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Bernhard Klingenberg
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Art of Stat: Concepts
Art of Stat: Concepts5.0
Explore the Central Limit Theorem, learn about the correlation coefficient and linear regression, and visualize the coverage probability of confidence intervals or Type I & II Errors in hypothesis testing. Build understanding by experiencing these important concepts step-by-step. For students and t
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Art of Stat: Resampling
Art of Stat: Resampling5.0
Modern statistical calculator for teachers and students of statistics. The Art of Stat: Resampling app lets you find bootstrap confidence intervals and permutation P-values. The app illustrates the procedures interactively so you can understand how they work. Several example datasets are preloaded
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Art of Stat: Inference
Art of Stat: Inference4.9
The Art of Stat: Inference app provides access to the following modules: Inference for Proportions (one and two independent samples) Inference for Means (one and two independent samples) Inference in Linear Regression Models (slope, confidence & prediction intervals) Chi-Square Test (Indepe
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Art of Stat: Explore Data
Art of Stat: Explore Data4.8
Modern statistical calculator for teachers and students of statistics. The Art of Stat: Explore Data app includes statistical methods for exploring categorical and quantitative data. Obtain summary statistics, contingency tables or correlation coefficients and generate bar- and pie charts, histogra
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Art of Stat: Distributions
Art of Stat: Distributions4.8
Modern statistical calculator for teachers and students of statistics. The Art of Stat: Distributions app explores and visualizes continuous and discrete probability distributions via sliders and buttons. Don't rely on boring and complicated graphing calculators that don't deserve their name. Inst
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Art of Stat: Regression
Art of Stat: Regression4.7
The Art of Stat: Linear Regression app creates scatterplots, fits simple (and multiple) linear, logistic or exponential regression models, and displays inference for model parameters (standard errors, confidence intervals, P-values). New: The app now also fits multiple linear regression models and
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