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Classifying networked text data with positive and unlabeled examples
- Source :
- Pattern Recognition Letters. 77:1-7
- Publication Year :
- 2016
- Publisher :
- Elsevier BV, 2016.
-
Abstract
- We present a NMF-based method for PU Learning of networked text data.Our algorithm integrates feature and network information via a consensus principle.Our method deals with networked data with extremely limited positive examples.We demonstrate the effectiveness of our algorithm. The rapid growth in the number of networked applications that naturally generate complex text data, which contains not only inner features but also inter-dependent relations, has created the demand of efficiently classifying such data. Many classification algorithms have been proposed, but they usually require as input fully labeled text examples. In many networked applications, however, the cost to label a text data may be expensive and hence a large amount of text may be unlabeled. In this paper we study the problem of classifying networked text data with only positive and unlabeled examples available. We present a non-negative matrix factorization-based approach to networked text classification by factorizing content matrix of the nodes and topological network structures, and by incorporating supervised information into the learning of objective function via a consensus principle. We propose a novel learning algorithm, namely puNet (positive and unlabeled learning algorithm for Networked text data), for efficiently classifying networked text, even if training datasets contain only a small amount of positive examples and a large amount of unlabeled ones. We conduct a series of experiments on benchmark networked datasets and illustrate the effectiveness of our algorithm.
- Subjects :
- Computer science
02 engineering and technology
Semi-supervised learning
computer.software_genre
Machine learning
Matrix decomposition
Non-negative matrix factorization
Matrix (mathematics)
Artificial Intelligence
020204 information systems
0202 electrical engineering, electronic engineering, information engineering
Feature (machine learning)
Clustering coefficient
business.industry
Statistical classification
ComputingMethodologies_PATTERNRECOGNITION
Signal Processing
Benchmark (computing)
020201 artificial intelligence & image processing
Computer Vision and Pattern Recognition
Data mining
Artificial intelligence
business
PU learning
computer
Software
Subjects
Details
- ISSN :
- 01678655
- Volume :
- 77
- Database :
- OpenAIRE
- Journal :
- Pattern Recognition Letters
- Accession number :
- edsair.doi...........eb8e67d7af1aa22e87d07ebdbcaa276c