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Hypothesis Testing in Python
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Start Course for FreeWhat you'll learn
- Differentiate between Type I and Type II errors and their consequences for statistical conclusions
- Distinguish between parametric and non-parametric approaches based on assumptions of normality, sample size, and independence
- Evaluate p-values, confidence intervals, and standardized test statistics produced by Python libraries to determine whether to reject the null hypothesis at a specified alpha
- Identify the suitable hypothesis test in Python (z-test, t-test, ANOVA, proportion test, chi-square, or non-parametric) for a given research question, data type, and sample conditions
- Recognize the correct null and alternative hypotheses, significance level, and tail direction for typical analytical scenarios
Prerequisites
Sampling in PythonHypothesis Testing Fundamentals
Two-Sample and ANOVA Tests
Proportion Tests
Non-Parametric Tests
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FAQs
Is this course suitable for beginners?
This is an intermediate-level Python course. You should be comfortable with pandas, basic Python, and introductory statistics before starting.
What types of hypothesis tests does this course cover?
You will learn t-tests, proportion tests, chi-square tests, ANOVA, and non-parametric tests, along with the assumptions behind each one.
What datasets are used in this course?
You work with real-world data including Stack Overflow user feedback and supply-chain data for medical supply shipments.
When would I use hypothesis testing in my work?
Hypothesis testing is used by data analysts and data scientists to make statistically rigorous decisions, such as comparing group performance or validating A/B test results.
How long does this course take to complete?
The course has 4 chapters and 50 exercises. Most learners finish it in about 3.5 hours.
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