EDIT 6900: Research Methods in Instructional Technology

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EDIT 6900: Research Methods in Instructional Technology. Lloyd Rieber Instructor. Eunjung Oh Graduate Assistant. UGA, Instructional Technology Spring, 2008 If you can hear audio, click If you cannot hear audio, click If you have a question, click. Two Topics for Today. - PowerPoint PPT Presentation

Transcript of EDIT 6900: Research Methods in Instructional Technology

EDIT 6900: Research Methods in Instructional Technology

UGA, Instructional Technology

Spring, 2008

If you can hear audio, click

If you cannot hear audio, click

If you have a question, click

Lloyd RieberInstructor

Eunjung OhGraduate Assistant

Two Topics for Today• Continue Introduction to Quantitative

Research Methods

• Overview of a class activity on how to compute a t statistic to determine if two means (pretest and posttest) are significantly different.

Not This Week

Informal Activity

SDCSystematic Data Collection

• An informal, (hopefully) enjoyable activity designed to give you first-hand experience collecting research data

• Your Task: Go and research something of interest to you!

• Report on it informally in writing

• Give 5 minute oral report

• 10%, Due: April 9

March 26 Quantitative Research (con’t)

April 2 Quantitative Research

April 9 Preparing a Research Report

SDC Reports (in class)

April 16 Finish SDC Reports (if needed)

Research Project Presentations?

April 23 Research Project Presentations

Remaining Course Calendar

Notes About the Next RDA

Notes About the Next RDA

Final Project Rubric

Look for Email with this.

Dr. Lloyd RieberThe University of Georgia

Department of Educational Psychology& Instructional Technology

Athens, Georgia USA

EDIT 6900 Research in Instructional Technology

Part IV. Quantitative Research Methodologies

Chapters 9-11

Running an Olympic Marathon:

No Significant Difference?

• 26 miles, 385 yards

• Times of top 2 runners at 2004 Olympics in Athens, Greece:– 1. Stefano Baldini ITA 2:10:55– 2. Meb Keflezighi USA 2:11:29

• Is a difference of 34 seconds statistically significant?

Total votes cast forBush or Gore in 2000:

No Significant Difference?

Experimental Designs

Experimental design is used to identify cause-and-effect relationships.

The researcher considers many possible factors that might cause or influence a particular condition/phenomenon.

The researcher controls for all influential factors except those having possible effects.

Independent and Dependent Variables

Variable: any quality or characteristic in a research investigation that has two or more possible values.

Independent variable: a possible cause of something else (one that is manipulated)

Dependent variable: a variable that is potentially influenced by the independent variable.

The Importance of Control

Control the confounding variables

Keep some things constant.

Include a control group.

Randomly assign people to groups.

Assess equivalence before the treatment with one ore more pretests.

Expose participants to both or all experimental conditions.

Statistically control for confounding variables.

Types of Experimental Designs (1)

Pre-experimental designs

True experimental designs

Quasi-experimental designs

Overview of Experimental Designs (2)

Group Time

Group1

Group2Tx: indicates that a treatment (reflecting independent variable) is presented.

Obs: Indicates that an observation (reflecting the dependent variable) is made.

: Indicates that nothing occurs during a particular time period.

Exp: Indicates a previous experience ( an independent variable) that some participants have had and others have not; the experience has not been one that the researcher could control.

Pre-Experimental Designs

Design 1: One-shot experimental case study

Group Time

Group1 Tx Obs

Design 2: One-group pretest-posttest design

Group Time

Group1 Obs Tx Obs

Group Time

Random assignment

Group1 Obs Tx Obs

Group2 Obs Obs

True Experimental Designs (1)

Design 4: Pretest-posttest control group design

Design 5: Solomon focus-group designGroup Time

Random assignment

Group1 Obs Tx Obs

Group2 Obs Obs

Group3 Tx Obs

Group4 Obs

Group Time

Random assignment

Group1 Tx Obs

Group2 Obs

True Experimental Designs (2)

Design 6: Posttest-only control group design

Quasi-Experimental Designs

Group Time

Group1 Obs Tx Obs

Group2 Obs Obs

Design 8: Nonrandomized control group pretest-posttest design

Factorial Designs

Design 15: Randomized two-factor design

Group Time

Treatment related to the two variables may occur

simultaneously or sequentially

Treatment related to Variable 2

Treatment related to Variable 2

Group1 Tx1 Tx2 Obs

Group2 Tx1 Obs

Group3 Tx2 Obs

Group4 Obs

Inferential Statistics (1)

Estimating population parameters(1)

Inferential statistics can show how closely the sample statistics approximate parameters of the overall population. The sample is randomly chosen and representative of the total population. The means we might obtain from an infinite number of samples form a normal distribution. The mean of the distribution of the sample means is equal to the mean of the population from which the sample shave been drawn.The standard deviation of the distribution of sample means is directly related to the standard deviation of the characteristic in question for the overall population.

Inferential Statistics (2)

Testing Hypotheses (1)

Research hypothesis vs. statistical hypothesis Statistical hypothesis testing: comparing the distribution of data collected by a researcher with an ideal, or hypothetical distribution

- significance level/alpha (α): e.g., .05, .01 - statistically significant - reject the null hypothesis

Inferential Statistics (3)

Testing Hypotheses (2)

Making errors in hypothesis testing - Type 1 error: alpha error - Type 2 error: beta error

Inferential Statistics (4)

Testing Hypotheses (3)

Making errors in hypothesis testing -Increase the power of a statistical test 1) Use as large a sample size as is reasonably possible 2) Maximize the validity and reliability of your measures. 3) Use parametric rather than non parametric statistics whenever possible.

- Whenever we test more than one statistical hypothesis, we increase the probability of making at least one Type 1 error.

Inferential Statistics (5)

Examples of inferential statistical procedures

Parametric statistics Nonparametric statistics

Students’ t test Sign test

Analysis of variance (ANOVA)

Mann-Whitney U

Regression Kruskal-Wallis U

Factor analysis Wilcoxon matched-pair signed rank test

Structural equation modeling (SEM)

Chi-square goodness-of-fit test

Odds ratio

Fisher’s exact test

Inferential Statistics (6)

Example of reporting a test of a statistical hypothesis:

Percentage means and standard deviations are contained in Table 1. A significant main effect was found on the test of learning outcomes, F(1, 97) = 9.88, p <.05, MSerror = 190.51. Participants given the educational game scored significantly higher (mean =91.5%) than participants who were not given the game (mean=71.2%).

Your Task(This has already been emailed to you.)

1. Finish watching my pre-recorded presentation introducing quantitative research methods first.

2. Launch your Excel from last week. “Save as” with a new title.

3. Compute a t statistic from the data set emailed to you. Follow my video tutorial.

4. Email your spreadsheet to me as an attachment. (You do not have to finish this evening, but I expect most will.)

This is meant as a class activity. It is not a graded activity.

If you get stuck and become totally frustrated, stop and send

me what you have.

To do list• Follow the Course Learning Plan!