VC Database Rebuild
Contents
Plan
Rebuild roundbase, round, geo, ipos, mas from SDC data. Create companybase from roundbase Create round from roundbase. Build stageflags from round.
Clean companybase by putting flags for Undisclosed Company, US location. Check if key (coname, statecode, datefirstinv) is valid. Remove duplicates manually/update command from roundbase. Check if round key is valid. Remove duplicates.
Build statelookup tables and roundlookup tables.
Clean firmbase tables. Clean ipo tables. Clean mas table.
Run matcher on ipos, companybase. Matcher on mas, companybase. Fix duplicate matches.
Join ipos and companybase. Check if count is valid. Fix match as required. Pull ipo key into companybase and companybase key into ipo table first. Then join.
Join mas and companybase. Check if count is valid. Fix match as required. Pull mas key into companybase and companybase key into mas table first. Then join.
Join ipocompanybase with macompanybase to get a table of portcos, ipos and mas.
Calculate exit date based on ipo, ma, datelastinv + 5 years.
Pull in sel flag into companybase and build dead or alive flag.
Match geodata to companybase. Pull geokey into companybase table. Lookup addresses to get geo data as required using geo.py.
Clean fundbase and check valid key (fundname, statecode, firstinvdate)
Clean firmbase and check valid key (firmname, foundingdate)
Loading starting data into database
Database is named vcdb2. It is located in /bulk/VentureCapitalData/SDCVCData. Launch with psql vcdb2. Load the following tables by running the commands below. Make sure the sql scripts and data txt files are all located in the folder. Check that the line numbers copied into your new tables match the line numbers in the Load files.
\i LoadFunds.sql \i LoadIPOs.sql \i LoadRoundbase.sql \i LoadFirms.sql \i LoadGeoData.sql \i LoadLongDescription.sql \i LoadRound.sql
Cleaning Process
The roundbase table which is used to build the core company and round tables contains some data that we would like to remove like Undisclosed companies and duplicate entries. In order to find what to clean, build your companybase table first. You know your companybase table is clean once it contains a 1:1 relationship between keys and entries. We will then apply these changes to the roundbase table because any cleaning changes made downstream should be incorporated upstream into the base table. Otherwise when you build anything else off your roundbase table, dirty keys will infect the other areas of your database. Once the roundbase table is clean we will rename it roundbasecore so that we know it is clean and good to use for building other core tables.
Creating Base Tables
Create the base tables, companybase and round, by running the following scripts. These are the initial tables you will need to clean and join in order to get the master tables.
DROP TABLE companybase; CREATE TABLE companybase AS SELECT DISTINCT coname,updateddate,foundingdate,datelastinv,datefirstinv,investedk,city,description,msa,msacode,nationcode,statecode,addr1,addr2,indclass,indsubgroup3,indminor,url,zip FROM roundbase ORDER BY coname;
DROP TABLE round; CREATE TABLE round AS SELECT DISTINCT coname,statecode,datefirstinv,rounddate,stage1,stage3,rndamtdisck,rndamtestk,roundnum,numinvestors FROM roundbase ORDER BY coname;
Cleaning the Companybase table
Every table will contain some duplicate keys and erroneous entries. We're going to clean the companybase table so that every key (coname, statecode, datefirstinv) is unique. This means that there will be a 1:1 relationship between 1 key and 1 entry. Given an entry you will be able to create a unique key and given a coname, statecode, datefirstinv key you will be able to find exactly 1 entry that the key corresponds to in the companybase table set.
So first check to see if the key is valid on the base data using the following 2 queries.
SELECT COUNT(*) FROM (SELECT coname, statecode, datefirstinv FROM companybase)a; --44774
SELECT COUNT(*) FROM (SELECT DISTINCT coname, statecode, datefirstinv FROM companybase)a; --44771
You can see that they key is not unique because the counts don't match up. There are 44,771 distinct keys but there are 44,774 keys in the companybase table. So 1 key can match to more than one entry in the table. Some of the data in the companybase table contains undisclosed company names and companies that exist in other countries outside the US. So let's build flags for these two events and check the key count again.
DROP TABLE companybase1; CREATE TABLE companybase1 AS SELECT *, CASE WHEN nationcode = 'US' THEN 1::int ELSE 0::int END AS alwaysusflag, CASE WHEN coname = 'Undisclosed Company' THEN 1::int ELSE 0::int END AS undisclosedflag FROM companybase;
SELECT COUNT(*) FROM (SELECT coname, statecode, datefirstinv FROM companybase1 WHERE alwaysusflag = 1 AND undisclosedflag = 0)a; --44771
SELECT COUNT(*) FROM (SELECT DISTINCT coname, statecode, datefirstinv FROM companybase1 WHERE alwaysusflag = 1 AND undisclosedflag = 0)a; --44770
By looking at the counts you can see that there is still 1 duplicate key in the table. Let's find it another way. Running the query below finds the key (coname, statecode, datefirstinv) that appears twice in the table.
