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When it comes to data and categorising it but unfortunately, it is a little bit more complicated than simply qualitative and quantitative data. Another way data can be categorised is by its levels of measurement. There are a total of four, and we'll try to break each one down so that you can not want to run away every time…
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Jetzt kostenlos anmeldenWhen it comes to data and categorising it but unfortunately, it is a little bit more complicated than simply qualitative and quantitative data. Another way data can be categorised is by its levels of measurement. There are a total of four, and we'll try to break each one down so that you can not want to run away every time you see data.
In data, there are four levels of measurement nominal, ordinal, interval and ratio.
When psychologists conduct their research, understanding the measurement variables in statistics is one of the most critical steps.
Thus, in statistics, researchers use measurement variables to describe and classify the variable type and how to measure it.
The four levels of measurement are scales used to measure variables in research.
Regarding data analysis, certain conditions must be met when conducting statistical tests. For instance, the dependent variables data should be ratio or interval if aiming to conduct a parametric test.
The nominal level of measurement in psychology consists of 'named' or 'labelled data'. It is identified as a level of measurement that collects categorical data.
Categorical data is data that is subdivided into groups, i.e. categories.
Nominal data is characterised by the following:
They are not usually used for evaluation calculations but rather for grouping data or participants;
Most nominal data is used for qualitative data, as this type of data has limited use for quantified data. Finally, we cannot use nominal data to show differences between data because there is no significance in the order of nominal data.
Typically questions in questionnaires that have a fixed response that doesn't involve you rating something generate a nominal level of measurement.
'What is your sex?'
The nominal data could be 'male', 'female', or 'prefer not to answer'.
If we break down this example response, it can be identified that the data is split into categories (i.e. each sex). However, the data ranking is unimportant, meaning we can't determine if being born male or female is more important than the other.
Similar to the nominal level of measurement, ordinal data is identified as categorical. However, the ranking of the data is vital.
The ordinal level of measurement in psychology is categorical data, and the values have a fixed set or order. The intervals between these data points are not equal.
Ordinal data have the following characteristics:
A Likert scale is a psychometric test used to get participants to rate on a scale.
Ordinal data is usually qualitative because we cannot determine the numerical significance between values. It is typically used for data reflected in categories, i.e., ordinal data has limited use for quantitative data.
Let's see an example of ordinal data and how we can identify the response as ordinal.
Examples of questions in a questionnaire that collect ordinal data are:
'On a scale of 1 to 5, rate how happy this video makes you'.
OR,
'What socioeconomic status is most representative of you?'
Participants can only answer with: '1', '2', '3', '4' and '5'.
OR
'Working class', 'Middle class' or 'Upper class'.
In this example, although the order of the data collected is necessary, the differences between the values are not, making it an ordinal level of measurement example.
We identified nominal and ordinal data as categorical data, but ratio data is categorised as the opposite of this as it collects continuous data, meaning it can have an infinite value,
The ratio level of measurement in psychology is classified as data of infinite value, and the order of the values is important. It can be quantified to understand the difference between each response.
Ratio data is characterised by the following:
Ratio data is collected when quantitative data is collected rather than qualitative because researchers can identify the quantifiable difference between the measured values.
Examples of data where ratio measurement is used are participants' height, age and speed. None of the examples listed can have a value of less than 0, and the data is continuous because the values reported can have an infinite number of values.
Let's break down a research example to highlight how the ratio level of measurement in psychology may be collected.
A study investigated how height (the dependent variable) changed with age (the independent variable).
Height is clearly a ratio level of measurement example. The difference between height scores is quantifiable, e.g. someone with a height of 5ft is 1 foot shorter than someone who is 6ft tall, and you can't be measured at a value of 0 or lower.
Now, age can be a tricky one. But think about it we're never really 0 years old; we may be 0 and 1 second years old or older. So age does have an absolute value of 0, and the difference between ages is equally important. For instance, if you are six years old, you will always be identified as younger than someone over six years old.
Interval data is a fixed unit, and the distance between the adjacent numbers is equal.
Similar to ratio data, interval data collect continuous data.
The interval level of measurement in psychology is a type of data that is essentially the same as ratio data, except that the values can have a value of 0 or below (0 is not absolute).
Interval data are characterised by the following:
Like ratio data, interval levels measure quantitative data because researchers can determine the quantifiable difference between the measured values.
An example of collected data that can be classified as interval data measurement is temperature since the temperature can be 0 or below.
Let's look at an interval level of measurement example in psychological research.
Research has noted that various factors affect test performance; a study was carried out to identify if temperature affected IQ scores.
IQ scores are clearly a ratio level of measurement example. The difference between IQ scores is quantifiable, e.g. someone with an IQ score of 45 has a score 2x lower than someone who has a score of 90. Although it's heard of, you can get a score of 0, meaning this test score does not have an absolute 0 value.
Remember, interval data is classified as something that can score 0 or lower, but in ratio data, it is impossible to collect a value of 0.
Similarly, we can quantitively identify the difference between temperatures, and you can measure a temperature of 0 and below.
When conducting research, it is crucial to determine the data's level of measurement because this helps us understand how to interpret the data, what statistical test should be used, and what information the data can give us.
Look at the table below to see how we identify the type of data to use.
Level of Measurement | Is data discrete or continuous? | Is the order of the data important? | Can an absolute 0 value be measured? |
Ordinal | Discrete | Yes | No |
Nominal | Discrete | No | No |
Ratio | Continuous | No | Yes |
Interval | Continuous | No | No |
From identifying the level of measurement, researchers can determine how data was collected, e.g. were the methods qualitative or quantitative, how the data can be classified and what type of statistical tests can be used.
For instance, continuous data allows researchers to carry out a correlational analysis.
Not only does the level of measurement in statistics influence the type of test that should be carried out it also influences the inferences.
Typically, researchers can make generalisable inferences from ratio and interval data as these allow researchers to use parametric tests. The same cannot be said about nominal and ordinal data.
The level of measurement is important because it influences later statistical analyses and the conclusions that can be drawn.
The nominal level of measurement in psychology is measurements of ‘named’ or ‘labelled data’ and can also be identified as categorical data. Examples of questionnaires used to collect nominal data are ‘What is your gender?’ or ‘What is your ethnicity?’
In data, there are four levels of measurement nominal, ordinal, interval and ratio.
We can determine the level of measurement by identifying the characteristics of the data and identifying which level of measurement the characteristics correspond to, e.g., continuous data that can measure an absolute 0 would be recognised as a ratio level of measurement.
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