Adaptive Learning Process for the Evolution of Ontology-Described Classification Model in Big Data Context

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TitreAdaptive Learning Process for the Evolution of Ontology-Described Classification Model in Big Data Context
Type de publicationConference Paper
Year of Publication2016
AuteursPeixoto R, Cruz C, Silva N
Conference NamePROCEEDINGS OF THE 2016 SAI COMPUTING CONFERENCE (SAI)
PublisherIEEE; Inst Engn & Technol; Usenix; Deutsche Telekom; Deep ER; iMinds; Cancer Res UK; BCS; Sci & Informat Org
Conference Location345 E 47TH ST, NEW YORK, NY 10017 USA
ISBN Number978-1-4673-8460-5
Mots-clésadaptive learning, Machine learning, Maintenance, Multi-label classification, ontology
Résumé

One of the biggest challenges in Big Data is to exploit value from large volumes of variable and changing data. For this, one must focus on analyzing the data in these Big Data sources and classify the data items according to a domain model (e.g. an ontology). To automatically classify unstructured text documents according to an ontology, a hierarchical multi-label classification process called Semantic HMC was proposed. This process uses ontologies to describe the classification model. To prevent cold start and user overload, the classification process automatically learns the ontology-described classification model from a very large set of unstructured text documents. However, data is always being generated and its statistical properties can change over time. In order to learn in such environment, the classification processes must handle streams of non-stationary data to adapt the classification model. This paper proposes a new adaptive learning process to consistently adapt the ontology-described classification model according to a non-stationary stream of unstructured text data in Big Data context. The adaptive process is then instantiated for the specific case of of the previously proposed Semantic HMC.