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Layered Integration Approach for Multi-view Analysis of Temporal Data

Book Contribution - Book Chapter Conference Contribution

In this study, we propose a novel data analysis approach that can be used for multi-view analysis and integration of heterogeneous temporal data originating from multiple sources. The proposed approach consists of several distinctive layers: (i) select a suitable set (view) of parameters in order to identify characteristic behaviour within each individual source (ii) exploit an alternative set (view) of raw parameters (or high-level features) to derive some complementary representations (e.g. related to source performance) of the results obtained in the first layer with the aim to facilitate comparison and mediation across the different sources (iii) integrate those representations in an appropriate way, allowing to trace back similar cross-source performance to certain characteristic behaviour of the individual sources.

The validity and the potential of the proposed approach has been demonstrated on a real-world dataset of a fleet of wind turbines.
Book: Advanced Analytics and Learning on Temporal Data - 5th ECML PKDD Workshop, AALTD 2020, Revised Selected Papers
Series: Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
Volume: 12588
Pages: 138-154
Number of pages: 17
ISBN:978-3-030-65741-3
Publication year:2020
Keywords:Data integration, Data mining, Temporal data clustering, Multi-view learning
Accessibility:Closed