Interactive data visualization
Interactive data visualization enables direct actions on a graphical plot to change elements and link between multiple plots.[1]
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Overview
Interactive data visualization has been a pursuit of statisticians since the late 1960s. Examples of the developments can be found on the American Statistical Association video lending library.[2]
Common interactions
- Brushing: works by using the mouse to control a paintbrush, directly changing the color or glyph of elements of a plot. The paintbrush is sometimes a pointer and sometimes works by drawing an outline of sorts around points; the outline is sometimes irregularly shaped, like a lasso. Brushing is most commonly used when multiple plots are visible and some linking mechanism exists between the plots. There are several different conceptual models for brushing and a number of common linking mechanisms. Brushing scatterplots can be a transient operation, in which points in the active plot only retain their new characteristics while they are enclosed or intersected by the brush, or it can be a persistent operation, so that points retain their new appearance after the brush has been moved away. Transient brushing is usually chosen for linked brushing, as we have just described.
- Painting: Persistent brushing is useful when we want to group the points into clusters and then proceed to use other operations, such as the tour, to compare the groups. It is becoming common terminology to call the persistent operation painting,
- Identification: which could also be called labeling or label brushing,is another plot manipulation that can be linked. Bringing the cursor near a point or edge in a scatterplot, or a bar in a barchart, causes a label to appear that identifies the plot element. It is widely available in many interactive graphics, and is sometimes called mouseover.
- Scaling: maps the data onto the window, and changes in the area of the. mapping function help us learn different things from the same plot. Scaling is commonly used to zoom in on crowded regions of a scatterplot, and it can also be used to change the aspect ratio of a plot, to reveal different features of the data.
- Linking: connects elements selected in one plot with elements in another plot. The simplest kind of linking, one-to-one, where both plots show different projections of the same data, and a point in one plot corresponds to exactly one point in the other. When using area plots, brushing any part of an area has the same effect as brushing it all and is equivalent to selecting all cases in the corresponding category. Even when some plot elements represent more than one case, the underlying linking rule still links one case in one plot to the same case in other plots. Linking can also be by categorical variable, such as by a subject id, so that all data values corresponding to that subject are highlighted, in all the visible plots.
gollark: Very little, I just like interjecting.
gollark: That's not really how evidence works.
gollark: Screenshots saying someone will do something are not actually proof.
gollark: I have been here for MULTIPLE days. I just don't read it because it's too active.
gollark: Well, I scrolled up 20 messages, so more context is physically incapable of existing.
See also
- Comparison of JavaScript charting frameworks
- CanvasJS - Interactive Data Visualization Library
References
- Swayne, Deborah (1999). "Introduction to the special issue on interactive graphical data analysis: What is interaction?". Computational Statistics. 14 (1): 1–6.
- American Statistics Association, Statistical Graphics Section. "Video Lending Library".
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