Die Einführung des VIVO-Systems an der HTWD befindet sich derzeit in der Testphase. Daher kann es noch zu anwendungsseitigen Fehlern kommen. Sollten Sie solche Fehler bemerken, können Sie diese gerne >>hier<< melden.
Sollten Sie dieses Fenster schließen, können Sie über die Schaltfläche "Feedback" in der Fußleiste weiterhin Meldungen abgeben.
The cardinality estimation in ETL processes is particularly difficult. Aside from the well-known SQL operators, which are also used in ETL processes, there are a variety of operators without exact counterparts in the relational world. In addition to those, we find operators that support very specific data integration aspects. For such operators, there are no well-examined statistic approaches for cardinality estimations. Therefore, we propose a black-box approach and estimate the cardinality using a set of statistic models for each operator. We discuss different model granularities and develop an adaptive cardinality estimation framework for ETL processes. We map the abstract model operators to specific statistic learning approaches (regression, decision trees, support vector machines, etc.) and evaluate our cardinality estimations in an extensive experimental study.