Title :
PCA Feature Extraction for Change Detection in Multidimensional Unlabeled Data
Author :
Kuncheva, Ludmila I. ; Faithfull, William J.
Author_Institution :
Sch. of Comput. Sci., Bangor Univ., Bangor, UK
Abstract :
When classifiers are deployed in real-world applications, it is assumed that the distribution of the incoming data matches the distribution of the data used to train the classifier. This assumption is often incorrect, which necessitates some form of change detection or adaptive classification. While there has been a lot of work on change detection based on the classification error monitored over the course of the operation of the classifier, finding changes in multidimensional unlabeled data is still a challenge. Here, we propose to apply principal component analysis (PCA) for feature extraction prior to the change detection. Supported by a theoretical example, we argue that the components with the lowest variance should be retained as the extracted features because they are more likely to be affected by a change. We chose a recently proposed semiparametric log-likelihood change detection criterion that is sensitive to changes in both mean and variance of the multidimensional distribution. An experiment with 35 datasets and an illustration with a simple video segmentation demonstrate the advantage of using extracted features compared to raw data. Further analysis shows that feature extraction through PCA is beneficial, specifically for data with multiple balanced classes.
Keywords :
feature extraction; image classification; image segmentation; principal component analysis; video signal processing; PCA feature extraction; adaptive classification; classification error monitoring; multidimensional distribution; multidimensional unlabeled data; principal component analysis; semiparametric log-likelihood change detection criterion; video segmentation; Covariance matrix; Feature extraction; Gaussian distribution; Hidden Markov models; Monitoring; Principal component analysis; Standards; Change detection; feature extraction; log-likelihood detector; pattern recognition;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2013.2248094