Published August 19, 2017 | Version v1
Conference paper

Learning from Ontology Streams with Semantic Concept Drift

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Description

Data stream learning has been largely studied for extracting knowledge structures from continuous and rapid data records. In the semantic Web, data is interpreted in ontologies and its ordered sequence is represented as an ontology stream. Our work exploits the semantics of such streams to tackle the problem of concept drift i.e., unexpected changes in data distribution, causing most of models to be less accurate as time passes. To this end we revisited (i) semantic inference in the context of supervised stream learning, and (ii) models with semantic em-beddings. The experiments show accurate prediction with data from Dublin and Beijing.

Abstract

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URL
https://hal.inria.fr/hal-01934901
URN
urn:oai:HAL:hal-01934901v1

Origin repository

Origin repository
UNICA