UP504 • Research Designlast updated: Wednesday, February 6, 2008 |
HAND-OUTS
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We spend two sessions on research design:
MONDAY (Jan 28): structures and strategies of writing strong research proposals
WEDNEDSAY (Jan 30): Critiquing good (as well as dubious and problematic) research results.
ADDED READING: Florida, Richard, The Economic Geography of Talent. Annals of the Association of American Geographers, Vol 92 (4), December 2002 , pp. 743-755. download pdf
download ppt presentation on Florida critique
Topics include: research proposals, hypothesis testing, developing research questions, and matching methodologies to research questions. We also introduce the final assignment, which requires students to design and complete a mini research project.
Locke, Lawrence F. Waneen W. (Wyrick) Spirduso, Stephen J. Silverman "The Function of the Proposal," in Proposals that Work. 4th edition, Sage, 1999,2000, pp. 3-24. [eReserves]
Babbie, Earl. "Ch. 4 Research Design, Ch. 5 Conceptualization, Operationalization and Measurement" in The Practice of Social Research. 9th edition, Belmont, CA: Wadsworth, 2003, pp. 90 - 147. [eReserves]
Kaufman, Sanda, and
Robert Simmons. 1995. "Quantitative and research methods in planning: Are
schools teaching what practitioners practice?" Journal of Planning Education
and Research 15 (1):17-34. [online]
hyperstat: bivariate
relationships
Research Methods Knowledge Base: research design • unit
of analysis
David A. Freedman. 1999. "Ecological
Inference and the Ecological Fallacy" (prepared for the International Encyclopedia
of the Social & Behavioral Sciences Technical Report No. 549 15 October
1999)
Assignment 2: critically examine the way that planners use quantitative methods in their writings and/or practice
Assignment 6: developing a research proposal (as the first step of a mini research project)
1. You have two data sets: one from Iowa, and one from Nebraska. Each data set began in 1960, with data collected on 100 family farms. Subsequent data was collected in five-year intervals in 1965, 1970, 1975, 1980, 1985, 1990, 1995, 2000 and 2005. Variables included:
farm size crops grown gov't subsidies |
organic techniques used? storm damage to crops annual rainfall |
farm income fertilizers used days of sunshine |
crop yield average temperature labor costs |
The Iowa data is panel data (that is, you have data on the same, identifiable farms for the 8 periods). The Nebraska data is not a panel (each year, a random sample of 100 farms was drawn). You are interested in the factors that influence farm failure and bankruptcy. What types of analysis can you do with the Iowa data that you cannot do with the Nebraska data? Conversely, what problems might you have in analyzing the Iowa data, especially in later years?
2. Suppose you examined block-level data for Gotham City on the links between crime, income and race, and you created the following correlation matrix.
Crime Rate | Percent Minority | Income | |
Crime Rate | 1.00 | 0.42 | -0.54 |
Percent Minority Population | 1.00 | -0.74 | |
Income | 1.00 |
And you also calculated the following partial correlation:
Variables Controlling for..... correlation
crime and minority income -0.13
How do you interpret this data? What is the relationship here between race and crime? What assumptions do you make about causality?
3. A researcher has two data sets on the relationship between housing prices and distance from the central business district (CBD) in the 50 largest American metropolitan areas. The first data set's unit of analysis is the individual house (n=1000), and shows a positive relationship between house price and distance to CBD. The second data set's unit of analysis is the city (n=50), and shows a negative relationship between the city's mean housing price and the mean distance of housing from the CBD. Why are the two results different? Which set of results is more useful? What danger does a researcher face in generalizing from the second data set?
4. The Census Department releases the results of a study on how women of four different ethnic groups fare on unemployment and wages in 25 American cities from 1990 to 2006. The results show that all four groups do better when 1) Overall employment growth is relatively high, and 2) the share of each group in the labor force is relatively small. All other explanations of unemployment and wage differences turn out to be statistically insignificant.
The report's policy section states: "Minority women would be better off if the government stimulated growth rather than pursued affirmative action programs or other race-specific remedies. In addition, minority women should attempt to move to cities where the ethic minority shares are relatively small compared to the size of the overall labor force." Comment on the structure of the research design and on the policy conclusions.