SELECT * FROM (SELECT coname, statecode, datefirstinv FROM companybase1 WHERE alwaysusflag = 1 AND undisclosedflag = 0)AS key GROUP BY coname, statecode, datefirstinv HAVING COUNT(key) > 1;
The output looks like this:
coname | statecode | datefirstinv ----------------------------+-----------+-------------- New York Digital Health LLC | NY | 2015-08-13
We'll have to copy companybase1 out of the db and have a look on textpad for something unique about one of the entries on New York Digital Health LLC that we can use to manually delete it from the companybase1 table. Turns out the url is different so we'll use that. Manually delete this record from the roundbase table using the below command. Now we're ready to build the companybasecore table.
DELETE FROM roundbase WHERE coname = 'New York Digital Health LLC' AND statecode = 'NY' AND datefirstinv = to_date('2015-08-13', 'YYYY-MM-DD') AND url = 'www.digitalhealthaccelerator.c';
companybasecore table
The queries below build your companybasecore table. The where clause takes the place of the 2 flags on nationcode and undisclosed company we built in companybase1 table. This table has a guaranteed 1:1 relationship between coname, statecode, datefirstinv and an entry in the table. The two queries at the end verify this. We use core tables to run joins later on.
DROP TABLE companybasecore; CREATE TABLE companybasecore AS SELECT DISTINCT coname,updateddate,foundingdate,datelastinv,datefirstinv,investedk,city,description,msa,msacode,nationcode,statecode,addr1,addr2,indclass,indsubgroup3,indminor,url,zip FROM roundbase WHERE nationcode = 'US' AND coname != 'Undisclosed Company'; --44740
--recheck keys SELECT COUNT(*) FROM (SELECT coname, statecode, datefirstinv FROM companybasecore)a; --44740
SELECT COUNT(*) FROM (SELECT DISTINCT coname, statecode, datefirstinv FROM companybasecore)a; --44740
Cleaning ipos table
Check to see if the existing keys in the table are valid. We are using issuer, issuedate, statecode as the key.
SELECT COUNT(*) FROM (SELECT issuer, issuedate, statecode FROM ipos)a; --10440
SELECT COUNT(*) FROM (SELECT DISTINCT issuer, issuedate, statecode FROM ipos)a; --9491
The keys are not unique so we must remove duplicate keys first. You will need to try different methods to isolate the duplicate keys. This is where you can be creative. I first started by finding the duplicates based on issuer, issuedate and statecode which is our key. Have a look in textpad/excel for ways to filter these keys. We would like to save as much information as possible so rather than excluding all these entries which sum to 1888 rows in the ipos table maybe there's some other way we can filter out records and still have distinct keys.
DROP TABLE ipoduplicates; CREATE TABLE ipoduplicates AS SELECT *, COUNT(*) FROM (SELECT issuer, issuedate, statecode FROM ipos)a GROUP BY issuer, issuedate, statecode HAVING COUNT(*) > 1; --939 \COPY ipoduplicates TO 'ipoduplicates.txt' WITH DELIMITER AS E'\t' HEADER NULL AS CSV;
In the file you will notice that many keys contain different principalamts. Let's keep the MAX principal amount and throw out the same key that has a lower principalamt. This query is shown below.
DROP TABLE ipoinclude; CREATE TABLE ipoinclude AS SELECT issuer, issuedate, statecode, MAX(principalamt) AS principalamt FROM ipos GROUP BY issuer, issuedate, statecode; --9470
Now use the ipoinclude table to create a ipocore table. Then check to see if this core table has unique keys so 1 key matches with 1 record. This is the defining characteristic of a core table.
DROP TABLE ipocore; CREATE TABLE ipocore AS SELECT ipos.issuer, ipos.issuedate, ipos.statecode FROM ipos INNER JOIN ipoinclude ON ipos.issuer = ipoinclude.issuer AND ipos.issuedate = ipoinclude.issuedate AND ipos.statecode = ipoinclude.statecode AND ipos.principalamt = ipoinclude.principalamt; SELECT COUNT(*) FROM (SELECT DISTINCT issuer, issuedate, statecode FROM ipocore)a;
You should notice that the ipocore table count does not match the count of DISTINCT keys. This means there are still some duplicates. So I created another duplicate table.
DROP TABLE ipoduplicates2; CREATE TABLE ipoduplicates2 AS SELECT *, COUNT(*) FROM (SELECT issuer, issuedate, statecode FROM ipocore)a GROUP BY issuer, issuedate, statecode HAVING COUNT(*) > 1;
Then I created DELETE statements for all these entries. I deleted them from the ipoinclude table which will prevent these keys from appearing in the ipocore table when you JOIN the ipos with ipoinclude table.
