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Statistics and Statistical Programming (Spring 2019)
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=== Research project === As a demonstration of your learning in this course, you will design and carry out a quantitative research project, start to finish. This means you will all: * '''Design and describe a plan for a study''' β The study you design should involve quantitative analysis and should be something you can complete at least a first pass on during this quarter. * '''Find a dataset''' β Very quickly, you should identify a dataset you will use to complete this project. For most of you, I suspect you will be engaging in secondary data analysis or a analysis of a previously collected dataset. * '''Engage in descriptive data analysis''' β Use R to calculate descriptive statistics and visualizations to describe your data. * '''Motivate and test at least one hypothesis about relationships between two or more variables''' * '''Report and interpret your findings''' β You will do this in both a short paper and a short presentation. * '''Ensure that your work is replicable''' β You will need to provide code and data for your analysis in a way that makes your work replicable by other researchers. ''I strongly urge you'' to produce a project that will further your academic career outside of the class. There are many ways that this can happen. Some obvious options are to prepare a project that you can submit for publication, use as pilot analysis that you can report in a grant or thesis proposal, and/or that fulfills a degree requirement. There are several intermediate milestones and deadlines to help you accomplish a successful research project. Unless otherwise noted, all deliverables should be submitted via Canvas. ==== Project plan and dataset identification ==== ;Due date: Thursday, April 18, 2019 ;Maximum length: 500 words (~1-2 pages) Early on, I want you to identify and describe your final project. Your description should be short and can be either paragraphs or bullets. It should include the following: * An abstract of the proposed study including the topic, research question, theoretical motivation, object(s) of study, and anticipated research contribution. * An identification of the dataset you will use and a description of the columns or type of data it will include. If you do not currently have access to these data, explain why and when you will. * A short (several sentences?) description of how the project will fit into your career trajectory. ==== Project planning document ==== ;Due date: Thursday, May 16, 2019 ;Maximum length: ~5 pages The project planning document is a basic shell/outline of an empirical quantitative research paper. Your planning document should should have the following sections: (a) Rationale, (b) Objectives; (b.1) General objectives; (b.2) Specific objectives; (c) (Null) hypotheses; (d) Conceptual diagram and explanation of the relationship(s) you plan to test; (e) Measures; (f) Dummy tables/figures; (g) anticipated finding(s) and research contribution(s). Longer descriptions of each of these planning document sections (as well as a few others) can be found [[CommunityData:Planning document|on this wiki page]]. I have also provided three example planning documents via our Canvas site: * [https://canvas.northwestern.edu/files/6908602/download?download_frd=1 One by public health researcher Mika Matsuzaki]. The first planning document I ever saw and still one of the best. It's missing a measures section. It's also focused on a research context that is probably very different from yours, but try not to get bogged down by that and imagine how you might map the structure of the document to your own work. * [https://canvas.northwestern.edu/files/6919735/download?download_frd=1 One by Jim Maddock] created as part of a qualifying exam earlier in 2019. Jim doesn't provide dummy tables or anticipated findings/contributions, but he has an especially phenomenal explanation of the conceptual relationships and processes he wants to test. * [https://canvas.northwestern.edu/files/6908606/download?download_frd=1 One provided as an appendix to Gerber and Green's excellent textbook, ''Field Experiments: Design, Analysis, and Interpretation'' (FEDAI)]. It's over-detailed and incredibly long for our purposes, but nevertheless an exemplary approach to planning empirical quantitative research in a careful, intentional way that is worthy of imitation. ==== Project presentation and paper ==== ;Paper due date: Monday, June 10, 2019 ;Maximum length: 6000 words (~20 pages) ;Presentation due date: Thursday, May 30 or Thursday, June 6, 2019 ;Maximum length: 8 minutes ''The paper:'' Ideally, I expect you to produce a high quality short research paper that you might revise and submit for publication and/or a dissertation milestone. I do not expect the paper to be ready for publication, but it should contain polished drafts of all the necessary components of a scholarly quantitative empirical research study. In terms of the structure, please see the page on the [[structure of a quantitative empirical research paper]]. As noted above, you should also provide data, code, and any documentation sufficient to enable the replication of all analysis and visualizations. If that is not possible/appropriate for some reason, please talk to me so that we can find another solution. Because the emphasis in this class is on statistics and methods and because I'm not an expert in each of your fields, I'm happy to assume that your paper, proposal, or thesis chapter has already established the relevance and significance of your study and has a comprehensive literature review, well-grounded conceptual approach, and compelling reason why this research is important. As a result, you need not focus on these elements of the work in your written submission. Instead, feel free to start with a brief summary of the purpose and importance of this research followed by an introduction of your research questions or hypotheses. If you provide more detail, that's fine, but I won't give you detailed feedback on these parts and they will not figure prominently in my assessment of the work. I have a strong preference for you to write the paper individually, but I'm open to the idea that you may want to work with others in the class. Please contact me ''before'' you attempt to pursue a collaborative final paper. I do not have strong preferences about the style or formatting guidelines you follow for the paper and its bibliography. However, ''your paper must follow a standard format'' (e.g., [https://cscw.acm.org/2019/submit-papers.html ACM SIGCHI CSCW format] or [https://www.apastyle.org/index APA 6th edition] ([https://templates.office.com/en-us/APA-style-report-6th-edition-TM03982351 Word] and [https://www.overleaf.com/latex/templates/sample-apa-paper/fswjbwygndyq LaTeX] templates)) that is applicable for a peer-reviewed journal or conference proceedings in which you aim to publish the work (they all have formatting or submission guidelines published online and you should follow them). This includes the references. I also strongly recommend that you use reference management software to handle your bibliographic sources. '' [[Statistics_and_Statistical_Programming_(Spring_2019)/Final_project_presentations|The presentation:]]'' The presentation will provide an opportunity to share a brief summary of your project and findings with the other members of the class. Since you will all give other research presentations throughout your career, I strongly encourage you to take the opportunity to refine your academic presentation skills. The document [https://canvas.northwestern.edu Creating a Successful Scholarly Presentation] (file will be posted to Canvas) may be useful. : More details about the presentation goals, format suggestions, and more are available [[Statistics_and_Statistical_Programming_(Spring_2019)/Final_project_presentations|on this page]]
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