Probability & Statistics

About Course

Our online course on probability and statistics is designed to cover all the essential units that college students are likely to encounter in their studies. Throughout the course, students will dive into the fascinating world of probability theory and statistical analysis, gaining a solid foundation in these fundamental subjects.

By the end of this course, students will have a solid grasp of probability and statistics, enabling them to analyze data, make informed decisions, and interpret the results of statistical studies. Whether pursuing a degree in mathematics, social sciences, or any other field that requires a strong understanding of probability and statistics, this course equips students with the knowledge and skills they need to excel.

Show More

What Will You Learn?

  • Introduction to Probability: Basic concepts of probability theory, Probability rules and axiom, Combinatorics and counting principles and Conditional probability and independence
  • Discrete Probability Distributions: Probability mass functions (PMFs) and cumulative distribution functions (CDFs), Binomial, geometric, and hypergeometric distributions, Poisson distribution and its applications and Expected value, variance, and standard deviation
  • Continuous Probability Distributions: Probability density functions (PDFs) and cumulative distribution functions (CDFs), Uniform, exponential, normal (Gaussian), and gamma distributions, Central Limit Theorem and its significance and Calculating probabilities using standard normal tables and z-scores
  • Statistical Inference: Sampling methods and sampling distributions, Point estimation and confidence intervals, Hypothesis testing and p-values and Type I and Type II errors, power, and sample size determination
  • Regression and Correlation: Simple linear regression and multiple regression models, estimating regression coefficients and interpreting their significance, Residual analysis and assessing model fit and Correlation and its properties
  • Experimental Design and Analysis of Variance (ANOVA): Principles of experimental design, One-way and two-way ANOVA, Post-hoc tests and multiple comparisons and Factorial designs and interactions

Student Ratings & Reviews

No Review Yet
No Review Yet