Statistics and Data Analysis ( الإحصاء وتحليل البيانات)
Learn how to apply probability and statistics to solve real problems and take decisions in business
Description
Welcome to Engineering Statistics and Probability Theory
This course will go over theories and implementation of engineering statistics and probability theories to real business problems. Each section has many examples, quizzes, and assessment exams.
Our course includes professional HD Videos with extensive case studies to show you how to apply this knowledge to solve real and practical problems.
In this course we will cover:
Introduction to statistics and probability
Why Study Statistics?
Types of data
Definitions: Populations, units, and Sample
Generation of random number table
The difference between Parameters & Statistics
Branches of Statistics (Descriptive and Inferential statistics)
Pareto chart
Dot plot
Scatter plot
Frequency distribution
Histogram
Stem and Leaf display
Measures of Central Tendency (Mean, Median, and Mode)
Measures of Variation (Range, Variance and Standard Deviation)
Weighted Mean
Standard Deviation for Grouped Data
Coefficient of variation
Definitions (Probability experiment, Outcome, Sample space, and Event)
Types of Probability
Classical (or theoretical) Probability
Empirical (or statistical) Probability
Subjective Probability
Combining events
Counting Principles
Multiplication of choices
Permutation
Combination
The Axioms of Probability
Venn diagrams
The Addition Rule
Mutually Exclusive Events
Conditional Probability
The Multiplication Rule
Independent Events
Bayes’ Theorem
Discrete Probability Distributions
Types of Random Variables
Discrete Probability Distributions (DPD)
Binomial Distribution
Hypergeometric Distribution
Poisson Distribution
Mean, Variance, and Standard Deviation of DPD
Continuous Probability Distributions
Normal Distribution
The Standard Normal Distribution
The Standard Normal Distribution Tables
The Normal Approximation to the Binomial Distribution
Sampling distributions
Populations and Samples
The Sampling Distribution of the Mean
The Sampling Distribution of the Mean (σ Known) –> z-distribution
The Sampling Distribution of the Mean (σ Unknown) –> t-distribution
Sampling Distribution of the Variance –> χ2-distribution
F - Distribution
Estimation of Population’s
Estimation of Population’s Mean
Point Estimation
Interval Estimation
Normal (s known). Or n ³ 30
Normal (s Unknown).
Calculation of Sample Size
Tests of Hypotheses
Introduction to Hypothesis Testing
Type I and type II errors
Level of Significance
Hypotheses Testing Process
Test Statistic Selection
Statistical Decision
Hypothesis Testing for the Population’s Mean:
Large Samples; n ≥ 30 or Normal population (σ Known) à (z)
Small Samples: n < 30 and Normal population (σ Unknown) à (t)
Tests of Hypotheses Using P-value
Hypothesis Testing for Proportions
Correlation and Regression
Correlation Coefficient r
scatter plot
Correlation Coefficient
Linear Regression
Regression Line
Linear combination of variables
Covariance
Correlation using covariance
and much more!
What You Will Learn!
- Understand the basics of probability theory
- Perform descriptive statistics calculations
- Present results in different graphical formats
- Perform basic probability theorems and Bayes' theorem
- Understand and Perform probability calculations for discrete probability density functions
- Using Binomial, Hypergeometric, and Poisson distributions
- Understand and Perform probability calculations for continuous probability density functions
- Using Normal distribution
- Perform calculations for the sampling distribution of the mean (central limit theorem) and the variance (χ2 and F distributions).
- Understand and perform calculations for parameter estimation
- Perform hypothesis testing
- Perform simple linear regression and correlation
- Combination and Permutation
- Calculate Covariance
- Linear Combination of variables
Who Should Attend!
- Engineering Students
- Data Analysts
- Engineers
- Statisticians
- Statistic Students
- Researchers