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We do business largely in the United States and are trying to improve user experience by combining all the address fields into a single textarea. Of course, to process the customer's credit card and make the address useful in countless other ways, we need to parse the freeform address into components (street, unit, city, state, zip, etc). Plus, sometimes the users might enter more than just their address in the textarea, and we'd like to get the address by itself.

It appears time and time again (and again) that parsing freeform addresses into its pieces is a common problem, which often goes unsolved or merely worked around, usually unsatisfactorily. Despite the gaping pit of despair, we're still very interested in implementing this: client-side (Javascript), server-side (any language), doesn't really matter.

For the sake of business, it'd also be nice to ensure the address is correct. The trouble I have with the Google Maps API is that often the results are incomplete or inaccurate (some addresses don't actually exist), and we run into TOS restrictions and query limits.

So, how can we reliably parse a US street address into separate fields? (And, how can we get the address by itself if it's not already?)

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up vote 62 down vote accepted

I think this summary, based on experience and extensive research, will be helpful. It goes over parsing just an address into components, and also a step further -- parsing addresses out of arbitrary text. (Sometimes the textarea is filled with more than just the address and includes data like name, or perhaps anything.)

Addresses are not uniform or predictable

Here are a few examples of complete, but un-standardized, addresses:

1)  102 main street
    Anytown, state

2)  400n 600e #2, 52173

3)  p.o. #104 60203

Even these are possibly valid:

4)  1234 LKSDFJlkjsdflkjsdljf #asdf 12345

5)  205 1105 14 90210

Note that in all of these examples, punctuation and line breaks are never guaranteed. (Also I'm not using real addresses here.)

Number 1 is complete because it contains a street address and a city and state. With that information, there's enough identify the address, and it can be considered "deliverable" (with some standardization).

Number 2 is complete because it also contains a street address (with secondary/unit number) and a 5-digit ZIP code: which is also enough to identify an address.

Number 3 is a complete post office box format, as it contains a ZIP code.

Number 4 is also complete because the ZIP code is unique, meaning that a private entity or corporation has purchased that address space. Anything addressed to ZIP code "12345" goes to General Electric in Schenectady, NY. This example won't reach anyone in particular, but the USPS would still be able to deliver it.

Number 5 is also complete, believe it or not. Here's what it looks like, fully expanded and standardized:

205 N 1105 W Apt 14
Beverly Hills CA 90210-5221

(Even if there's ambiguity in the pre- and post-direction indicators, that can be easily resolved. In addresses like this, "1105" is the street name, and the street has no suffix.)

Regular expression

I've seen some pretty gnarly-looking magic formulas which attempt to match a street address in "all" its formats. I've seen everything from this...

/\s+(\d{2,5}\s+)(?![a|p]m\b)(([a-zA-Z|\s+]{1,5}){1,2})?([\s|\,|.]+)?(([a-zA-Z|\s+]{1,30}){1,4})(court|ct|street|st|drive|dr|lane|ln|road|rd|blvd)([\s|\,|.|\;]+)?(([a-zA-Z|\s+]{1,30}){1,2})([\s|\,|.]+)?\b(AK|AL|AR|AZ|CA|CO|CT|DC|DE|FL|GA|GU|HI|IA|ID|IL|IN|KS|KY|LA|MA|MD|ME|MI|MN|MO|MS|MT|NC|ND|NE|NH|NJ|NM|NV|NY|OH|OK|OR|PA|RI|SC|SD|TN|TX|UT|VA|VI|VT|WA|WI|WV|WY)([\s|\,|.]+)?(\s+\d{5})?([\s|\,|.]+)/i

(kill me now!)

... to this attempt where hundreds of lines of code generate a massive regular expression on-the-fly. It's a pretty impressive display, but isn't robust or sufficient enough for our needs.

But regular expressions don't cut it, because addresses are not a regular language.

These, and other internal attempts at parsing addresses aren't meeting our needs, so what other options are there?

