I would like to link two data frames that use different numeric keys, but similar strings. Specifically, one data frame uses a numeric key
GVKEY and a company name
> head(temp.compustat[order(temp.compustat$CONML, decreasing = T), ]) GVKEY CONML 225994 13023 ZZZZ Best Co Inc 211017 11696 Zytrex Corp 213816 11951 Zytec Systems Inc 309886 29163 Zytec Corp 373950 129441 Zynex Inc 383184 145228 ZymoGenetics Inc > dim(temp.compustat)  31354 2
The other data frame uses a different numeric key
companyid and a company name
company that may be slightly different than
CONML in the first database.
> head(temp.dealscan[ order(temp.dealscan$company, decreasing = T), ]) companyid company 70473 18192 Zytec Corp 32025 16969 Zynaxis Inc 19714 92271 ZYGO Teraoptix Inc 80473 13185 Zygo Corp 1901 24303 Zycon Corp SDN Bhd 33993 21219 Zycon Corp > dim(temp.dealscan)  85818 2
(I am sorting in reverse, because the DealScan databases has blanks and * at the beginning of some entries). It seems that the function
RLBigDataLinkage in package
RecordLinkage is the solution, but I can't get even unsupervised linking to work. Here's my error.
> library(RecordLinkage) > rpairs <- RLBigDataLinkage(dataset1 = temp.compustat, dataset2 = temp.dealscan, exclude = 1, strcmp = 2, strcmpfun = "levenshtein") > result <- epiClassify(rpairs, threshold.upper = 0.5) Error in if (max <= min) stop("must have max > min") : missing value where TRUE/FALSE needed In addition: Warning message: In nData1 * nData2 : NAs produced by integer overflow
Coincident with me getting started yesterday, I saw this question about using the Levenshtein distance function manually. Is this approach a better option for me? These data frames are fairly large, so it seems that
RLBigData should be the correct approach (the package authors recommend it for > 1000 entries). Thanks!