Statistical Analysis using SPSS Training Course
SPSS is software for editing and analyzing data.
Course Outline
- Getting started with SPSS
- Obtaining, Editing, and saving Statstical output
- Manipulating Data
- Descriptive Statistics Procedures
- Evaluating Score Distribution Assumptions
- t Tests
- Univariate Group Differences: Anova and Ancova
- Multivariate Group Dfferences: Manova
- Nonparametric procedures for ananlysing frequesncy data
- Correlations
- Regression with Quantitative Variables
- Regression with Categorical Variables
- Principal Components Analysys and Factor Analysis
Open Training Courses require 5+ participants.
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Testimonials (4)
We were using road accident data for practicals
Maphahamiso Ralienyane - Road Safety Department
Course - Statistical Analysis using SPSS
Trainer used our data (that we understand)to make training exercises.
Maphahamiso Ralienyane - Road Safety Department
Course - Statistical Analysis using SPSS
It was insightful and I gained a lot of new skills
Mamonyane Taoana - Road Safety Department
Course - Statistical Analysis using SPSS
the trainer had patience, and was eager to make sure we all understood the topics, the classes were fun to attend
Mamonyane Taoana - Road Safety Department
Course - Statistical Analysis using SPSS
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