sameAs
P178
Prediction of side chain orientations in proteins by statistical machine learning methods.Spatial Reasoning and Data Displays.MetNet: Software to Build and Model the Biogenetic Lattice of Arabidopsis.Statistical inference for exploratory data analysis and model diagnostics.Clustering microarray data to determine normalization method.The soy isoflavones for reducing bone loss study: 3-yr effects on pQCT bone mineral density and strength measures in postmenopausal womenSoy Isoflavones for Reducing Bone Loss Study: effects of a 3-year trial on hormones, adverse events, and endometrial thickness in postmenopausal womenBiomathematical description of synthetic peptide libraries.Graphical Tests for Power Comparison of Competing Designs.Graphical inference for Infovis.Common angle plots as perception-true visualizations of categorical associations.Product plots.The Generalized Pairs PlotModel Choice and Diagnostics for Linear Mixed-Effects Models Using Statistics on Street CornersEnabling Interactivity on Displays of Multivariate Time Series and Longitudinal DataAuthors' response to discussantsOn the move at DinoFun worldUsing visual statistical inference to better understand random class separations in high dimension, low sample size dataVisualizing communication patterns at DinoFun WorldVisualizing statistical models: Removing the blindfoldVisually Exploring Missing Values in Multivariable Data Using a Graphical User InterfaceAn algorithm for deciding the number of clusters and validation using simulated data with application to exploring crop population structureValidation of Visual Statistical Inference, Applied to Linear ModelsGlyph-maps for visually exploring temporal patterns in climate data and modelsDelayed, Canceled, on Time, Boarding… Flying in the USAExtending the GGobi pipeline from RThe plumbing of interactive graphicsAll of This Has Happened Before. All of This Will Happen Again: Data ScienceVariations ofQ–QPlots: The Power of Our Eyes!Measuring Lineup Difficulty By Matching Distance Metrics With Subject Choices in Crowd-Sourced DataLetter-Value Plots: Boxplots for Large DataAre You Normal? The Problem of Confounded Residual Structures in Hierarchical Linear ModelsSigns of the Sine Illusion—Why We Need to CareReactive Programming for Interactive GraphicsCan You Buy a President? Politics After the Tillman ActHLMdiag: A Suite of Diagnostics for Hierarchical Linear Models inRPoint Estimation of the Central Orientation of Random RotationsA graphical exploration of the Deepwater Horizon oil spillDiagnostic tools for hierarchical linear modelsHow Good Is Your Eyeballing?
P50
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P50
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Duits statistica
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German statistician
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deutsche Statistikerin
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estadística alemana
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staitisteoir Gearmánach
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հետազոտող
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Heike Hofmann
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Heike Hofmann
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Heike Hofmann
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Heike Hofmann
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Heike Hofmann
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