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Univariate analysis contrasts with ] – the analysis of two variables simultaneously – or multivariate analysis – the analysis of multiple variables simultaneously.<ref name=babbie/> Univariate analysis is also used primarily for descriptive purposes, while bivariate and multivariate analysis are geared more towards explanatory purposes.<ref name=babbie/> Univariate analysis is commonly used in the first stages of research, in analyzing the data at hand, before being supplemented by more advance, inferential bivariate or ].<ref>Harvey Russell Bernard, , Rowman Altamira, 2006, ISBN 0-7591-0869-2, p. 549</ref><ref>A. Cooper, Tony J. Weekes, , Rowman & Littlefield, 1983, ISBN 0-389-20383-1, pp. 50–51</ref> Univariate analysis contrasts with ] – the analysis of two variables simultaneously – or multivariate analysis – the analysis of multiple variables simultaneously.<ref name=babbie/> Univariate analysis is also used primarily for descriptive purposes, while bivariate and multivariate analysis are geared more towards explanatory purposes.<ref name=babbie/> Univariate analysis is commonly used in the first stages of research, in analyzing the data at hand, before being supplemented by more advance, inferential bivariate or ].<ref>Harvey Russell Bernard, , Rowman Altamira, 2006, ISBN 0-7591-0869-2, p. 549</ref><ref>A. Cooper, Tony J. Weekes, , Rowman & Littlefield, 1983, ISBN 0-389-20383-1, pp. 50–51</ref>


A basic way of presenting univariate data is to create a ] of the individual cases, which involves presenting the number of attributes of the variable studied for each case observed in the ].<ref name=babbie/> This can be done in a table format, with a ] or a similar form of graphical representation.<ref name=babbie/> A sample distribution table and a bar chart for an univariate analysis are presented below (the table shows the frequency distribution for a variable "age" and the bar chart, for a variable "] rate"): - this is an edit of the previous as the chart is an example of bivariate, not univariate analysis - as stated above, bivariate analysis is that of two variables and there are 2 variables compared in this graph: incarceration and country.Thank you A basic way of presenting univariate data is to create a ] of the individual cases, which involves presenting the number of attributes of the variable studied for each case observed in the ].<ref name=babbie/> This can be done in a table format, with a ] or a similar form of graphical representation.<ref name=babbie/> A sample distribution table and a bar chart for an univariate analysis are presented below (the table shows the frequency distribution for a variable "age" and the bar chart, for a variable "] rate"): - this is an edit of the previous as the chart is an example of bivariate, not univariate analysis - as stated above, bivariate analysis is that of two variables and there are 2 variables compared in this graph: incarceration and country.


] chart (ranked from lowest to highest) comparing international ] rates in 2002.]] ] chart (ranked from lowest to highest) comparing international ] rates in 2002.]]
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There are several tools used in univariate analysis data; their applicability depends on whether we are dealing with a ] (such as age) or a ] (such as gender).<ref name=babbie/> There are several tools used in univariate analysis; their applicability depends on whether we are dealing with a ] (such as age) or a ] (such as gender).<ref name=babbie/>


In addition to frequency distribution, univariate analysis commonly involves reporting measures of ] (location).<ref name=babbie/> This involves describing the way in which ] tend to cluster around some value.<ref>Dodge, Y. (2003) , OUP. ISBN 0-19-920613-9, p. 61</ref> In the univariate analysis, the measure of central tendency is an ] of a set of ], the word average being variously construed as ], ], ] or other measure of location, depending on the context.<ref name=babbie/> In addition to frequency distribution, univariate analysis commonly involves reporting measures of ] (location).<ref name=babbie/> This involves describing the way in which ] tend to cluster around some value.<ref>Dodge, Y. (2003) , OUP. ISBN 0-19-920613-9, p. 61</ref> In the univariate analysis, the measure of central tendency is an ] of a set of ], the word average being variously construed as ], ], ] or other measure of location, depending on the context.<ref name=babbie/>


Another set of measures used in the univariate analysis, that's complementing the study of the central tendency, involves studying the ].<ref name=babbie/> Those measurements look at how the values are distributed around values of central tendency.<ref name=babbie/> The dispersion measures most often involve studying the ], ], and the ].<ref name=babbie/> Another set of measures used in the univariate analysis, complementing the study of the central tendency, involves studying the ].<ref name=babbie/> Those measurements look at how the values are distributed around values of central tendency.<ref name=babbie/> The dispersion measures most often involve studying the ], ], and the ].<ref name=babbie/>


==See also== ==See also==

Revision as of 23:56, 29 October 2012

Univariate analysis is the simplest form of quantitative (statistical) analysis. The analysis is carried out with the description of a single variable and its attributes of the applicable unit of analysis. For example, if the variable age was the subject of the analysis, the researcher would look at how many subjects fall into a given age attribute categories.

Univariate analysis contrasts with bivariate analysis – the analysis of two variables simultaneously – or multivariate analysis – the analysis of multiple variables simultaneously. Univariate analysis is also used primarily for descriptive purposes, while bivariate and multivariate analysis are geared more towards explanatory purposes. Univariate analysis is commonly used in the first stages of research, in analyzing the data at hand, before being supplemented by more advance, inferential bivariate or multivariate analysis.

A basic way of presenting univariate data is to create a frequency distribution of the individual cases, which involves presenting the number of attributes of the variable studied for each case observed in the sample. This can be done in a table format, with a bar chart or a similar form of graphical representation. A sample distribution table and a bar chart for an univariate analysis are presented below (the table shows the frequency distribution for a variable "age" and the bar chart, for a variable "incarceration rate"): - this is an edit of the previous as the chart is an example of bivariate, not univariate analysis - as stated above, bivariate analysis is that of two variables and there are 2 variables compared in this graph: incarceration and country.

This is a frequency distribution chart (ranked from lowest to highest) comparing international incarceration rates in 2002.
Age range Frequency Percent
under 18 10 5
18–29 50 25
29–45 40 20
45–65 40 20
over 65 60 30
Valid cases: 200
Missing cases: 0

There are several tools used in univariate analysis; their applicability depends on whether we are dealing with a continuous variable (such as age) or a discrete variable (such as gender).

In addition to frequency distribution, univariate analysis commonly involves reporting measures of central tendency (location). This involves describing the way in which quantitative data tend to cluster around some value. In the univariate analysis, the measure of central tendency is an average of a set of measurements, the word average being variously construed as (arithmetic) mean, median, mode or other measure of location, depending on the context.

Another set of measures used in the univariate analysis, complementing the study of the central tendency, involves studying the statistical dispersion. Those measurements look at how the values are distributed around values of central tendency. The dispersion measures most often involve studying the range, interquartile range, and the standard deviation.

See also

References

  1. ^ Earl R. Babbie, The Practice of Social Research", 12th edition, Wadsworth Publishing, 2009, ISBN 0-495-59841-0, p. 426-433
  2. Harvey Russell Bernard, Research methods in anthropology: qualitative and quantitative approaches, Rowman Altamira, 2006, ISBN 0-7591-0869-2, p. 549
  3. A. Cooper, Tony J. Weekes, Data, models, and statistical analysis, Rowman & Littlefield, 1983, ISBN 0-389-20383-1, pp. 50–51
  4. Dodge, Y. (2003) The Oxford Dictionary of Statistical Terms, OUP. ISBN 0-19-920613-9, p. 61
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