. Several works sought to model this information by using the vector of class labels as additional example attributes. To fill the unknown values of these attributes during prediction, existing methods resort to using outputs of other classifiers, and this makes them prone to errors. This is where our paper wants to contribute. We identified two potential ways to prune unnecessary dependencies and to reduce error-propagation in our new classifier-stacking technique, which is named PruDent. Experimental results indicate that the classification performance of PruDent compares favorably with that of other state-of-the-art approaches over a broad range of testbeds. Moreover, its computational costs grow only linearly in the number of classes.
Keywords :
pattern classification; BR; PruDent; binary relevance; classifier-stacking technique; confident stacking approach; error-propagation; multilabel classification; mutual class dependence; pruned stacking approach; Accuracy; Computational efficiency; Decision trees; Neural networks; Stacking; Training; Vectors; Multi-label classification; chaining; label dependence; stacking;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2015.2416731