chapter 3: descriptive study of bivariate data. univariate data: data involving a single variable....

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Chapter 3: Descriptive Study

of Bivariate Data

• Univariate Data: data involving a single variable.• Multivariate Data: data involving more than one variable. • Bivariate Data: data involving two variables.

Bivariate Data

• There are two types of Bivariate Data: Bivariate Categorical Data and Bivariate Measurement Data.

Univariate vs. Bivariate

• Univariate Categorical :

• Bivariate Categorical:

Univariate vs. Bivariate

• Univariate Measurement: Bivariate Measurement:

SUMMARIZATION OF BIVARIATE CATEGORICAL DATA

Calculation of Relative Frequencies and make a contingency table

Data:

• The total frequency for any row is given in the right-hand margin and those for any column given at the bottom margin.• Both are called marginal totals.

• Depending on the specific context of a cross-tabulation, one may also wish to examine the cell frequencies relative to a marginal total.

• Data in this summary form are commonly called cross-classified or cross-tabulated data. • In statistical terminology, they are also called contingency tables.

SIMPSON’S PARADOX

Consider the data:

The proportion of males admitted: 233/ 557=.418.

Proportion of females admitted, 88/ 282 = .312.

• Does there appear to be a gender bias?

• In mechanical engineering, the proportion of males admitted, 151 / 186 = .812, is smaller the proportion of females admitted, 16/18 = .889.

• In history department, the proportion of males admitted, 82/371 = .221, is smaller than the proportion of females admitted, 72/264 =.273.

• When the data are studied department by department, the reverse but correct conclusion holds; females have a higher admission rate in both cases!• “Department” is an unrecorded or lurking variable.

• Group Work 10: Find two examples of Simpson’s Paradox. • Due: Wednesday, Sept 10th.

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