6533b836fe1ef96bd12a12d3
RESEARCH PRODUCT
Modeling recurrent distributions in streams using possible worlds
Andreas KarwathStefan KramerMichael Geilkesubject
Possible worldBasis (linear algebra)Computer scienceData stream miningRepresentation (systemics)Context (language use)Data pre-processingData miningRaw datacomputer.software_genrecomputerData modelingdescription
Discovering changes in the data distribution of streams and discovering recurrent data distributions are challenging problems in data mining and machine learning. Both have received a lot of attention in the context of classification. With the ever increasing growth of data, however, there is a high demand of compact and universal representations of data streams that enable the user to analyze current as well as historic data without having access to the raw data. To make a first step towards this direction, we propose a condensed representation that captures the various — possibly recurrent — data distributions of the stream by extending the notion of possible worlds. The representation enables queries concerning the whole stream and can, hence, serve as a tool for supporting decision-making processes or serve as a basis for implementing data mining and machine learning algorithms on top of it. We evaluate this condensed representation on synthetic and real-world data.
year | journal | country | edition | language |
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2015-10-01 | 2015 IEEE International Conference on Data Science and Advanced Analytics (DSAA) |