2020
DOI: 10.1111/cgf.13977
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Quantitative Evaluation of Time‐Dependent Multidimensional Projection Techniques

Abstract: Dimensionality reduction methods are an essential tool for multidimensional data analysis, and many interesting processes can be studied as time‐dependent multivariate datasets. There are, however, few studies and proposals that leverage on the concise power of expression of projections in the context of dynamic/temporal data. In this paper, we aim at providing an approach to assess projection techniques for dynamic data and understand the relationship between visual quality and stability. Our approach relies … Show more

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Cited by 28 publications
(49 citation statements)
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“…The addedvalue of this is obvious when computing projections, which should be stable with respect to small changes in the input data, to maintain the user's mental map. A detailed discussion of projections stability has recently been proposed by Vernier et al [157]. Van der Maaten has recognized this earlier, and proposed a modi cation of the t-SNE method to behave parametrically, using deep learning [81].…”
Section: 1mentioning
confidence: 99%
“…The addedvalue of this is obvious when computing projections, which should be stable with respect to small changes in the input data, to maintain the user's mental map. A detailed discussion of projections stability has recently been proposed by Vernier et al [157]. Van der Maaten has recognized this earlier, and proposed a modi cation of the t-SNE method to behave parametrically, using deep learning [81].…”
Section: 1mentioning
confidence: 99%
“…Three notable recent benchmarks are Espadoto et al [56] (18 datasets, 44 projection techniques, and 7 metrics. See Chapter 3); Vernier et al [209] (focus in dynamic DR -10 datasets, 11 techniques, 12 metrics); and SmallVis [139] (focus on t-SNE, UMAP, and LargeVis [198]).…”
Section: Benchmarks (mentioning
confidence: 99%
“…These implementations, and their main functional and non-functional aspects, are listed in Table 7. Additional functional aspects of these techniques, such as complexity and quality are provided in recent surveys [56,209].…”
Section: 3mentioning
confidence: 99%
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