DocumentCode :
3756466
Title :
Semi-supervised Multi-label k-Nearest Neighbors Classification Algorithms
Author :
Danilo C.G. de Lucena;Ricardo B.C. Prudencio
Author_Institution :
Center of Inf., Fed. Univ. of Pernambuco, Recife, Brazil
fYear :
2015
Firstpage :
49
Lastpage :
54
Abstract :
Classification is one of the most traditional tasks in machine learning. In supervised learning for classification, the goal is to learn a classifier function using a completely labeled dataset. Semi-supervised learning modifies the learning algorithm function allowing the use of partially labeled data. Single-label classification assigns only one label to each instance in the dataset, while multi-label classification can assign multiple labels for each instance. It would be relevant to develop techniques that are both multi-label and semi-supervised. However, few previous work has been devoted to semi-supervised multi-label classification. In the current work, we propose two new algorithms by extending the Multi-label k-Nearest Neighbors (MLkNN) algorithm to semi-supervised learning. The original MLkNN is a graph-based supervised algorithm. In our proposal, we augmented the graph structure and adapted two semi-supervised algorithms, label propagation and label spreading, for performing the label expansion in the augmented graph. We compare the proposed algorithms with a group of baseline supervised multi-label algorithms. The results for the metrics analyzed showed that the new algorithms were suitable for the multi-label semi-supervised scenarios.
Keywords :
"Convergence","Semisupervised learning","Training","Proposals","Laplace equations","Supervised learning","Mathematical model"
Publisher :
ieee
Conference_Titel :
Intelligent Systems (BRACIS), 2015 Brazilian Conference on
Type :
conf
DOI :
10.1109/BRACIS.2015.26
Filename :
7423994
Link To Document :
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