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2016
DOI: 10.1111/cgf.12901
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Towards Quantitative Visual Analytics with Structured Brushing and Linked Statistics

Abstract: Until now a lot of visual analytics predominantly delivers qualitative results-based, for example, on a continuous color map or a detailed spatial encoding. Important target applications, however, such as medical diagnosis and decision making, clearly benefit from quantitative analysis results. In this paper we propose several specific extensions to the well-established concept of linking&brushing in order to make the analysis results more quantitative. We structure the brushing space in order to improve the r… Show more

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Cited by 24 publications
(14 citation statements)
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References 21 publications
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“…Features supported by visual analytics environments such as brushing and linking can be used for hypothesis generation and testing for time‐varying climate datasets [KLM∗08, RSM∗16]. Trends identified during analysis can be used to select regions that can act as climate change indicators.…”
Section: Taxonomiesmentioning
confidence: 99%
“…Features supported by visual analytics environments such as brushing and linking can be used for hypothesis generation and testing for time‐varying climate datasets [KLM∗08, RSM∗16]. Trends identified during analysis can be used to select regions that can act as climate change indicators.…”
Section: Taxonomiesmentioning
confidence: 99%
“…Recently, the Mahalanobis brush was presented as an interesting alternative for brushing scatterplots [RSM*16]. The user simply clicks into the center of a coherent data subset to be selected.…”
Section: Related Workmentioning
confidence: 99%
“… brushing using simple geometries —the most commonly used brushing solutions include the rectangular or circular brushing on scatterplots, line‐brushing on data graphs [KMG*06], etc. lassoing —the user selects subsets by drawing a geometrically detailed lasso around the target group of item representations logical combinations of simple brushes —the user makes use of multiple brushes and combines them using logical operators to refine the data selection [MW95, DGH03] sketch‐based brushing —the user sketches a shape onto a visualization and a selection heuristic is used to determine which data are selected [MKO*08, FH17, RSM*16] …”
Section: Introductionmentioning
confidence: 99%
“…The keyframed brushing mechanism is intended to reshape (a certain subset of) analytical tasks as a dialogue while keeping the user engaged. This methodology has been shown to generate dynamic visual summaries [44] and structured selection sequences [29] and we employ this technique here. The user defines two or more brushes (according to his/her analytical goal), similar to defining key frames in computer-assisted animation [10].…”
Section: Keyframed Brushingmentioning
confidence: 99%