Please fill in the below form to receive our Latest Offers/Discounts for Individuals.
Why Attend This Training Course?
The SPSS for Beginners (Statistical Package for Social Sciences) short course provides you with fundamental training in the use of the the Statistical Package for Social Sciences (SPSS) software widely used in statistical data analysis. During the course, you will learn basic functionalities of the SPSS software and progress to a number of higher-level techniques that can be specifically used in the social sciences environment. The course is presented through a combination of presentations and hands-on sessions to help you perform data entry and analysis to create accurate tables and graphs that can be used in the classroom.
What Is The Training Course Methodology?
This training course methodology depends on enabling participants to interact and exchange experiences, explore their competencies and achieve their career aspirations, using forward-thinking training arts, such as theoretical lectures and/or open discussion to exchange opinions and experiences, scenarios, innovative thinking brainstorming. Participants will receive an agenda including training material as a reference, in addition to some extra notes and booklets.
Who Should Attend This Training Course?
This training course is designed for individuals with some familiarity with SPSS, such as opening SPSS and saving output, is desired, but it is not a requirement.
What Are The Training Course Objectives?
Introduction about the basic functionalities of SPSS and the use of data editor
Ability to modifying data files
Understand tools and techniques in data preparation
Learn to choose the correct statistical tests and in running statistical analyses
Ability to read constructing tables and graphs
Master in interpreting the data and graphs
Discuss more advance topics such as nonparametric techniques
What Is The Training Course Curriculum?
Theoretical Aspects of Measurement: Introduction
Deciding on a conceptual framework
Constructing an assessment framework
Item construction
Using Data Editor
Entering numeric data
Entering string data
Defining data
Modifying Data Files
Deleting and inserting a case
Deleting and inserting a variable
Sorting and splitting data files
Selecting cases
Computing new variables
Data Preparation
Data errors
Data transformation
Running Analysis
Descriptive statistics
Assessing normality
Interpreting output generated by assessing normality