Difference between revisions of "Matching LBOs (Julia)"
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− | + | ====Specify propensity score type to use for matching==== | |
*Options are: logitp (panel logit), probitp (panel probit), or Cox proportional hazard (hr) | *Options are: logitp (panel logit), probitp (panel probit), or Cox proportional hazard (hr) | ||
*Alternatively, can use the above, with regressions performed using winsorized values of regressors (trimmed at 1st and 99th percentiles): logitpw, probitpw, hrw | *Alternatively, can use the above, with regressions performed using winsorized values of regressors (trimmed at 1st and 99th percentiles): logitpw, probitpw, hrw | ||
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mscore = :logitpw; | mscore = :logitpw; | ||
+ | |||
+ | ====Specify whether matching priority should be deterministic or random.==== | ||
+ | *If deterministic, priority goes to lower GVKEY | ||
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randoption = 0; | randoption = 0; | ||
− | Specify | + | |
− | * | + | |
+ | |||
+ | ====Specify additional constraints on valid matches (modify code within function mcexpr as desired)==== | ||
+ | *For example, default code forces matches to be within the same industry group, within the same decade, and with patent stocks within +/- 20% of LBO firm. | ||
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return eval(parse(mcriteria)) | return eval(parse(mcriteria)) | ||
end | end | ||
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Revision as of 04:03, 30 June 2017
Matching LBOs (Julia) | |
---|---|
Project Information | |
Project Title | Matching LBOs (Julia) |
Owner | James Chen |
Start Date | |
Deadline | |
Keywords | Tool |
Primary Billing | |
Notes | |
Has project status | Active |
Copyright © 2016 edegan.com. All Rights Reserved. |
Leveraged Buyout Innovation (Academic Paper)
Contents
- 1 Instructions for running matching code
- 1.1 Inputs and Outputs
- 1.2 Running Code
- 1.3 Options
- 1.3.1 Specify input file (if using different file than default)
- 1.3.2 Specify which observations are valid for matching.
- 1.3.3 Specify propensity score type to use for matching
- 1.3.4 Specify whether matching priority should be deterministic or random.
- 1.3.5 Specify additional constraints on valid matches (modify code within function mcexpr as desired)
Instructions for running matching code
Inputs and Outputs
- Input: tab delimited file "E:/McNair/Projects/LBO/Clean/STATApredictLBOclean.txt"
- This contains list of LBO and nonLBO firms from compustat 1970-2015, propensity scores, patent data, and other variables generated from stata code "statadatasetup4.do" and "statapredictLBOclean.do"
- Output: tab delimited file "E:/McNair/Projects/LBO/New matching/matchresults.txt"
- This is the input file, except with an additional column "matchpair" indicating matched pairs:
- Positive integers identify pairs matched, negative integers identify matched non-LBOs in years other than the match, -0.1 identifies LBOs that failed to match to any non-LBOs under constraints provided
Running Code
- Open Julia command line in administrator mode
- Change directory to E:\McNair\Projects\LBO\New matching\
- Run script LBOmatchscript.jl
Options
There are a few things that can be customized in the script. Getting this into a more user-friendly form is a WIP. In fact, some parts might be difficult, if not impossible, to write in a more accessible way.
Before running, modify the following options if necessary:
Specify input file (if using different file than default)
Line 12:
df = readtable("E:/McNair/Projects/LBO/Clean/STATApredictLBOclean.txt", separator = '\t');
Specify which observations are valid for matching.
- For now, we filter out all firms that were never granted a single patent in the period 1970-2015
- For firms that LBO, we also drop their observations in all other years from the list of candidates to match to other LBOs
- See inline comments in code for detailed description of what matchfilter2, matchfilter4, etc. represent
Lines 38-48
Specify propensity score type to use for matching
- Options are: logitp (panel logit), probitp (panel probit), or Cox proportional hazard (hr)
- Alternatively, can use the above, with regressions performed using winsorized values of regressors (trimmed at 1st and 99th percentiles): logitpw, probitpw, hrw
Line 58:
mscore = :logitpw;
Specify whether matching priority should be deterministic or random.
- If deterministic, priority goes to lower GVKEY
Line 61:
randoption = 0;
Specify additional constraints on valid matches (modify code within function mcexpr as desired)
- For example, default code forces matches to be within the same industry group, within the same decade, and with patent stocks within +/- 20% of LBO firm.
Lines 69-81:
function mcexpr(i) #note that the below syntax is the simplest way to store a long string over multiple lines #(i.e., appending additional characters per line) #Also, note that order of operations forces us to put each condition in parentheses mcriteria = "nonLBOs[:matchsubset] = (nonLBOs[:industrygroup3].== LBOs[$i,:industrygroup3])" mcriteria = mcriteria * " .* (nonLBOs[:decade].==LBOs[$i,:decade])" mcriteria = mcriteria * " .* (nonLBOs[:patentstock] .>= (LBOs[$i,:patentstock]*.8))" mcriteria = mcriteria * " .* (nonLBOs[:patentstock] .<= (LBOs[$i,:patentstock]*1.2))" mcriteria = mcriteria * " .* (nonLBOs[:matchpair] .== 0 )" return eval(parse(mcriteria)) end