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Published byArron Armstrong Modified over 8 years ago
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Topics Introduction to Stata – Files / directories – Stata syntax – Useful commands / functions Logistic regression analysis with Stata – Estimation – GOF – Coefficients – Checking assumptions
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Introduction to Stata Note: we did this interactively for the larger part …
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Stata file types.ado – programs that add commands to Stata.do – Batch files that execute a set of Stata commands.dta – Data file in Stata’s format.log – Output saved as plain text by the log using command
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The working directory The working directory is the default directory for any file operations such as using & saving data, or logging output cd “d:\my work\”
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Saving output to log files Syntax for the log command –log using filename [, append replace [smcl|text]] To close a log file –log close
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Using and saving datasets Load a Stata dataset – use d:\myproject\data.dta, clear Save – save d:\myproject\data, replace Using change directory – cd d:\myproject – Use data, clear – save data, replace
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Entering data Data in other formats – You can use SPSS to convert data – You can use the infile and insheet commands to import data in ASCII format Entering data by hand – Type edit or just click on the data-editor button
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Do-files You can create a text file that contains a series of commands Use the do-editor to work with do-files Example I
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Adding comments // or * denote comments stata should ignore Stata ignores whatever follows after /// and treats the next line as a continuation Example II
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A recommended structure capture log close //if a log file is open, close it, otherwise disregard set more off//dont'pause when output scrolls off the page cd d:\myproject//change directory to your working directory log using myfile, replace text //log results to file myfile.log … here you put the rest of your Stata commands … log close //close the log file
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Serious data analysis Ensure replicability use do+log files Document your do-files – What is obvious today, is baffling in six months Keep a research log – Diary that includes a description of every program you run Develop a system for naming files
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Serious data analysis New variables should be given new names Use labels and notes Double check every new variable ARCHIVE
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Stata syntax examples
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The Stata syntax Regress y x1 x2 if x3 <20, cluster(x4) 1.Regress = Command – What action do you want to performed 2.y x1 x2 = Names of variables, files or other objects – On what things is the command performed 3.if x3 <20 = Qualifier on observations – On which observations should the command be performed 4., cluster(x4) = Options – What special things should be done in executing the command
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Examples tabulate smoking race if agemother > 30, row Example of the if qualifier – sum agemother if smoking == 1 & weightmother < 100
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Elements used for logical statements OperatorDefinitionExample ==Equal toIf male == 1 !=Not equal toIf male !=1 >Greater thanIf age > 20 >=Greater than or equal toIf age >=21 <Less thanIf age<66 <=Less than or equal toIf age<=65 &AndIf age==21 & male ==1 |orIf age =65
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Missing values Automatically excluded when Stata fits models; they are stored as the largest positive values Beware!! – The expression ‘age > 65’ can thus also include missing values – To be sure type: ‘age > 65 & age !=.’
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Selecting observations drop variable list keep variable list drop if age < 65
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Creating new variables generate command – generate age2 = age * age – generate – see help function – !!sometimes the command egen is a useful alternative, f.i. – egen meanage = mean(age)
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Useful functions FunctionDefinitionExample +additiongen y = a+b -subtractiongen y = a-b /Divisiongen density=population/area *Multiplicationgen y = a*b ^Take to a powergen y = a^3 lnNatural loggen lnwage = ln(wage) expexponentialgen y = exp(b) sqrtSquare rootGen agesqrt = sqrt(age)
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Replace command replace has the same syntax as generate but is used to change values of a variable that already exists gen age_dum =. replace age = 0 if age < 5 replace age = 1 if age >=5
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Recode Change values of exisiting variables – Change 1 to 2 and 3 to 4: recode origvar (1=2)(3=4), gen(myvar1) – Change missings to 1: recode origvar (.=1), gen(origvar)
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Logistic regression Logistic
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Logistic regression Lets use a set of data collected by the state of California from 1200 high schools measuring academic achievement. Our dependent variable is called hiqual. Our predictor variable will be a continuous variable called avg_ed, which is a continuous measure of the average education (ranging from 1 to 5) of the parents of the students in the participating high schools.
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OLS in Stata
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Logistic regression in Stata
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Multiple predictors
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MODEL FIT Consider model fit using: 1)The likelihood ratio test 2)The pseudo-R2 (proportional change in log-likelihood) 3)The classification table
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Model fit: the likelihood ratio test
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Model fit: LR test
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Pseudo R2: proportional change in LL
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Classification Table
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Hosmer & Lemeshow Test divides sample in subgroups, checks whether difference between observed and predicted is about equal in these groups Test should not be significant (indicating no difference)
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Goodness of fit: Hosmer & Lemeshow Average Probability In j th group
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First logistic regression
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Then postestimation command
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Including interaction term helps...
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... as you can see here Ok now
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Interpreting coefficients
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Interpreting coefficients: significance
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Interpretation of coefficients: direction
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Interpretation of coefficients: Magnitude
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Ok now
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Multicollinearity
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Influential observations
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To do Perform a logistic regression analysis Use apilog.dta Awards = dependent variable
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