A survey on learning from data streams: current and future trends

dc.contributor.author João Gama en
dc.date.accessioned 2017-11-16T13:53:33Z
dc.date.available 2017-11-16T13:53:33Z
dc.date.issued 2012 en
dc.description.abstract Abstract Nowadays, there are applications in which the data are modeled best not as persistent tables, but rather as transient data streams. In this article, we discuss the limitations of current machine learning and data mining algorithms. We discuss the fundamental issues in learning in dynamic environments like continuously maintain learning models that evolve over time, learning and forgetting, concept drift and change detection. Data streams produce a huge amount of data that introduce new constraints in the design of learning algorithms: limited computational resources in terms ofmemory, cpu power, and communication bandwidth. We present some illustrative algorithms, designed to taking these constrains into account, for decision-tree learning, hierarchical clustering and frequent pattern mining. We identify the main issues and current challenges that emerge in learning from data streams that open research lines for further developments. en
dc.identifier.uri http://repositorio.inesctec.pt/handle/123456789/2607
dc.language eng en
dc.relation 5120 en
dc.rights info:eu-repo/semantics/openAccess en
dc.title A survey on learning from data streams: current and future trends en
dc.type article en
dc.type Publication en
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