Statistics Toolbox 7.0
Product Description
- Introduction and Key Features
- Data Management and Descriptive Statistics
- Probability Distributions and Analysis of Variance
- Linear and Nonlinear Modeling and Multivariate Statistics
- Design of Experiments
- Hypothesis Testing and Statistical Process Control
Hypothesis Testing
Random variation often makes it difficult to determine whether samples taken under different conditions really are different. Hypothesis testing is an effective tool for analyzing whether sample-to-sample differences are significant and require further evaluation or are consistent with random and expected data variation.
Statistics Toolbox supports the most widely used parametric and nonparametric hypothesis testing procedures, such as:
- One- and two-sample t-tests
- One-sample z-test
- Nonparametric tests for one sample, paired samples, and two independent samples
- Distribution tests (Chi-square, Jarque-Bera, Lilliefors, and Kolmogorov-Smirnov)
- Comparison of distributions (two-sample Kolmogorov-Smirnov)
- Autocorrelation and randomness tests
- Linear hypotheses tests on regression coefficients
Statistical Process Control
Statistics Toolbox provides a set of functions that support Statistical Process Control (SPC). These functions enable you to monitor and improve products or processes by evaluating process variability. SPC functions let you:
- Perform gage repeatability and reproducibility studies
- Estimate process capability
- Create 11 control charts
- Apply Western Electric and Nelson control rules to control chart data
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