Visual Interactive Parameter Selection for Temporal Blind Source Separation

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Abstract

Many fields of science and industry collect and analyze multivariate time- varying measurements, e.g., healthcare, geophysics, or finance. Such data is often high-dimensional, correlated, and noisy. Experts are interested in latent compo- nents of the dataset, but due to the properties above, these are difficult to ob- tain. Temporal Blind Source Separation (TBSS) is a suitable and well-established framework for these data. However, the wide choice of methods and their tuning parameters impede the effective use of TBSS in practice. Visual Analytics (VA) aims to create powerful analytic tools by combining the strengths of humans and computers. We designed, developed, and evaluated VA contributions in previous work to support TBSS-related analysis tasks. This paper highlights the benefits and opportunities of VA concepts for statistics-oriented problems. We demon- strate how their analysis workflow can be supported using an important TBSS application example with a real-world dataset of meteorological measurements in Italy.

Journal Article
Year of Publication
2024
Journal
Journal of Data Science, Statistics, and Visualisation
Volume
4
Issue
3
URL
DOI
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