jagomart
digital resources
picture1_Basic Statistics Ppt 70021 | Spss Notes July Support Sessionzp37310


 142x       Filetype PPTX       File size 1.60 MB       Source: www.up.ac.za


File: Basic Statistics Ppt 70021 | Spss Notes July Support Sessionzp37310
introduction what will be covered in this course variables and constants levels of measurement samples and populations data preparation data transformation codebook statistics descriptives inferentials parametric non parametric creating a ...

icon picture PPTX Filetype Power Point PPTX | Posted on 29 Aug 2022 | 3 years ago
Partial capture of text on file.
                       Introduction
   
     What will be covered in this course:
      Variables and Constants
      Levels of measurement
      Samples and Populations
      Data Preparation
      Data Transformation
      Codebook
      Statistics (Descriptives, Inferentials (Parametric & Non-
       Parametric))
      Creating a Datafile
      Screening & Cleaning of the data
      Preliminary Analysis (Including assessing normality)
      Looking at advanced statistics
               Some basic concepts
    
      Variables and Constants
    
      When we are measuring height or weight 
      these can be seen as variables.
       The reason is that their measurement can vary from 
       time to time
    
      When we deal with a quantity or value that 
      does not change it is referred to as a 
      constant for example the speed of light
                         Variables
    
      Important terms regarding variables:
       Independent Variable (A variable thought to be 
        the cause of some effect)
       Dependent Variable (A variable thought to be 
        affected by changes in the independent variable)
       Predictor Variable (A variable thought to predict 
        an outcome – another term for independent 
        variable)
       Outcome Variable (A variable thought to change 
        as a function of changes in a predictor variable – 
        synonymous with dependent variable) 
                      Variables
    
      Continuous VS Discrete Variables
    
      Continuous Variable (Can take any value 
     in a defined range – weight or height as an 
     example)
    
      Discrete Variable (These variables can 
     only take certain values – example in a race 
       st nd      rd
     1 , 2  and 3  place can be awarded not 
     3.25rd or assigning 1 for males and 2 for 
     females there isn’t a 1.5 category. Discrete 
     Variables also known as Categorical 
     Variables)
                                Level of Measurement
         
             Nominal (Indicate that there is a difference 
             between categories of objects, persons or 
             characteristics – numbers are used here as 
             labels)
              Cannot do any maths (operations or relations) 
              Example:
                   Gender (1 = Male, 2 = Female)
                   Psychopathology (1 = Schizophrenic, 2 = Manic 
                    Depressive, 3 = Neurotic)
The words contained in this file might help you see if this file matches what you are looking for:

...Introduction what will be covered in this course variables and constants levels of measurement samples populations data preparation transformation codebook statistics descriptives inferentials parametric non creating a datafile screening cleaning the preliminary analysis including assessing normality looking at advanced some basic concepts when we are measuring height or weight these can seen as reason is that their vary from time to deal with quantity value does not change it referred constant for example speed light important terms regarding independent variable thought cause effect dependent affected by changes predictor predict an outcome another term function synonymous continuous vs discrete take any defined range only certain values race st nd rd place awarded assigning males females there isn t category also known categorical level nominal indicate difference between categories objects persons characteristics numbers used here labels cannot do maths operations relations gender ...

no reviews yet
Please Login to review.