2. Select and describe the variables (both dependent and explanatory) that you will use in your analysis.
I. Describe and defend your choice of dependent variable (Y variable). You can elect to have more than one dependent variable if you prefer. Your choice of dependent variable(s) will be informed by the operationalisation you decide on for your research question. Your dependent variable can be an interval-ratio (scale) variable or a categorical variable. Explain why the variable(s) you have selected (or created) are a suitable way of measuring the concepts in your research question. Note: It may be that you will need to recode this variable to do the different analyses described below.
II. Describe and defend your choice of independent variables (X variables). You must include between four and seven explanatory/independent variables in your assignment. These must include at least one interval-ratio and at least one categorical variable. For each of the explanatory variables you have selected explain why you think it may be related to the dependent variable. Ideally, you would link this discussion back to the readings reviewed in part 1.
At least one of your variables (dependent or explanatory) must be recoded. You must explain why you are recoding the variable you are recoding and how you did it. The new variable must be named and have suitable variable labels.
At least one of your variables (dependent or explanatory) must be a scale that you have constructed. You must explain how you have constructed the scale and any choices that you made about which variables to include within the scale, and which to exclude.
Please refer to worksheet 3a for info on how to recode and worksheet 3c, for information on how to compute a scale in SPSS. This can be found under week 3’s teaching materials.
3. Produce appropriate descriptive statistics for each of your dependent and explanatory variables. These might include, for example: mean, median, minimum, maximum, standard deviation, frequencies or proportions. You will need to decide which measures are appropriate and useful to report for each variable. You should discuss in the text those measures that are most relevant. You may also include any charts that you think are helpful. It is important to only include appropriate statistics. Marks will be lost for irrelevant or inappropriate statistics, tables or charts.
4. Produce bivariate analyses, showing the relationships between your dependent variable and each of your explanatory variables. (It will be necessary to recode one or more variables to produce these analyses – you should describe all recoding as part of your response to Q2, above). Choose from the following types of bivariate analysis:
Cross-tabulation: examine how your dependent variable (recoded if necessary) varies across categories of any categorical explanatory variable(s). Provide a brief commentary on any similarities or differences. Use a chi-squared test to evaluate the statistical significance of any relationship that appears to exist. Provide a substantive commentary on the association (or lack of association) between the variables, quoting appropriate percentages.
Correlation: explore the relationship between an interval-ratio dependent variable and an interval-ratio explanatory variable. Discuss the direction and strength of any relationship that appears to exist.
Compare means: if one variable is interval-ratio and the other categorical.
5. Produce a series of (at least two) charts. Choose either one or both of the following ways of displaying data:
Histograms show how your interval-ratio dependent variable is distributed across categories of one or more of your explanatory variables (e.g. how hours of work is distributed among males versus among females). Discuss any patterns you see in the histograms and any differences across your different histograms.
Clustered or stacked bar-charts show how your categorical dependent variable is distributed across categories of one or more of your explanatory variables. Discuss any patterns you see in the bar charts and any differences across categories of your explanatory variable(s).
6. Carry out a Multivariate Analysis. Choose ONE of the following two options:
Multiple linear regression analysis in which you include between four and seven explanatory variables. Explain your methodology and write up the substantive implications of your results. You should also identify possible weaknesses in your analysis. You may present a series of nested models (up to a maximum of three) if you wish.
OR
Carry out a logistic regression analysis (recode your response variable if need be) in which you include between four and seven explanatory variables. Explain your methodology and write up the substantive implications of your results. You should also identify possible weaknesses in your analysis. You may present a series of nested models (up to a maximum of three) if you wish.
7. What would you conclude on the basis of the results of the analyses you have carried out in this project? How do your findings relate to the existing body of academic work that you discussed in section 1?
Which are your most interesting findings? What, if anything, might you have done differently? How could you develop this analysis in the future?
Include your syntax in full as an appendix. Include information to clarify to which part of your analysis each part of the syntax refers.
CS 340 Milestone One Guidelines and Rubric Overview: For this assignment, you will implement the fundamental operations of create, read, update,
Retail Transaction Programming Project Project Requirements: Develop a program to emulate a purchase transaction at a retail store. This
7COM1028 Secure Systems Programming Referral Coursework: Secure
Create a GUI program that:Accepts the following from a user:Item NameItem QuantityItem PriceAllows the user to create a file to store the sales receip
CS 340 Final Project Guidelines and Rubric Overview The final project will encompass developing a web service using a software stack and impleme