Title
A New multi-instance multi-label learning approach for image and text classification
Abstract
Recently, a reasonable and effectively framework to deal with the classification problem of the polysemy object with complex connotation is multi-instance multi-label (MIML) learning framework in which each example is not only represented by multiple instances but also associated with multiple labels. As we all know, feature expression plays an important role in the classification problems. It determines the accuracy of the classification results from the source. Considering its difficulties for automatically extracting the high-level features which are useful and noiseless for the MIML problem, so in this paper we present a general MIML framework by combining the feature learning technologies with machine learning technologies. Further, based on this framework, a new approach called CPNMIML which combines the probabilistic latent semantic analysis (PLSA) with the neural networks (NN) is proposed. In CPNMIML algorithm, we firstly learn the latent topic allocation of all the training examples by using the PLSA model, it is a feature learning process to get high-level features. Then we utilize the learned latent topic allocation of each training example to train the neural networks. Given a test example, we learn its latent topic distribution. Finally, we send the learned latent topic allocation of the test example to the trained neural networks to get the multiple labels of the test example. Experiments show that the proposed method has superior performance on two real-world MIML tasks.
Year
DOI
Venue
2016
10.1007/s11042-015-2702-6
Multimedia Tools Appl.
Keywords
Field
DocType
Feature learning,Multi-instance multi-label learning,Probabilistic latent semantic analysis,Neural networks,Scene classification,Text categorization
Multi instance multi label,Pattern recognition,Connotation,Computer science,Probabilistic latent semantic analysis,Artificial intelligence,Text categorization,Artificial neural network,Feature learning,Machine learning,Polysemy
Journal
Volume
Issue
ISSN
75
13
1380-7501
Citations 
PageRank 
References 
3
0.38
18
Authors
3
Name
Order
Citations
PageRank
kaobi yan130.38
Zhixin Li211124.43
canlong zhang330.38