--manually remove bad keys DELETE FROM ipoinclude WHERE issuer = 'PacTel Corp' AND statecode = 'CA'; --1 DELETE FROM ipoinclude WHERE issuer = 'Templeton Dragon Fund Inc' AND statecode = 'FL'; --1 DELETE FROM ipoinclude WHERE issuer = 'Sterling Commerce' AND statecode = 'TX'; --1 DELETE FROM ipoinclude WHERE issuer = 'Sothebys Holdings Inc' AND statecode = 'NY'; --1 DELETE FROM ipoinclude WHERE issuer = 'TD Waterhouse Group Inc' AND statecode = 'NY'; --1 DELETE FROM ipoinclude WHERE issuer = 'Berlitz International Inc' AND statecode = 'NJ'; --1 DELETE FROM ipoinclude WHERE issuer = 'Spain Fund Inc' AND statecode = 'NY'; --1 DELETE FROM ipoinclude WHERE issuer = 'Ultramar Corp' AND statecode = 'CT'; --1 DELETE FROM ipoinclude WHERE issuer = 'Goldman Sachs Group Inc' AND statecode = 'NY'; --1 DELETE FROM ipoinclude WHERE issuer = 'Fidelity Advisor Korea Fund' AND statecode = 'MA'; --1 DELETE FROM ipoinclude WHERE issuer = 'Euronet Services Inc' AND statecode = 'KS'; --1 DELETE FROM ipoinclude WHERE issuer = 'Emerging Markets Tele Fund Inc' AND statecode = 'NY'; --1 DELETE FROM ipoinclude WHERE issuer = 'FirstMiss Gold Inc' AND statecode = 'NV'; --1 DELETE FROM ipoinclude WHERE issuer = 'Templeton Vietnam Opportunitie' AND statecode = 'FL'; --1 DELETE FROM ipoinclude WHERE issuer = 'Hybridon Inc' AND statecode = 'MA'; --1 DELETE FROM ipoinclude WHERE issuer = 'Indonesia Fund Inc' AND statecode = 'NY'; --1 DELETE FROM ipoinclude WHERE issuer = 'OpenTV Corp' AND statecode = 'CA'; --2 DELETE FROM ipoinclude WHERE issuer = 'Scudder New Europe Fund' AND statecode = 'NY'; --2 DELETE FROM ipoinclude WHERE issuer = 'Austria Fund Inc' AND statecode = 'NY'; --2
Now again JOIN your ipos table with your ipoinclude table and check the key count.
DROP TABLE ipocore; CREATE TABLE ipocore AS SELECT ipos.issuer, ipos.issuedate, ipos.statecode FROM ipos INNER JOIN ipoinclude ON ipos.issuer = ipoinclude.issuer AND ipos.issuedate = ipoinclude.issuedate AND ipos.statecode = ipoinclude.statecode AND ipos.principalamt = ipoinclude.principalamt; --9470 SELECT COUNT(*) FROM (SELECT DISTINCT issuer, issuedate, statecode FROM ipocore)a; --9470
The counts line up so now you should have a clean ipocore table!
Cleaning mas table
Check to see if you have bad keys in the table. The row count of the table should match up with count of distinct keys based on targetname, targetstatecode, announceddate.
SELECT COUNT(*) FROM mas; --114890 SELECT COUNT(*) FROM (SELECT DISTINCT targetname, targetstatecode, announceddate FROM mas)a; --114825
Great! The counts don't match so we'll have to clean the mas table. There is no obvious field to filter against with mas. So I inserted an id column in mas and took the MIN id for duplicate keys.
CREATE TABLE mas1 AS SELECT * FROM mas; ALTER TABLE mas1 ADD COLUMN id SERIAL PRIMARY KEY; ALTER TABLE mas ADD COLUMN id SERIAL PRIMARY KEY;
DROP TABLE masinclude; CREATE TABLE masinclude AS SELECT targetname, targetstatecode, announceddate, MIN(id) as id FROM mas1 GROUP BY targetname, targetstatecode, announceddate; --114825
DROP TABLE mascore; CREATE TABLE mascore AS SELECT mas.* FROM mas INNER JOIN masinclude ON mas.id = masinclude.id; --114825
SELECT COUNT(*) FROM (SELECT DISTINCT targetname, targetstatecode, announceddate FROM mascore)a;
The mas distinct key count match the total count of the table so therefore the mascore table is clean.
