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221 lines
8.1 KiB
Plaintext
221 lines
8.1 KiB
Plaintext
9 months ago
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{smcl}
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{* 15 Aug 2007}{...}
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{cmd:help hotdeck}
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{hline}
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{title:Title}
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{hi:Impute missing values using the hotdeck method}
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{title:Syntax}
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{p 8 27}
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{cmdab:hotdeck}
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[{it:varlist}] [{cmd:using}] [{hi:if}{it: exp}] [{hi:in}{it: exp}]
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,
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[
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{cmdab:by}{cmd:(}{it:varlist}{cmd:)}
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{cmdab:store}
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{cmdab:imp:ute}{cmd:(}{it:varlist}{cmd:)}
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{cmdab:noise}
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{cmdab:keep}{cmd:(}{it:varlist}{cmd:)}
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{cmdab:com:mand}{cmd:(}{it:command}{cmd:)}
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{cmdab:parms}{cmd:(}{it:varlist}{cmd:)}
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{cmdab:seed}{cmd:(}{it:#}{cmd:)}
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{cmdab:infiles}{cmd:(}{it:filename filename ...}{cmd:)}
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]
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{p}
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{title:Description}
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{pstd}
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{hi:Hotdeck} will tabulate the missing data patterns within the {help varlist}.
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A row of data with missing values in any of the variables in the {hi:varlist}
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is defined as a `missing line' of data, similarly a `complete line' is one where all the
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variables in the {hi:varlist} contain data. The {hi:hotdeck} procedure
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replaces the {hi:varlist} variables in the `missing lines' with the
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corresponding values in the `complete lines'.
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{hi:Hotdeck} should be used several times within a multiple imputation
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sequence since missing data
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are imputed stochastically rather than deterministically. The {hi:nmiss} missing
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lines in each stratum of the data described by the `by' option are replaced
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by lines sampled from the {hi:nobs} complete lines in the same stratum. The
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approximate Bayesian bootstrap method of Rubin and Schenker(1986) is used;
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first a bootstrap sample of {hi:nobs} lines are sampled with replacement from
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the complete lines, and the {hi:nmiss} missing lines are sampled at random
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(again with replacement) from this bootstrap sample.
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{pstd}
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A major assumption with the hotdeck procedure is
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that the missing data are either missing completely at random (MCAR) or is
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missing at random (MAR), the probability that a line is missing
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varying only with respect to the categorical
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variables specified in the `by' option.
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{pstd}
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If a dataset contains many variables with missing values then
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it is possible that many of the rows of data will contain at
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least one missing value. The {hi:hotdeck} procedure will not work
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very well in such circumstances.
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There are more
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elaborate methods that {bf:only} replace missing values, rather than the whole row,
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for imputed values.
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These multivariate multiple imputation methods are discussed by Schafer(1997).
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{pstd}
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A critical point is that all variables that are used in the analysis should be included in
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the variable list. This is particularly true for variables that have missing data!
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Variables that predict missingness should be included in the
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by option so missing data is imputed within strata.
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{title:Latest Version}
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{pstd}
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The latest version is always kept on the SSC website. To install the latest version click
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on the following link
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{phang}
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{stata ssc install hotdeck, replace}.
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{title:Options}
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{phang}
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{cmdab:using} specifies the root of the imputed datasets filenames. The default is
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"imp" and hence the datasets will be saved as imp1.dta, imp2.dta, ....
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{phang}
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{cmdab:by}{cmd:(}{it:varlist}{cmd:)} specifies categorical variables defining strata within which
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the imputation is to be carried out. Missing values will be replaced by complete values only within the
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strata. If within a strata there are no complete records then no data will be imputed and will lead
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to the wrong answers. Make sure there are a reasonable number of complete records per strata.
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{phang}
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{cmdab:store} specifies whether the imputed datasets are saved to disk.
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{phang}
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{cmdab:imp:ute}{cmd:(}{it:varlist}{cmd:)} specifies the number of imputed datasets to generate. The number
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needed varies according to the percentage missing and the type of data, but
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generally 5 is sufficient.
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{phang}
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{cmdab:noise} specifies whether the individual analyses, from the {hi:command()} option,
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are displayed.
