Deferral classification of evolving temporal dependent data streams
Author(s) -
Michael Mayo,
Albert Bifet
Publication year - 2016
Publication title -
research commons (the university of waikato)
Language(s) - English
Resource type - Conference proceedings
ISBN - 978-1-4503-3739-7
DOI - 10.1145/2851613.2851890
Subject(s) - computer science , deferral , data stream mining , machine learning , artificial intelligence , naive bayes classifier , class (philosophy) , data mining , simple (philosophy) , support vector machine , philosophy , accounting , epistemology , business
Data streams generated in real-time can be strongly temporally dependent. In this case, standard techniques where we suppose that class labels are not correlated may produce sub-optimal performance because the assumption is incorrect. To deal with this problem, we present in this paper a new algorithm to classify temporally correlated data based on deferral learning. This approach is suitable for learning over time-varying streams. We show how simple classifiers such as Naive Bayes can boost their performance using this new meta-learning methodology. We give an empirical validation of our new algorithm over several real and artificial datasets
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