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Project: Mathematics Assessment - Pre/Post Test

(Mathematics department pre/post assessment data)

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Description of the project:

A pre/post-test was conducted to assess how much students understand basic concepts of a mathematics course. A survey of 20 items was conducted at the beginning and the end of a semester. The survey consists of 5 items of background information, 5 items of attitude questions and 10 items of knowledge questions. For demonstration purpose,  2 background, 2 attitudes and 3 knowledge items will be used here.

Variables in the data set:

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College

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Grade: 1: Freshman, 2: Sophomore, 3: Junior, 4: Senior, 5: Graduate

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Attitude 1 : values are 1 to 5, with 1: strongly agree,  2: Agree, 3: Disagree and 4: Strongly disagree, 5: Don't Know

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Attitude 2: values are 1 to 5, with 1: strongly agree,  2: Agree, 3: Disagree and 4: Strongly disagree, 5: Don't Know

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Q1: choose from 1 to 5 with 5 being 'Not familiar'.  Only one answer is correct.

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Q2: choose from 1 to 5 with 5 being 'Not familiar'.  Only one answer is correct.

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Q3: choose from 1 to 5 with 5 being 'Not familiar'.  Only one answer is correct.

Sample size: This assessment is conducted every year. The data is a portion of the pre and post tests of a math course for this year. Ninety students' data are used for this demonstration.

In this on-line workshop, you will find many movie clips. Each movie clip will demonstrate some specific usage of SPSS.

Analysis

For analyzing the math assessment data, we need to do the following data manipulation:

click here to watch Reading Files     

click here to watch Defining Variables     

click here to watch  Merging Files     

click here to watch Transforming Variables   

After the data manipulation, we may conduct the following analysis:

click here to watch Frequencies and Descriptives   Perform frequency and descriptive summary

click here to watch Crosstabs Procedures   Perform crosstabs analysis to compare.

click here to watch Explore Procedures   Check for normality for pre and post score variables.

click here to watch T-test  Perform paired t-test to compare pre and post scores.

click here to watch One-way ANOVA  Check for constant variance of the post scores for each gender group, and for each grade level.

click here to watch Univariate GLM Perform Analysis of Covariance to compare the post scores for gender difference and grade level difference with pre-test scores as a covariate.