What are the special types of variables?

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Types of Variables
  • Classifying Types of Variables
  • Software Activity
  • Why Does the Type of Variable Matter?

CO-4: Distinguish among different measurement scales, choose the appropriate descriptive and inferential statistical methods based on these distinctions, and interpret the results.

CO-7: Use statistical software to analyze public health data.

Classifying Types of Variables

LO 4.1: Determine the type (categorical or quantitative) of a given variable.

LO 4.2: Classify a given variable as nominal, ordinal, discrete, or continuous.

Video: Types of Variables (3 Parts; 13:25 total time)

Variables can be broadly classified into one of two types:

  • Quantitative
  • Categorical

Below we define these two main types of variables and provide further sub-classifications for each type.

Categorical variables take category or label values, and place an individual into one of several groups.

Categorical variables are often further classified as either:

  • Nominal, when there is no natural ordering among the categories.

Common examples would be gender, eye color, or ethnicity.

  • Ordinal, when there is a natural order among the categories, such as, ranking scales or letter grades.

However, ordinal variables are still categorical and do not provide precise measurements.

Differences are not precisely meaningful, for example, if one student scores an A and another a B on an assignment, we cannot say precisely the difference in their scores, only that an A is larger than a B.

Quantitative variables take numerical values, and represent some kind of measurement.

Quantitative variables are often further classified as either:

  • Discrete, when the variable takes on a countable number of values.

Most often these variables indeed represent some kind of count such as the number of prescriptions an individual takes daily.

  • Continuous, when the variable can take on any value in some range of values.

Our precision in measuring these variables is often limited by our instruments.

Units should be provided.

Common examples would be height (inches), weight (pounds), or time to recovery (days).

One special variable type occurs when a variable has only two possible values.

A variable is said to be Binary or Dichotomous, when there are only two possible levels.

These variables can usually be phrased in a “yes/no” question. Whether nor not someone is a smoker is an example of a binary variable.

Currently we are primarily concerned with classifying variables as either categorical or quantitative.

Sometimes, however, we will need to consider further and sub-classify these variables as defined above.

These concepts will be discussed and reviewed as needed but here is a quick practice on sub-classifying categorical and quantitative variables.

Did I Get This?: Types of Variables

EXAMPLE: Medical Records

Let’s revisit the dataset showing medical records for a sample of patients

What are the special types of variables?

In our example of medical records, there are several variables of each type:

  • Age, Weight, and Height are quantitative variables.
  • Race, Gender, and Smoking are categorical variables.

 Comments:

  • Notice that the values of the categorical variable Smoking have been coded as the numbers 0 or 1.

It is quite common to code the values of a categorical variable as numbers, but you should remember that these are just codes.

They have no arithmetic meaning (i.e., it does not make sense to add, subtract, multiply, divide, or compare the magnitude of such values).

Usually, if such a coding is used, all categorical variables will be coded and we will tend to do this type of coding for datasets in this course.

  • Sometimes, quantitative variables are divided into groups for analysis, in such a situation, although the original variable was quantitative, the variable analyzed is categorical.

A common example is to provide information about an individual’s Body Mass Index by stating whether the individual is underweight, normal, overweight, or obese.

This categorized BMI is an example of an ordinal categorical variable.

  • Categorical variables are sometimes called qualitative variables, but in this course we’ll use the term “categorical.”

Software Activity

LO 7.1: View a dataset in EXCEL, text editor, or other spreadsheet or statistical software.

LO 4.1: Determine the type (categorical or quantitative) of a given variable.

Learn By Doing: Exploring a Dataset using Software

Why Does the Type of Variable Matter?

The types of variables you are analyzing directly relate to the available descriptive and inferential statistical methods.

It is important to:

  • assess how you will measure the effect of interest and
  • know how this determines the statistical methods you can use.

As we proceed in this course, we will continually emphasize the types of variables that are appropriate for each method we discuss.

For example:

EXAMPLE:

To compare the number of polio cases in the two treatment arms of the Salk Polio vaccine trial, you could use

  • Fisher’s Exact Test
  • Chi-Square Test

To compare blood pressures in a clinical trial evaluating two blood pressure-lowering medications, you could use

  • Two-sample t-Test
  • Wilcoxon Rank-Sum Test

(Optional) Great Resource: : UCLA Institute for Digital Research and Education – What statistical analysis should I use?

Tagged as: Binary Variable, Categorical Variable, CO-4, CO-7, Coded Categorical Variables, Continuous Variable, Dichotomous Variable, Discrete Variable, LO 4.1, LO 4.2, LO 7.1, Nominal Variable, Ordinal Variable, Preliminaries, Quantitative Variable, Type (of variable)

What are the 4 types of variables?

You can see that one way to look at variables is to divide them into four different categories ( nominal, ordinal, interval and ratio).

What are the 3 types of variables?

There are three main variables: independent variable, dependent variable and controlled variables. Example: a car going down different surfaces.

What are the 2 basic types of variables?

You can think of independent and dependent variables in terms of cause and effect: an independent variable is the variable you think is the cause, while a dependent variable is the effect. In an experiment, you manipulate the independent variable and measure the outcome in the dependent variable.

What are the 10 variables?

10 types of variables.
Independent variables..
Dependent variables..
Quantitative variables..
Qualitative variables..
Intervening variables..
Moderating variables..
Extraneous variables..
Confounding variables..