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'm trying to come up with a parser for football plays. I use the term "natural language" here very loosely so please bear with me as I know little to nothing about this field.

Here are some examples of what I'm working with (Format: TIME|DOWN&DIST|OFF_TEAM|DESCRIPTION):

04:39|4th and 20@NYJ46|Dal|Mat McBriar punts for 32 yards to NYJ14. Jeremy Kerley - no return. FUMBLE, recovered by NYJ.|
04:31|1st and 10@NYJ16|NYJ|Shonn Greene rush up the middle for 5 yards to the NYJ21. Tackled by Keith Brooking.|
03:53|2nd and 5@NYJ21|NYJ|Mark Sanchez rush to the right for 3 yards to the NYJ24. Tackled by Anthony Spencer. FUMBLE, recovered by NYJ (Matthew Mulligan).|
03:20|1st and 10@NYJ33|NYJ|Shonn Greene rush to the left for 4 yards to the NYJ37. Tackled by Jason Hatcher.|
02:43|2nd and 6@NYJ37|NYJ|Mark Sanchez pass to the left to Shonn Greene for 7 yards to the NYJ44. Tackled by Mike Jenkins.|
02:02|1st and 10@NYJ44|NYJ|Shonn Greene rush to the right for 1 yard to the NYJ45. Tackled by Anthony Spencer.|
01:23|2nd and 9@NYJ45|NYJ|Mark Sanchez pass to the left to LaDainian Tomlinson for 5 yards to the 50. Tackled by Sean Lee.|

As of now, I've written a dumb parser that handles all the easy stuff (playID, quarter, time, down&distance, offensive team) along with some scripts that goes and gets this data and sanitizes it into the format seen above. A single line gets turned into a "Play" object to be stored into a database.

The tough part here (for me at least) is parsing the description of the play. Here is some information that I would like to extract from that string:

Example string:

"Mark Sanchez pass to the left to Shonn Greene for 7 yards to the NYJ44. Tackled by Mike Jenkins."

Result:

turnover = False
interception = False
fumble = False
to_on_downs = False
passing = True
rushing = False
direction = 'left'
loss = False
penalty = False
scored = False
TD = False
PA = False
FG = False
TPC = False
SFTY = False
punt = False
kickoff = False
ret_yardage = 0
yardage_diff = 7
playmakers = ['Mark Sanchez', 'Shonn Greene', 'Mike Jenkins']

The logic that I had for my initial parser went something like this:

# pass, rush or kick
# gain or loss of yards
# scoring play
    # Who scored? off or def?
    # TD, PA, FG, TPC, SFTY?
# first down gained
# punt?
# kick?
    # return yards?
# penalty?
    # def or off?
# turnover?
    # INT, fumble, to on downs?
# off play makers
# def play makers

The descriptions can get pretty hairy (multiple fumbles & recoveries with penalties, etc) and I was wondering if I could take advantage of some NLP modules out there. Chances are I'm going to spend a few days on a dumb/static state-machine like parser instead but if anyone has suggestions on how to approach it using NLP techniques I'd like to hear about them.

share|improve this question
8  
Given the question topic, I find it interesting that the SO syntax highlighter is highlighting all the human names... –  Jon Nov 20 '11 at 2:15

2 Answers 2

I think pyparsing would be very useful here.

Your input text looks very regular (unlike real natural language), and pyparsing is great at this stuff. you should have a look at it.

For example to parse the following sentences:

Mat McBriar punts for 32 yards to NYJ14.
Mark Sanchez rush to the right for 3 yards to the NYJ24.

You would define a parse sentence with something like(look for exact syntax in docs):

name = Group(Word(alphas) + Word(alphas)).setResultsName('name')

action = Or(Exact("punts"),Exact("rush")).setResultsName('action') + Optional(Exact("to the")) + Or(Exact("left"), Exact("right")) )

distance = Word(number).setResultsName("distance") + Exact("yards")

pattern = name + action + Exact("for") +  distance + Or(Exact("to"), Exact("to the")) + Word() 

And pyparsing would break strings using this pattern. It will also return a dictionary with the items name, action and distance - extracted from the sentence.

share|improve this answer
    
I'll check it out and report back, thanks. –  Jon Nov 21 '11 at 18:20

I imagine pyparsing would work pretty well, but rule-based systems are pretty brittle. So, if you go beyond football, you might run into some trouble.

I think a better solution for this case would be a part of speech tagger and a lexicon (read dictionary) of player names, positions and other sport terminology. Dump it into your favorite machine learning tool, figure out good features and I think it'd do pretty well.

NTLK is a good place to start for NLP. Unfortunately, the field isn't very developed and there isn't a tool out there that's like bam, problem solved, easy cheesy.

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.