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Dec 12, 2024
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MATH& 146 Introduction to Statistics5 credits This course covers the organization and graphical representation of data, measures of central tendency and variation, basic probability theory, discrete probability distributions and the binomial formula, the normal distribution, hypothesis testing, confidence intervals, correlation, and linear regression.
This course meets the Quantitative Reasoning general education distribution requirement.
Prerequisites: MATH 98 (recommended) or MATH 99 (or placement into MATH& 146)
Course Outcomes Upon successful completion of this course the students will be able to:
- Organize and graph data using scatterplots, histograms, and boxplots
- Calculate mean, standard deviation, z-scores, and percentile values
- Solve problems using the basic elements of probability theory, such as sample spaces, the addition rule, and the multiplication rule
- Calculate the mean and standard deviation of a probability distribution
- Calculate expected value
- Calculate probabilities using the binomial probability formula
- Calculate probabilities and find percentile values using the normal distribution and the central limit theorem
- Construct and interpret confidence intervals
- Perform hypothesis tests
- Measure and test for correlation
- Use regression equations to make predictions
College-Wide Learning Outcomes This course teaches to the college-wide learning outcome of Critical Thinking, the ability to evaluate information, draw inferences, arrive at conclusions, and create solutions based on objective analysis of the evidence.
Total Hours: 50 Theory (Lecture) Hours: 50
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