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module content:
- Explain the concept of a random variable.
- Differentiate between a discrete random variable and a continuous random variable.
- Calculate the probability distribution of a discrete random variable by analyzing the underlying random experiment.
- Calculate the mean and standard deviation of a discrete random variable.
- Recognize a Binomial Experiment and calculate probabilities for the family of Binomial distributions using Minitab.
- Relate the probability distribution of a continuous random variable to its probability density function.
- Calculate probabilities for the family of Uniform distributions by drawing the probability density function.
- Calculate probabilities for the family of Normal distributions using Minitab.
- Solve modeling problems involving the use of Normal distributions.
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Most Popular Content
Walden University Week 6 Statistical Process Control Presentation
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4-3 Project One Submission
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4-3 Project One Submission
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