Skip to main content
Graph
Search
fr
en
Login
Search
All
Categories
Concepts
Courses
Lectures
MOOCs
People
Practice
Publications
Startups
Units
Show all results for
Home
Lecture
Randomization tests: Understanding Experimental Results
Graph Chatbot
Related lectures (30)
Previous
Page 3 of 3
Next
Spatial Statistics: Significance
Explains the calculation of statistical significance in spatial statistics using permutation and randomization methods.
Probability Distributions in Environmental Studies
Explores probability distributions for random variables in air pollution and climate change studies, covering descriptive and inferential statistics.
Statistical Hypothesis Testing: Inference and Interpretation
Explores statistical hypothesis testing, including constructing confidence intervals, interpreting p-values, and making decisions based on significance levels.
Hypothesis Testing: T-Test and Chi-Square Test
Explains hypothesis testing using T-test and Chi-square test to compare means and assess independence of variables.
Introduction to ANOVA
Covers the basics of ANOVA using a case study on sleeping pill effectiveness.
Understanding Statistics & Experimental Design
Covers basic probability theory, signal detection theory, statistics, and meta-statistics, explaining effect sizes, power, and hypothesis testing.
Experimental Design: Replication, Randomization, Blocking
Delves into experimental design in genomics, emphasizing replication, randomization, and blocking for reducing bias and controlling variation.
Designing Experiments and Measuring Learning
Explores experimental design challenges in social sciences, emphasizing hypothesis formulation, variable control, and bias mitigation.
Hypothesis Testing: State of Nature
Explores hypothesis testing, emphasizing the state of nature and the importance of choosing the most powerful test.
Hypothesis Testing and Confidence Intervals: Key Concepts
Provides an overview of hypothesis testing and confidence intervals in statistics, including practical examples and key concepts.