2020
DOI: 10.4018/ijdwm.2020100106
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Data Discovery Over Time Series From Star Schemas Based on Association, Correlation, and Causality

Abstract: This work proposes a methodology applied to repositories modeled using star schemas, such as data marts, to discover relevant time series relations. This paper applies a set of measures related to association, correlation, and causality to create connections among data. In this context, the research proposes a new causality function based on peaks and values that relate coherently time series. To evaluate the approach, the authors use a set of experiments exploring time series about a particular neglected dise… Show more

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