The p-value in null-hypothesis significance testing is the probability of obtaining test results as extreme or more extreme than the observed result, assuming the null hypothesis is true. However, misinterpretation and misuse of p-values are common, leading to a formal statement by the American Statistical Association clarifying that p-values do not measure the probability of the hypothesis being true or the importance of a result. Nonetheless, when properly applied and interpreted, p-values and significance tests can enhance the rigor of conclusions drawn from data.
UC Berkeley
Fall 2022
UC Berkeley's course blends inferential thinking, computational thinking, and real-world relevance, offering students hands-on analysis of real-world datasets. It covers critical concepts in computer programming, statistical inference, privacy, and study design.
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+ 33 more conceptsStanford University
Spring 2023
This course offers a thorough understanding of probability theory and its applications in data analysis and machine learning. Prerequisites include CS103, CS106B, and Math 51 or equivalent courses.
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