Google Maps, USPS, and Nominatim (OpenStreetMap) APIs

Google's good at a lot of things, but verifying addresses isn't one of them. As mentioned in my question, it doesn't quite meet our needs. Google is great at approximating addresses and best-guessing the components, but we've found it doesn't actually verify their existence or accuracy. For example, type your home address into Google Maps, then change the primary (house) number by 1 (or to something nearby that you know doesn't exist) and it will still pin that address on the map. Or zoom into Street View at a random spot in the US, and often it will say "Address is approximate." This is handy sometimes, but not always.

We also run into Terms of Service restrictions as we'd like to store the results of our request in our database for future use. Google doesn't permit this (except temporary caching for performance reasons).

The USPS' API is free, but we run into similar issues, namely the TOS don't allow us to use the API for anything except for mailing things. Sometimes we merely want to process a credit card with the address or geocode it, which feature they don't provide.

Further, the USPS' API goes down sometimes. Recently, all their web services were down for about 36 hours.

Nominatim also has a good, free service, however, we'll need support for our business operations in case something goes wrong. Plus, the usage policy is limiting and we need some data about the address that they don't provide...

tl;dr -- the solution

The USPS licenses certain vendors through a process called CASS™ Certification to provide verified address data to customers. These vendors have access to the USPS database of postal addresses and receive monthly updates, and their output must conform to rigorous standards, being audited on a regular basis or when changes are made to their address verification algorithms. Some of these vendors don't impose the same limitations as other providers mentioned earlier.

There are a few vendors which service APIs that do all of the hard work. For example, I work at SmartyStreets, and one of my fun little projects was to write a Javascript wrapper over our REST-based API called LiveAddress which standardizes, verifies, and parses addresses into components, and returns JSON output. For instance:

LiveAddress.components("3127 warm springs #200 las vegas nv", function(comp) {
    console.log(comp);
});

Which yields the output:

primary_number:             3127
street_predirection:        E
street_name:                Warm Springs
street_suffix:              Rd
secondary_number:           200
secondary_designator:       Ste
city_name:                  Las Vegas
state_abbreviation:         NV
zipcode:                    89120
plus4_code:                 3134
delivery_point:             50
delivery_point_check_digit: 4
first_line:                 3127 E Warm Springs Rd Ste 200
last_line:                  Las Vegas NV 89120-3134

Of course, these results are achievable from any language that queries the API (there's a lot more samples on GitHub and jsFiddle you can play with) -- and most languages these days come with native or add-on JSON parsers.

The terms of service here are a little freer, so we can use the data pretty much any ethical way we need to, and we know that the results we get back are verified and standardized.

Parsing addresses out of arbitrary/freeform text

Because sometimes the address isn't already by itself, we need to parse the addresses out of the surrounding text first. This is hard. Trust me: I coded it.

SmartyStreets does US addresses, but there are other providers and you should look around... some do international.

As an example, from another Stack Overflow question, text with addresses in it yielded this output:

Parsing addresses out of text

If using that web interface, it also comes with CSV format (see the linked-to post for the CSV output). Here's some of the raw JSON:

{
    "meta": {
        "lines": 21,
        "unicode": false,
        "address_count": 10,
        "verified_count": 9,
        "bytes": 525,
        "character_count": 525
    },
    "addresses": [
        {
            "text": "2299 Lewes-Georgetown Hwy, Georgetown, DE 19947",
            "verified": false,
            "api_output": [], /* not a real address */
            "line": 3,
            "start": 32,
            "end": 79
        },
        {
            "text": "11522 Shawnee Road, Greenwood DE 19950",
            "verified": true,
            "api_output": [ /* ... address details, including components ... */ ],
            "line": 21,
            "start": 497,
            "end": 525
        }
        /* ... truncated, for brevity */
    ]
}

This has been sufficient in parsing the addresses out of other data for us, and hopefully others will find it useful.

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What about South American (Uruguay) addresses ? :D –  Bart Jan 10 at 3:20
    
@Bart I don't know of a service that supports extracting Uruguay addresses, sorry! –  Matt Jan 10 at 3:32
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