Name Based Matching companybase keys to mas keys
Before attempting to match companybasecore with mascore you need a clean table or you will get many errors in the matcher output file. Luckily the core tables should already contain distinct keys if you've followed the process. However running the matcher will still yield many errors. So we will filter the mas keys some more. The first thing is to remove mas keys (targetname, announceddate, targetstatecode) where the announceddate falls within the same week. Keep the key that has the minimum announceddate and discard the higher date. Shown below:
DROP TABLE maskeys; CREATE TABLE maskeys AS SELECT DISTINCT targetname, targetstatecode, announceddate FROM mascore; --114825
DROP TABLE maskeysmindates; CREATE TABLE maskeysmindates AS SELECT targetname, targetstatecode, MIN(announceddate) AS announceddate FROM mascore GROUP BY targetname, targetstatecode; --113236
DROP TABLE maskeysdatewindow; CREATE TABLE maskeysdatewindow AS SELECT maskeys.*, maskeysmindates.announceddate as minanndate, CASE WHEN maskeys.announceddate - INTERVAL '7 day' > maskeysmindates.announceddate OR maskeys.announceddate = maskeysmindates.announceddate THEN 1::int ELSE 0::int END AS dateflag FROM maskeys LEFT JOIN maskeysmindates ON (maskeys.targetname = maskeysmindates.targetname AND maskeys.targetstatecode = maskeysmindates.targetstatecode); --114825
The dateflag is 1 when the current key's announceddate is 1 week older than the minimum announced date or it is the minimum announceddate for that targetname, targetstatecode pair. If the announceddate is less than 1 week greater than the minimum announceddate for te targetname, targetstatecode pair, then it is 0.
CREATE TABLE maskeysdatefiltered AS SELECT targetname, targetstatecode, announceddate FROM maskeysdatewindow WHERE dateflag = 1; --114794 \COPY maskeysdatefiltered TO 'maskeysdatefiltered.txt' WITH DELIMITER AS E'\t' HEADER NULL AS CSV
Grab the portco keys from the companybasecore table:
DROP TABLE portcokeys; CREATE TABLE portcokeys AS SELECT DISTINCT coname, statecode, datefirstinv FROM companybasecore; --44740 \COPY portcokeys TO 'portcokeys.txt' WITH DELIMITER AS E'\t' HEADER NULL AS CSV
Put the portcokeys and maskeysdatefiltered text files into the Matcher Input folder. For more instructions on how to run the Matcher see The Matcher (Tool) You will still receive multiple warnings in the output.matched file. In Excel add flags to exclude if the announceddate < datefirstinv and another exclude flag if the datefirstinv = announceddate. Also add a warning flag if the Warning column is "Hall-Warning:Multiple". Then import this back into your db by creating a matcheroutput table.
DROP TABLE matcherportcomas; CREATE TABLE matcherportcomas ( warning varchar(100), file1coname varchar(100), file1statecode varchar(2), file1datefirstinv date, file2targetname varchar(100), file2targetstatecode varchar (2), file2announceddate date, excludeflag1 int, excludeflag2 int, warningflag int ); \COPY matcherportcomas FROM 'matcheroutputportco-mas.txt' WITH DELIMITER AS E'\t' HEADER NULL AS CSV --9645
file1coname | file1statecode | file1datefirstinv | count
+----------------+-------------------+-------
PA Inc | TX | 2007-09-25 | 2 High Sierra Energy L.P. | CO | 2004-12-23 | 2
Creating Stage Flags Table
Stage flags will be used to later on to determine if a company received seed, early or later stage financing. The growthflag is '1' if either the seed, early or later flags is '1'. The exclude flag is used to exclude all companies that received financing for activities we are not interested in and thus should be excluded from our dataset. Entries like 'Open Market Purchase', 'PIPE', etc are the things that the exclude flag filters out. It is built off the round table.
DROP TABLE stageflags; CREATE TABLE stageflags AS SELECT coname, statecode, datefirstinv, rounddate, stage3, CASE WHEN stage3 = 'Seed' THEN 1::int ELSE 0::int END AS seedflag, CASE WHEN stage3 = 'Early Stage' THEN 1::int ELSE 0::int END AS earlyflag, CASE WHEN stage3 = 'Later Stage' THEN 1::int ELSE 0::int END AS laterflag, CASE WHEN stage3 = 'Seed' OR stage3 = 'Later Stage' OR stage3 = 'Early Stage' THEN 1::int ELSE 0::int END AS growthflag, CASE WHEN stage3 = 'Acq. for Expansion' OR stage3 = 'Acquisition' OR stage3 = 'Bridge Loan' OR stage3 = 'Expansion' OR stage3 = 'Pending Acq' OR stage3 = 'Recap or Turnaround' OR stage3 = 'Mezzanine' THEN 1::int ELSE 0::int END AS transactionflag, CASE WHEN stage3 = 'LBO' OR stage3 = 'MBO' OR stage3 = 'Open Market Purchase' OR stage3 = 'PIPE' OR stage3 = 'Secondary Buyout' OR stage3 = 'Other' OR stage3 = 'VC Partnership' OR stage3 = 'Secondary Purchase' THEN 1::int ELSE 0::int END AS excludeflag FROM round;