Adaptive hierarchical space partitioning for online classification
Date
2016Source Title
Proceedings of the 24th European Signal Processing Conference, EUSIPCO 2016
Print ISSN
2219-5491
Publisher
IEEE
Pages
2290 - 2294
Language
English
Type
Conference PaperItem Usage Stats
224
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222
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Abstract
We propose an online algorithm for supervised learning with strong performance guarantees under the empirical zero-one loss. The proposed method adaptively partitions the feature space in a hierarchical manner and generates a powerful finite combination of basic models. This provides algorithm to obtain a strong classification method which enables it to create a linear piecewise classifier model that can work well under highly non-linear complex data. The introduced algorithm also have scalable computational complexity that scales linearly with dimension of the feature space, depth of the partitioning and number of processed data. Through experiments we show that the introduced algorithm outperforms the state-of-the-art ensemble techniques over various well-known machine learning data sets.
Keywords
Artificial intelligenceLearning algorithms
Learning systems
Classification methods
Classifier models
Ensemble techniques
On-line algorithms
On-line classification
Performance guarantees
Space partitioning
State of the art
Signal processing