I'm mining a column of descriptions of contact reports. I am getting the frequencies of words in the column. However, some of the data is poorly entered and words like "followup" are sometimes entered as "follow up" which counts "follow" as one word and "up" as another. I was wondering what the best way to account for that in my query is? I would also like to eliminate certain names from the column such as "Smith." Here is my current query I'm using:
WITH mydata as ( --query for test column SELECT REGEXP_REPLACE(UPPER(TEST), ' ', '#') test FROM (SELECT REGEXP_REPLACE (replace(description,'-','.'), '[' || REGEXP_REPLACE (replace(description,'-','.') || '!', '[^[:punct:]]') || ']') test FROM my_table) ), splitted_words as ( SELECT REGEXP_SUBSTR(TEST,'[^#]+', 1, level) AS word FROM mydata CONNECT BY level <= LENGTH(regexp_replace(TEST,'[^#]')) + 1 AND PRIOR ROWID = ROWID AND PRIOR sys_guid() IS NOT NULL ) SELECT word, COUNT(1) FROM splitted_words GROUP BY word ORDER BY COUNT(1) DESC;
and that gives me a column looking something like:
word | count -----------|--------- OFFICE | 21062 SCHEDULING | 20290 VISIT | 18412 WITH | 16415 TO | 15244 REQUEST | 13097 LEFT | 9277 MESSAGE | 9187 UP | 4465 FOLLOW | 4182 EMAIL | 3286 SMITH | 857
I'm thinking I could make a series of
WHERE (word NOT LIKE 'SMITH') for the names, but how can I count cases like "follow" and "up" as one word?