2015
DOI: 10.1109/tvcg.2015.2410278
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Uncertainty-Aware Multidimensional Ensemble Data Visualization and Exploration

Abstract: Abstract-This paper presents an efficient visualization and exploration approach for modeling and characterizing the relationships and uncertainties in the context of multidimensional ensemble datasets. Its core is a novel dissimilarity-preserving projection technique that characterizes not only the relationships among the mean values of the ensemble data objects but also the relationships among the distributions of ensemble members. This uncertainty-aware projection scheme leads to an improved understanding o… Show more

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Cited by 71 publications
(36 citation statements)
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“…Multidimensional data is commonly visualized on 2D displays with either data being summarized with fewer dimensions (please refer to section 6.4 for more details) [FBW16, KFH10, SWMW09], using multiple views for different attributes/dimensions [LTJ10, BBP08, LLEJ11], or with parallel coordinates [WLSL17, CZC∗15]. Parallel coordinates is a commonly used visualization technique for multidimensional data (Figure 1 (A) and Figure 4).…”
Section: Taxonomiesmentioning
confidence: 99%
“…Multidimensional data is commonly visualized on 2D displays with either data being summarized with fewer dimensions (please refer to section 6.4 for more details) [FBW16, KFH10, SWMW09], using multiple views for different attributes/dimensions [LTJ10, BBP08, LLEJ11], or with parallel coordinates [WLSL17, CZC∗15]. Parallel coordinates is a commonly used visualization technique for multidimensional data (Figure 1 (A) and Figure 4).…”
Section: Taxonomiesmentioning
confidence: 99%
“…Anomaly detection has been extensively studied over the past years [12]. Methods for anomaly detection can be broadly categorized into tensorbased algorithms [13], statistics-based algorithms [41], classificationbased algorithms [33], and neighbor-based or distance-based algorithms [6]. Although these methods are effective in identifying anomalies with numeric results, they are not capable of considering the sequential structure when detecting anomalies for event sequences.…”
Section: Anomaly Detection Algorithmsmentioning
confidence: 99%
“…An approach for uncertainty‐aware multi‐dimensional ensemble data visualization and exploration was recently presented by Chen et al . [CZC*15], but such approaches do not allow for comparing behaviour patterns of individual simulations over time. An approach for the analysis of ensemble data sets using statistical descriptors was developed by Potter et al .…”
Section: Background and Related Workmentioning
confidence: 99%