Rsch 8210 quantative assignment


RSCH 8210 quantative Assignment: Correlation and Bivariate Regression- Walden University.

Correlation tests are some of the most widely used tests; unfortunately, they are also some of the most misinterpreted tests. The term correlation is frequently used in a colloquial sense, but has a very specific definition within the context of statistics. As a critical consumer of research, after this week you will be able to properly interpret the strengths and weaknesses of this specific test.

Perhaps the most exciting part of this week's activities is the introduction to ordinary least squares regression. This form of linear regression is frequently referred to as the "workhorse" of the social sciences, and for good reason. It is one of the most widely used statistical tests.

You will examine correlation and bivariate regression. In your examination you will construct research questions, evaluate research design, and analyze results related to correlation and bivariate regression.

Learning Objectives

• Construct research questions
• Evaluate research design through research questions
• Analyze correlation and bivariate regression
• Analyze measures for correlation and bivariate regression
• Analyze significance of correlation and bivariate regression
• Analyze results for correlation and bivariate regression testing
• Analyze assumptions of correlation and bivariate regression
• Analyze implications for social change
• Evaluate research related to correlation and bivariate regression

Learning Resources

Required Readings

Frankfort-Nachmias, C., & Leon-Guerrero, A. (2018). Social statistics for a diverse society (8th ed.). Thousand Oaks, CA: Sage Publications.
• Chapter 12, "Regression and Correlation" (pp. 325-371)

Wagner, W. E. (2016). Using IBM® SPSS® statistics for research methods and social science statistics (6th ed.). Thousand Oaks, CA: Sage Publications.
• Chapter 8, "Correlation and Regression Analysis"

Walden University Library. (n.d.). Course Guide and Assignment Help for RSCH 8210.

For help with this week's research, see this Course Guide and related weekly assignment resources.

Magnusson, K. (n.d.). Welcome to Kristoffer Magnusson's blog about R, Statistics, Psychology, Open Science, Data Visualization [blog].

As you review this web blog, select New d3.js visualization: Interpreting Correlations link, once you select the link, follow the instructions to view the interactive for interpreting correlations. This interactive will help you to visualize and understand correlations between two variables.

Note: This is Kristoffer Magnusson's personal blog and his views may not necessarily reflect the views of Walden University faculty.

Document: Walden University: Research Design Alignment Table

Datasets

Document: Data Set 2014 General Social Survey (dataset file)
Use this dataset to complete this week's Discussion.
Note: You will need the SPSS software to open this dataset.

Document: Data Set Afrobarometer (dataset file)
Use this dataset to complete this week's Assignment.
Note: You will need the SPSS software to open this dataset.
Document: High School Longitudinal Study 2009 Dataset (dataset file)
Use this dataset to complete this week's Assignment.
Note: You will need the SPSS software to open this dataset.

Required Media

Laureate Education (Producer). (2016b). Correlation and bivariate regression [Video file]. Baltimore, MD: Author.

Note: The approximate length of this media piece is 9 minutes.

In this media program, Dr. Matt Jones demonstrates correlation and bivariate regression using the SPSS software.

Accessible player

Optional Resources

Correlation

Klingenberg, B. (2016). Correlation game.

Use the following app/weblink for an interactive visual display of correlation slopes.

Regression

Klingenberg, B. (2016). Explore linear regression.

Use the following app/weblink for an interactive visual display of regression slopes.

Skill Builder: Interpreting Correlation and Regression Coefficients

To access these Skill Builders, navigate back to your Blackboard Course Home page, and locate "Skill Builders" in the left navigation pane. From there, click on the relevant Skill Builder.

You are encouraged to click through these and all Skill Builders to gain additional practice with these concepts. Doing so will bolster your knowledge of the concepts you're learning this week and throughout the course.

Discussion: Correlation and Bivariate Regression

Whether in a scholarly or practitioner setting, good research and data analysis should have the benefit of peer feedback. For this Discussion, you will perform an article critique on correlation and bivariate regression. Be sure and remember that the goal is to obtain constructive feedback to improve the research and its interpretation, so please view this as an opportunity to learn from one another.

To prepare for this Discussion:

• Review the Learning Resources and the media programs related to correlation and regression.

• Search for and select a quantitative article specific to your discipline and related to correlation or regression. Help with this task may be found in the Course guide and assignment help linked in this week's Learning Resources. Also, you can use as guide the Research Design Alignment Table located in this week's Learning Resources.

Write a 3- to 5-paragraph critique of the article. In your critique, include responses to the following:

1. What is the research design used by the authors?
2. Why did the authors use correlation or bivariate regression?
3. Do you think it's the most appropriate choice? Why or why not?
4. Did the authors display the data?
5. Do the results stand alone? Why or why not?
6. Did the authors report effect size? If yes, is this meaningful?

Assignment: Testing for Correlation and Bivariate Regression

You had the chance earlier in the week to perform an article critique on correlation and simple linear regression and obtain peer feedback. Hopefully you are excited about the potential these tests hold; equally important is that you recognize some of their weaknesses. Now, it is once again time to put all of that good brainstorming to use and answer a social research question with the correlation and simple linear regression. As you begin the Assignment, be sure and pay close attention to the assumptions of the test. Specifically, make sure that your variables are metric level variables that can easily be interpreted in these tests.

For this Assignment, you will examine correlation and bivariate regression testing.

To prepare for this Assignment:

• Review this week's Learning Resources and media program related to regression and correlation.

• Using the SPSS software, open the Afrobarometer dataset or the High School Longitudinal Study dataset (whichever you choose) found in the Learning Resources for this week.

• Based on the dataset you chose, construct a research question that can be answered with a Pearson correlation and bivariate regression.

• Once you perform your correlation and bivariate regression analysis, review Chapter 11 of the Wagner text to understand how to copy and paste your output into your Word document.

For this Assignment:

Write a 2- to 3-paragraph analysis of your correlation and bivariate regression results for each research question. Do not forget to evaluate if the correlation and bivariate regression assumptions are met and report the effect size. In your analysis, display the data for the output. Based on your results, provide an explanation of what the implications of social change might be.

Format your assignment according to the following formatting requirements:

1. The answer should be typed, double spaced, using Times New Roman font (size 12), with one-inch margins on all sides.

2. The response also includes a cover page containing the title of the assignment, the student's name, the course title, and the date. The cover page is not included in the required page length.

3. Also include a reference page. The Citations and references should follow APA format. The reference page is not included in the required page length.

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