Ideally I am trying to find similiar phrases. I have two phrases in a dataset about max 5-6 words in each. I used the Fuzzy matches of complev, compged etc. Since it is mostly string matching sometimes I could not achieve what I could match just by reading the phrases. The phrases dont have misspelling but sometimes Shorten words like Replacement to replace etc and rearranging of words eg: Electric Component keyboard replacement and keyboard inward component replace. Like the below example:
DATA COMPONENT; infile datalines delimiter=','; length FIRST $ 1000 FIRST_B $ 1000; INPUT FIRST $ FIRST_B $; DATALINES; Electric Component keyboard replacement, Keyboard inward component replace Electric Component keyboard replacement, Monitor Component Replacement Electric Component keyboard replacement, Mouse component Electric Component keyboard replacement, Wire Replacement Electric Component keyboard replacement, PIN part ; DATA Compged; SET COMPONENT; CALL COMPCOST('SWAP=', 5, 'P=', 0, 'INS=', 10,'DEL=',10,'APPEND=',5); First_COMPGED=COMPGED(FIRST, FIRST_B, 'iln'); RUN; PROC SORT DATA= Compged; BY First_COMPGED; RUN;
Since this alone did not match I thought use another factor of trying to find the same words being used as another factor. Thus want to split to words and compare. how many common words appear and add this as an additional factor.
/* Tried this approach*/ proc iml; s = "Introduction,to SAS/IML... programming!"; delims = ' ,.!'; n = countw(s, delims); words = scan(s, 1:n, delims); /* pass parameter vector: create vector of words */ print words;
Not sure how to implement this in the current table to get words and words_b from the phrases first and first_b. Please suggest if there is any other way to achieve it for the above example?