Statistics Level 1 Training Course
This course has been created for people who require general statistics skills. This course can be tailored to a specific area of expertise like market research, biology, manufacturing, public sector research, etc...
Course Outline
Introduction
- Descriptive Statistics
- Inferential Statistics
- Sampling Demonstration
- Variables
- Percentiles
- Measurement
- Levels of Measurement
- Measurement Demonstration
- Basics of Data Collection
- Distributions
- Summation Notation
- Linear Transformations
- Exercises
Graphing Distributions
- Qualitative Variables
- Quantitative Variables
- Stem and Leaf Displays
- Histograms
- Frequency Polygons
- Box Plots
- Box Plot Demonstration
- Bar Charts
- Line Graphs
- Exercises
Summarizing Distributions
- Central Tendency
- What is Central Tendency
- Measures of Central Tendency
- Balance Scale Simulation
- Absolute Difference Simulation
- Squared Differences Simulation
- Median and Mean
- Mean and Median Simulation
- Additional Measures
- Comparing measures
- Variability
- Measures of Variability
- Estimating Variance Simulation
- Shape
- Comparing Distributions Demo
- Effects of Transformations
- Variance Sum Law I
- Exercises
Normal Distributions
- History
- Areas of Normal Distributions
- Varieties of Normal Distribution Demo
- Standard Normal
- Normal Approximation to the Binomial
- Normal Approximation Demo
- Exercises
Requirements
Delegates should have a solid high school level maths knowledge.
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Testimonials (4)
The focus more on practical concepts, doing different exercises in statistics software.
Florin - Zentiva SA
Course - Statistics Level 1
Information was explained in easy to understand manner. The trainer was very patient, explained in detail any questions we had.
Oana - Zentiva SA
Course - Statistics Level 1
The fact that we were practicing, and the trainer was opened to repeat if there were steps which were not clear
Alexandra - Zentiva SA
Course - Statistics Level 1
The fact that we had the time to cover some useful extras.
Alina Vishniakova - TUI Business Services GmbH
Course - Statistics Level 1
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