The level of measurement of a variable in mathematics and statistics is a classification that was proposed in order to describe the nature of information contained within numbers assigned to objects and, therefore, within the variable. The levels were proposed by Stanley Smith Stevens in his 1946 article On the theory of scales of measurement. Different mathematical operations on variables are possible, depending on the level at which a variable is measured. According to the classification scheme, in statistics the kinds of descriptive statistics and significance tests that are appropriate depend on the level of measurement of the variables concerned. Four levels of measurement were proposed by Stevens:
- nominal,
- ordinal,
- interval and
- ratio.
Nominal measurement
In this classification,
names are assigned to objects as labels. These names come from a given small set, and are meant to identify categories used for classifying the data. They are the "variable values". If two entities have the same name associated with them, they belong to the same category, and that is the only significance that they have. For practical data processing the names may be
numerals, but in that case the
numerical value of these numerals is irrelevant. The only comparisons that can be made between variable values are equality and inequality. There are no "less than" or "greater than" relations among the classifying names, nor operations such as addition or subtraction. Examples include: a country represented by its international telephone access code, the
marital status of a person, or the make of a car. The only kind of measure of
central tendency is the mode.
Statistical dispersion may be measured with a
variation ratio,
index of qualitative variation, or via
information entropy, but no notion of
standard deviation exists. Variables that are measured only nominally are also called
categorical variables. In
social research, variables measured at a nominal level include
gender,
race,
religious affiliation,
political party affiliation,
college major, and
birthplace.
Ordinal measurement
In this classification, the numbers assigned to objects represent the
rank order (1st, 2nd, 3rd etc.) of the entities measured. The numbers are called
ordinals. The variables are called ordinal variables or
rank variables. Comparisons of greater and less can be made, in addition to equality and inequality. However operations such as conventional addition and subtraction are still meaningless. Examples include the
Mohs scale of mineral hardness; the results of a horse race, which say only which horses arrived first, second, third, etc. but no time intervals; and most measurements in
psychology and other
social sciences, for example
attitudes like preference,
conservatism or
prejudice and
social class. The
central tendency of an ordinally measured variable can be represented by its mode or its
median; the latter gives more information.
Interval measurement
The numbers assigned to objects have all the features of ordinal measurements, and in addition equal differences between measurements represent equivalent intervals. That is, differences between arbitrary pairs of measurements can be meaningfully compared. Operations such as addition and subtraction are therefore meaningful. The zero point on the scale is arbitrary; negative values can be used.
Ratios between numbers on the scale are not meaningful, so operations such as multiplication and division cannot be carried out directly. But ratios of
differences can be expressed; for example, one difference can be twice another. The central tendency of a variable measured at the interval level can be represented by its mode, its
median or its
arithmetic mean; the mean gives the most information. Variables measured at the interval level are called interval variables, or sometimes scaled variables, though the latter usage is not obvious and is not recommended. Examples of interval measures are the year
date in many
calendars, and
temperature in
Celsius scale or
Fahrenheit scale. About the only interval measures commonly used in social scientific research are constructed measures such as standardized
intelligence tests (
IQ).
Ratio measurement
The numbers assigned to objects have all the features of interval measurement and also have meaningful ratios between arbitrary pairs of numbers. Operations such as multiplication and division are therefore meaningful. The zero value on a ratio scale is non-arbitrary. Variables measured at the ratio level are called ratio variables. Most physical quantities, such as
mass,
length or
energy are measured on ratio scales; so is temperature measured in
kelvins, that is, relative to
absolute zero. The central tendency of a variable measured at the ratio level can be represented by its mode, its
median, its
arithmetic mean, or its
geometric mean; however as with an interval scale, the arithmetic mean gives the most useful information. Social variables of ratio measure include
age, length of residence in a given place, number of organisations belonged to or number of church attendances in a particular times.
Interval and/or ratio measurement are sometimes called "true measurement", though it is often argued this usage reflects a lack of understanding of the uses of ordinal measurement. Only ratio or interval scales can correctly be said to have units of measurement.
Debate on classification scheme
There has been, and continues to be, debate about the merit of the classifications, particularly in the cases of the nominal and ordinal classifications (Michell, 1986). Thus, while Stevens' classification is widely adopted, it is not universally accepted (for example, Velleman & Wilkinson, 1993).
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Among those who accept the classification scheme, there is also some controversy in behavioural sciences over whether the mean is meaningful for ordinal measurement. Mathematically it is not, but some behavioural scientists use it anyway. This is often justified on the basis that ordinal scales in behavioural science are really somewhere between true ordinal and interval scales -- although the interval difference between two ordinal ranks is not constant, it is often of the same order of magnitude. Thus, some argue, that so long as the unknown interval difference between ordinal scale ranks is not too variable, interval scale statistics such as means can meaningfully be used on ordinal scale variables.
L. L. Thurstone made progress toward developing a justification for obtaining interval-level measurements based on the law of comparative judgment. Further progress was made by Georg Rasch, who developed the probabilistic Rasch model which provides a theoretical basis and justification for obtaining interval-level measurements from counts of observations such as total scores on assessments.
References
- Babbie, E., 'The Practice of Social Research', 10th edition, Wadsworth, Thomson Learning Inc., ISBN 0534620299
- Michell, J. (1986). Measurement scales and statistics: a clash of paradigms. Psychological Bulletin, 3, 398-407.
- Stevens, S.S. (1946). On the theory of scales of measurement. Science, 103, 677-680.
- Stevens, S.S. (1951). Mathematics, measurement and psychophysics. In S.S. Stevens (Ed.), ''Handbook of experimental psychology (pp. 1-49). New York: Wiley.
- Velleman, P. F. & Wilkinson, L. (1993). Nominal, ordinal, interval, and ratio typologies are misleading. The American Statistician, 47(1), 65-72. line http://www.spss.com/research/wilkinson/Publications/Stevens.pdf
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