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
Pizza Making Process
Graph Chatbot
Related lectures (28)
Previous
Page 1 of 3
Next
Normal Distribution: Characteristics and Examples
Covers the characteristics and importance of the normal distribution, including examples and treatment scenarios.
Review Session: Module 1
Introduces inferential statistics, covering sampling, central tendency, dispersion, histograms, z-scores, and the normal distribution.
Statistical Measures: Mean, Median, and Dispersion Techniques
Discusses statistical measures of central tendency and dispersion, focusing on mean, median, and their implications in data analysis.
Normal Distribution: Characteristics and Z-scores
Explores normal distribution characteristics, Z-scores, probability in inferential statistics, sample effects, and binomial distribution approximation.
Estimators and Confidence Intervals
Explores bias, variance, unbiased estimators, and confidence intervals in statistical estimation.
Multivariate Statistics: Normal Distribution
Introduces multivariate statistics, covering normal distribution properties and characteristic functions.
Sampling Theory: Statistics for Mathematicians
Covers the theory of sampling, focusing on statistics for mathematicians.
Concentration Inequalities
Covers concentration inequalities and sampling methods for estimating unknown distributions, with a focus on population infection rates.
Hypothesis Testing and Confidence Intervals: Key Concepts
Provides an overview of hypothesis testing and confidence intervals in statistics, including practical examples and key concepts.
Variance and Covariance: Properties and Examples
Explores variance, covariance, and practical applications in statistics and probability.