Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a directory of companies provided to me they want stored and updated in a MySQL database. There is no unique identifier such as company #1234 for each company record.

The fields are typical for a mailing list, contact name, company name, street address, city, state, zip code, phone number and type of company. Updates will be sent to me as a CSV file, again, with no company unique identifier number.

How do I go about matching up the stored record in the db to the new one so it can be updated? In this industry the contact name can change, and even the company name because they add and subtract partners. Their street address can change because when they move the business, and they can even change their phone number. The majority of the companies have a website URL, so hopefully that won't change often but it easily could as well.

I've seen in MySQL there is a similar match %, would this be the answer to match records with the new information?

I work in PHP, if there is a PHP solution. Thanks in advance to the kind soul who helps me out with this!

share|improve this question
1  
Why don't you add another field in mysql as your unique id for your own use. That way you will be able to identify them later. –  Dainis Abols Sep 25 '12 at 6:08
1  
Thanks for the reply, Dainis. I intend to do this, but how would can I match updated records with that unique id if I don't know which field to match on to be certain it's the same company? –  Edward Sep 25 '12 at 6:19
    
Create a diff table where you keep log like original_id, old_company_name, new_company_name etc. –  Dainis Abols Sep 25 '12 at 6:48

5 Answers 5

up vote 2 down vote accepted

Without primary key, it is always tricky.

One line solution, decide the rules to best suite your requirements.

If I were you, I first would go to the client to decide some rules of identifying similar records. This step is necessary as without primary key, as there is always a chance of duplicate entry or updating wrong record.

Rules could be simple like:

1. Available fileds:
    contact name,
    company name,
    street address,
    city,
    state,
    zip code,
    phone number and
    type of company (I Hope this is industry)
2. We will first match company name for similarity like
    select * from table_name where company_name like '%$company_name%'
3. For all found records, match zip code and phone number. If match, break, record needs to be updated
4. If not match found in step 3, match street address. If match, break, record needs to be updated
5. & so on.

Your client is the best person to decide these rules as he is the owner of the product.

On the other side, asking rules from client is also important to keep you secure as in the absence of primary key, even after all the care, there is always a chance of duplicating records and/or updating wrong record. You could just minimize the chances with good rules.

share|improve this answer

As you have told that all the fields of the table can change then I think there is no simple way to correctly update the table every time whatever algorithm you choose.
One of the way to achieve this could be to ask the people/system (which sends you the updated records) to also include the old values of the updated fields in the csv file. If you have the old values you can easily match them with the present records and update it with the new values.

share|improve this answer
    
Without a primary key, there isn't an easy way to match an existing record with an updated one. –  Edward Sep 25 '12 at 11:18
    
@Edward Thats why I mentioned - "to also include the old values of the updated fields in the csv file". i.e If you get an updated record- "A,B,K,D" along with the information that "C has changed to K" than you can easily update the existing records "A,B,C,D" to "A,B,K,D". –  Luftwaffe Sep 25 '12 at 12:00

This is rather general question, but the solution itself is somewhat unique from project to project.

I would iterate over all records ordered by the time of their change (or a creating date or update timestamp or so). Next I'd match all entries with major fields similar: company name, address (though that might be risky), telephone or an url (parsing domains only). Then, I would recursively iterate over all found entries until no more results are found.

This algorithm would help to find you same entries as long as they do not have all major columns changes at once. If they do, there is no way saying it's the same firm programmatically.

This will link rows with seemingly now connections (rows 1 and 3 in example)

Example:

2001/01/01 Awesome firm, awesome.com
2002/02/02 Awesome firm, newaddress.com // linked with the first row over company name
2010/12/05 Ohsome inc, newaddress.com // linked over url
share|improve this answer

I have come acroos bit similar scenario in one of my earlier projects in Sql server.I used to do the following things to handle it.

1.Usually there will be 2 types of files--

a)Full feed (frequency weekly) this will have all the companies from the providers database b)Incremental Feed(Frequency Daily) this will have only the new records which are not in full feed and updates.(inserts-I,updates -U as flags in incremental feeds)

2.So once I receive the full feed I will refresh the my database table with the full feed once in a week.Also here I will have my internal ids to each company record.(thses ids are for internal purpose)

3.On daily basis I process incremental feeds based on the flags(I-insert,U-update).

4.One very important thing here is to manage the mapping table.Once the feed comes just assign a new internal id to it.

5.For comparing the data to avoid duplicates,I used to use Fuzzy algorithm to get all the potential matches and then use wildcard characters to filter and identify which are new and duplicates.

share|improve this answer

Have a look at the Damerau-Levenshtein distance algorithm. It calculates the "distance" between two strings and determines how many steps it takes to transform one string into another. The less steps the closer the two strings are.

This article shows the algorithm implemented as a MySQL stored function. Here's the PHP version.

The algorithm is so much better than LIKE or SOUNDEX.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.