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{phang}
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{cmdab:keep}{cmd:(}{it:varlist}{cmd:)} specifies the variables saved in the imputed datasets
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in addition to the imputed variables and the by list. By default the imputed
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variables and the by list are always saved.
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{phang}
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{cmdab:com:mand}{cmd:(}{it:command}{cmd:)} specifies the analysis performed on every imputed dataset.
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{phang}
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{cmdab:parms}{cmd:(}{it:varlist}{cmd:)} specifies the parameters of interest from the
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analysis. If the {hi:command} is a regression command then the parameter list can
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include a subset of the variables specified in the regression command.The
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final output consists of the combined estimates of these parameters.
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For non-standard commands that are "regression" commands the {hi:parms()} option
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looks at the estimation matrix e(b) and requires the column names to identify
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the coefficients of interest.
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{phang}
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{cmdab:seed}{cmd:(}{it:#}{cmd:)} specifies the random number generator seed. When using the {hi:seed} option
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the hotdeck command must be used in the correct way. The key point is that ALL variables in the analysis command
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must be in the variable list, this ensures that the correlations between the variables are maintained post
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imputation.
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{phang}
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{cmdab:infiles}{cmd:(}{it:filename filename ...}{cmd:)} specifies a list of files that have missing
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values replaced by imputed values. This is convenient when the user has
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several imputed datasets and wants to analyse them and combine the results.
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{title:Examples}
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Impute values for y in sex/age groups.
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{inp:hotdeck y, by(sex age) }
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Additionally to store the imputed datasets above as {hi:imp1.dta} and {hi:imp2.dta}.
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{inp:hotdeck y using imp,store by(sex age) impute(2)}
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{p 0 0}
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Hotdeck can also use the stored imputed datafiles hi:imp1.dta} and {hi:imp2.dta}
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and carry out the combined analysis. This analysis is displayed for the coefficient
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of {hi:x} and constant term {hi:_cons}.
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{inp:hotdeck y using imp, command(logit y x) parms(x _cons) infiles(imp1 imp2)}
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{p 0 0}
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Do not save imputed datasets to disk but carry out a logistic regression on the imputed
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datasets and display the coefficients for {hi:x} and the constant term {hi:_cons} of the model.
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{inp:hotdeck y x, by(sex age) command(logit y x) parms(x _cons) impute(5)}
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{title:Example - Multiple Equation Model}
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{p 0 0}
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Multiple equation models require more complicated {hi:parms()} statements.
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The example used can be applied to all multiple equation models. The only complication
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is that the name of the coefficients are different.
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For the following command
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{inp:xtreg kgh f1, mle}
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Then inspect the matrix of coefficients
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{inp:mat list e(b)}
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e(b)[1,4]
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kgh: kgh: sigma_u: sigma_e:
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f1 _cons _cons _cons
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y1 -1.6751401 77.792948 0 16.730843
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Then the following command will do an imputation and analysis for the single parameter.
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{inp:hotdeck kgh, by(ethn) command(xtreg kgh f1, mle) parms(kgh:f1) impute(5)}
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{title:Example - mlogit}
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Use this web dataset for STATA release 9.
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{stata "use http://www.stata-press.com/data/r9/sysdsn3.dta"}
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The simple model without handling missing data
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{stata mlogit insure male}
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{p 0 0}
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The estimated coefficients are put automatically by STATA into the matrix e(b), note the column
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headings are the parameter names that {hi:hotdeck} uses. So you can not use the simple syntax
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of just {hi:parms(male)} because this refers to two parameters.
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{stata mat list e(b)}
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{p 0 0}
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So this syntax will handle the missing data using {hi:hotdeck} imputation.
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{stata "hotdeck insure male, command(mlogit insure male) parms(Prepaid:male) impute(5)"}
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{p 0 0}
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{hi:NOTE} hotdeck will fail when using mlogit with spaces in the category labels. This is due
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to the lack of functionality in STATA's matrix commands.
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{title:Author}
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{p}
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Adrian Mander, MRC Human Nutrition Research, Cambridge, UK.
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Email {browse "mailto:adrian.mander@mrc-hnr.cam.ac.uk":adrian.mander@mrc-hnr.cam.ac.uk}
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{title:See Also}
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Related commands
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HELP FILES Installation status SSC installation links Description
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{help whotdeck} (if installed) ({stata ssc install whotdeck}) Weighted version of Hotdeck
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