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Cumulative link models for deep ordinal classification
- Publication Year :
- 2019
-
Abstract
- This paper proposes a deep convolutional neural network model for ordinal regression by considering a family of probabilistic ordinal link functions in the output layer. The link functions are those used for cumulative link models, which are traditional statistical linear models based on projecting each pattern into a 1-dimensional space. A set of ordered thresholds splits this space into the different classes of the problem. In our case, the projections are estimated by a non-linear deep neural network. To further improve the results, we combine these ordinal models with a loss function that takes into account the distance between the categories, based on the weighted Kappa index. Three different link functions are studied in the experimental study, and the results are contrasted with statistical analysis. The experiments run over two different ordinal classification problems and the statistical tests confirm that these models improve the results of a nominal model and outperform other robust proposals considered in the literature.<br />24 pages, 3 figures. Submitted to Neurocomputing
- Subjects :
- FOS: Computer and information sciences
0209 industrial biotechnology
Computer Science - Machine Learning
Artificial neural network
Computer science
Computer Vision and Pattern Recognition (cs.CV)
Cognitive Neuroscience
Probabilistic logic
Linear model
Computer Science - Computer Vision and Pattern Recognition
02 engineering and technology
Function (mathematics)
Convolutional neural network
Ordinal regression
Machine Learning (cs.LG)
Computer Science Applications
Set (abstract data type)
020901 industrial engineering & automation
Artificial Intelligence
0202 electrical engineering, electronic engineering, information engineering
Ordinal number
020201 artificial intelligence & image processing
Algorithm
Statistical hypothesis testing
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Accession number :
- edsair.doi.dedup.....cce9b3ce8cfbb913d5ea71da30cfcb7a