Title :
Using Unsupervised Learning for Graph Construction in Semi-supervised Learning with Graphs
Author :
Chavez Escalante, Diego Alonso ; Taubin, Gabriel ; Nonato, Luis Gustavo ; Goldenstein, Siome Klein
Abstract :
Semi-supervised Learning with Graphs can achieve good results in classification tasks even in difficult conditions. Unfortunately, it can be slow and use a lot of memory. The first important step of the graph-based semi-supervised learning approaches is the construction of the graph from the data, where each data-point usually becomes a vertex in the graph - a potential problem with large amounts of data. In this paper, we present a graph construction method that uses an unsupervised neural network called growing neural gas (GNG). The GNG instance presents a intelligent stopping criteria that determines when the final network configuration maps correctly the input-data points. With that in mind, we use the final trained network as a reduced input graph for the semi-supervised classification algorithm, associating original data-points to the neurons they have activated in the unsupervised training process.
Keywords :
graph theory; mathematics computing; neural nets; pattern classification; unsupervised learning; GNG; graph construction method; graph vertex; graph-based semisupervised learning approaches; growing neural gas; input-data points; intelligent stopping criteria; network configuration maps; neurons; semisupervised classification algorithm; unsupervised learning; unsupervised neural network training; unsupervised training process; Accuracy; Biological neural networks; Equations; Harmonic analysis; Indexes; Neurons; Training;
Conference_Titel :
Graphics, Patterns and Images (SIBGRAPI), 2013 26th SIBGRAPI - Conference on
Conference_Location :
Arequipa
DOI :
10.1109/SIBGRAPI.2013.13