This paper presents a classifier which uses a tree-based Neural Network (NN), and uses both, unlabeled and labeled instances. First, we learn the structure of the data distribution in an unsupervised manner. After convergence, and once labeled data become available, our strategy tags each of the clusters according to the evidence provided by the instances. Unlike other neighborhood-based schemes, our classifier uses only a small set of representatives whose cardinality can be much smaller than that of the input set. Our experiments show that, on average, the accuracy of such classifier is reasonably comparable to those obtained by some of the state-of-the-art classification schemes that only use labeled instances during the training phase. ...
Neural networks have been successfully used as classification models yielding state-of-the-art resul...
. Self-organizing maps are an unsupervised neural network model which lends itself to the cluster an...
Self-Organizing Maps (SOMs) have been useful in gaining insights about the information content of la...
Published version of an article from the following onference prodeedings: AI 2011: Advances in Artif...
Years of research in the field of Pattern Recognition (PR) has led to scores of algorithms which can...
In many real-life problems, obtaining labelled data can be a very expensive and laborious task, whil...
Semi-supervised learning aims at discovering spatial structures in high-dimensional input spaces whe...
Abstract Semi-supervised learning aims at discov-ering spatial structures in high-dimensional input...
We describe a nonparametric Bayesian approach to generalizing from few labeled examples, guided by a...
Self-organizing map has been applied to a variety of tasks including data visualization and clusteri...
We present a method that employs a tree-based Neural Network (NN) for performing classification. The...
In this paper we introduce a tree structured self-organizing network, called the Growing Hierarchica...
In a traditional machine learning task, the goal is training a classifier using only labeled data (d...
Semi Supervised Learning involves using both labeled and unlabeled data to train a classifier or for...
Convolutional neural network (CNN)-based works show that learned features, rather than handpicked fe...
Neural networks have been successfully used as classification models yielding state-of-the-art resul...
. Self-organizing maps are an unsupervised neural network model which lends itself to the cluster an...
Self-Organizing Maps (SOMs) have been useful in gaining insights about the information content of la...
Published version of an article from the following onference prodeedings: AI 2011: Advances in Artif...
Years of research in the field of Pattern Recognition (PR) has led to scores of algorithms which can...
In many real-life problems, obtaining labelled data can be a very expensive and laborious task, whil...
Semi-supervised learning aims at discovering spatial structures in high-dimensional input spaces whe...
Abstract Semi-supervised learning aims at discov-ering spatial structures in high-dimensional input...
We describe a nonparametric Bayesian approach to generalizing from few labeled examples, guided by a...
Self-organizing map has been applied to a variety of tasks including data visualization and clusteri...
We present a method that employs a tree-based Neural Network (NN) for performing classification. The...
In this paper we introduce a tree structured self-organizing network, called the Growing Hierarchica...
In a traditional machine learning task, the goal is training a classifier using only labeled data (d...
Semi Supervised Learning involves using both labeled and unlabeled data to train a classifier or for...
Convolutional neural network (CNN)-based works show that learned features, rather than handpicked fe...
Neural networks have been successfully used as classification models yielding state-of-the-art resul...
. Self-organizing maps are an unsupervised neural network model which lends itself to the cluster an...
Self-Organizing Maps (SOMs) have been useful in gaining insights about the information content of la...