Chapter 1, TUFTE STYLE GRIDDING FOR READABILITY. Chapter 5, SLICE (CROSS-SECTIONAL VIEWS)
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1 Chapter, TUFTE STYLE GRIDDING FOR READABILITY Chapter 5, SLICE (CROSS-SECTIONAL VIEWS) Number of responses Distribution of ethnicities in each income group of SF bay area residents Thicker grid lines to separate categories with one missing bound -Inf to to to to to to to to to Inf Income groups Other White Pacific Islander Hispanic East Indian Black Asian American Indian Ethnicity Chapter, DESIGNING MULTIGRAPH LAYOUTS Chapter 2, BOXPLOTS Apple Inc Stock Price, (detailed view of data from selected time window) 42 x Boxplot showing the gene expression across 98 samples for a specific gene across 4 cancers Jan 2Feb 24Mar 3May 2Jun 22Jul 3Aug Oct 9Nov 3Dec Gene Expression levels.5 Volume 6M.5 4M M 3Jan 2Feb 24Mar 3May 2Jun 22Jul 3Aug Oct 9Nov 3Dec 2M Cancer Location Fatality pancreas lymphoma melanoma prostate bladder uterus renal ovary breast leukemia meso collerectal lung cns Lower body Distributed Lower body Upper body Distributed Lower body Upper body high medium low Long term stock prices
2 Chapter 3, TWO DIMENSIONAL SCATTER PLOTS Chapter 2, SPARKLINES SparkLines with Stock Prices (//2 to 2/3/2) of the 3 iris classes is separable based on these 2 attribute values GE.8375 y (Attribute 3, Petal length) S&P.925 YHOO SLB.7779 MSFT x (Attribute 2, Sepal width) GOOG AAPL Chapter 3, SCATTER PLOT SMOOTHING Chapter 6, FUSING HYPERSPECTRAL DATASETS Scatter plot smooth, sigma =., on a x grid y Intensity x 2
3 Chapter 3, TWO-DIMENSIONAL SCATTERPLOTS Chapter 2, NODE LINK PLOTS 36 Closest cities connected to each other Latitudes Longitudes Chapter 2, DISTRIBUTIONAL DATA ANALYSIS (QQ PLOTS) Chapter 2, TIME SERIES ANALYSIS (POWER SPECTRUM PLOT) 26 QQ Plot of Sample Data versus Standard Normal The closer the points lie on the line, the more normal is the distribution. 2.8 Power Spectrum of the Heart Rate Signal Quantiles of Input Sample Standard Normal Quantiles Power Peak near.2 Hz (most likely, the frequency of respiration in this subject) Peak near. Hz (most likely, the frequency of respiration in this subject) Frequency (in Hertz)
4 Chapter 2, CALENDAR HEAT MAP Chapter 3, CHOROPLETH MAPS Age adjusted rate of incidence of cancer across all races from Rate is reported as number per, population Chapter 3, 2D NODE LINK PLOTS Chapter 3, DENDOGRAMS AND CLUSTERGRAMS Expression levels Leukaemia Samples 3 different genes
5 9 Contour lines, using a topological colormap Contours show elevation beyond ft, at ft interval Thick contour at sea level delineate land from sea Chapter 3, CONTOUR PLOTS Figure shows the confidence levels for data modelled with a Gaussian function. The distance from the center is inversely proportional to the confidence level. Figure colors the regions of the graph with high confidence level with enhanced granularity, using a non-uniform color map Latitudes -3-2 y Longitudes x Chapter 3, THEMATIC MAPS WITH SYMBOLS Chapter 5, LIGHTING
6 Chapter 3, FLOW MAPS Chapter 7, THE MAGNIFYING GLASS DEMO Chapter 5, ISOSURFACE, ISONORMALS, ISOCAPS Chapter 4, INTERACTION BETWEEN LIGHT, TRANSPARENCY, AND VIEW
7 Chapter 4, TRANSPARENCY Chapter 5, SCALAR AND VECTOR DATA WITH A COMBINATION OF VISUALIZATION TECHNIQUES Chapter 5, 3D SCATTER PLOTS Chapter 6, TREE MAPS
8 Chapter 6, PARALLEL COORDINATE PLOTS Chapter 7, ANIMATION WITH PLAYBACK OF FRAME CAPTURES Chapter 6, GLYPHS (STARS) Chapter 6, PRINCIPAL COMPONENT ANALYSIS
9 Chapter 5, CAMERA MOTION Chapter 7, STREAM PARTICPLE ANIMATION Chapter 6, ANDREWS' CURVES Chapter 7, OBTAINING USER INPUT FROM THE GRAPH Chapter 6, RADIAL COORDINATES Radial Coordinate Visualization. 663 gene expression levels per sample plotted on 2D space Figure shows this data is not separable in 2D space breast prostate lung collerectal lymphoma bladder melanoma uterus leukemia renal pancreas ovary meso cns
10 Chapter 6, SURVEY PLOTS Chapter 3, GRIDDING SCATTERED DATA Chapter 7, ANIMATION BY INCREMENTAL CHANGES TO CHART ELEMENTS Chapter 7, DATA LINK AND BRUSH
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