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Guided Discovery of Interesting Relationships Between Time Series Clusters and Metadata Properties

Guided Discovery of Interesting Relationships Between Time Series Clusters and Metadata Properties

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BERNARD, Jürgen, Tobias RUPPERT, Maximilian SCHERER, Tobias SCHRECK, Jörn KOHLHAMMER, 2012. Guided Discovery of Interesting Relationships Between Time Series Clusters and Metadata Properties. the 12th International Conference. Graz, Austria, 5. Sep 2012 - 7. Sep 2012. In: Proceedings of the 12th International Conference on Knowledge Management and Knowledge Technologies - i-KNOW '12. the 12th International Conference. Graz, Austria, 5. Sep 2012 - 7. Sep 2012. New York, New York, USA:ACM Press, pp. 1. ISBN 978-1-4503-1242-4. Available under: doi: 10.1145/2362456.2362485

@inproceedings{Bernard2012Guide-22705, title={Guided Discovery of Interesting Relationships Between Time Series Clusters and Metadata Properties}, year={2012}, doi={10.1145/2362456.2362485}, isbn={978-1-4503-1242-4}, address={New York, New York, USA}, publisher={ACM Press}, booktitle={Proceedings of the 12th International Conference on Knowledge Management and Knowledge Technologies - i-KNOW '12}, author={Bernard, Jürgen and Ruppert, Tobias and Scherer, Maximilian and Schreck, Tobias and Kohlhammer, Jörn} }

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