opennlp chunker and postag results - opennlp

Java - opennlp
I am new to opennlp and i am try to analyze the sentence and have the post tag and chunk result but I could not understand the values meaning. Is there any table which can explain the post tag and chunk result values full form meaning ?
Tokens: [My, name, is, Chris, corrale, and, I, live, in, Philadelphia, USA, .]
Post Tags: [PRP$, NN, VBZ, NNP, NN, CC, PRP, VBP, IN, NNP, NNP, .]
chunk Result: [B-NP, I-NP, B-VP, B-NP, I-NP, O, B-NP, B-VP, B-PP, B-NP, I-NP, O]

The POS tags are from the Penn Treebank tagset. The chunks are noun phrases (NP), verb phrases (VP), and prepositions (PP). "B-.." marks the beginning of such a phrase, "I-.." means something like "inner", i.e. the phrase continues here (see OpenNLP docs).

S -> Simple declarative clause, i.e. one that is not introduced by a
(possible empty) subordinating
conjunction or a wh-word and that does not exhibit subject-verb
inversion.
SBAR -> Clause introduced by a (possibly empty) subordinating conjunction.
SBARQ -> Direct question introduced by a wh-word or a wh-phrase.
Indirect questions and relative clauses should be bracketed as
SBAR, not SBARQ.
SINV -> Inverted declarative sentence, i.e. one in which the subject
follows the tensed verb or modal.
SQ -> Inverted yes/no question, or main clause of a wh-question, following
the wh-phrase in SBARQ.
ADJP -> Adjective Phrase.
ADVP -> Adverb Phrase.
CONJP -> Conjunction Phrase.
FRAG -> Fragment.
INTJ -> Interjection. Corresponds approximately to the part-of-speech tag
UH.
LST -> List marker. Includes surrounding punctuation.
NAC -> Not a Constituent; used to show the scope of certain prenominal
modifiers within an NP.
NP -> Noun Phrase.
NX -> Used within certain complex NPs to mark the head of the NP.
Corresponds very roughly to N-bar
PP -> Prepositional Phrase.
PRN -> Parenthetical.
PRT -> Particle. Category for words that should be tagged RP.
QP -> Quantifier Phrase (i.e. complex measure/amount phrase); used within
NP.
RRC -> Reduced Relative Clause.
UCP -> Unlike Coordinated Phrase.
VP -> Verb Phrase.
WHADJP -> Wh-adjective Phrase. Adjectival phrase containing a wh-adverb, as
in how hot.
WHAVP -> Wh-adverb Phrase. Introduces a clause with an NP gap. May be null
(containing the 0 complementizer)
or lexical, containing a wh-adverb such as how or why.
WHNP -> Wh-noun Phrase. Introduces a clause with an NP gap. May be null
(containing the 0 complementizer)
or lexical, containing some wh-word, e.g. who, which book, whose
daughter, none of which, or how
many leopards.
WHPP -> Wh-prepositional Phrase. Prepositional phrase containing a wh-noun
phrase
(such as of which or by whose authority) that either introduces a
PP gap or is contained by a WHNP.
X -> Unknown, uncertain, or unbracketable. X is often used for bracketing
typos and in bracketing
the...the-constructions.
Credit: http://mail-archives.apache.org/mod_mbox/opennlp-users/201402.mbox/%3CCACQuOSXOeyw2O-AZtW3m=iABo1=3cpZOdPiWFXoNwN-SVWo4gQ#mail.gmail.com%3E

Please refer the POSTag list to get the tags details.
Chunk tags like "B-NP" are made up of two or three parts:
First part:
B - marks the beginning of a chunk
I - marks the continuation of a chunk
E - marks the end of a chunk
As a chunk,it may be only one word long (like "She" in the example above), it can be both beginning and end of a chunk at the same time.
Second part:
NP - noun chunk
VP - verb chunk
For more reference you can refer the OpenNLP Documentation.

Related

Porter Stemmer, Step 1b

Similar question to this [1]porter stemming algorithm implementation question?, but expanded.
Basically, step1b is defined as:
Step1b
`(m>0) EED -> EE feed -> feed
agreed -> agree
(*v*) ED -> plastered -> plaster
bled -> bled
(*v*) ING -> motoring -> motor
sing -> sing `
My question is why does feed stem to feed and not fe? All the online Porter Stemmer's I've tried online stems to feed, but from what I see, it should stem to fe.
My train of thought is:
`feed` does not pass through `(m>0) EED -> EE` as measure of `feed` minus suffix `eed` is `m(f)`, hence `=0`
`feed` will pass through `(*v*) ED ->`, as there is a vowel in the stem `fe` once the suffix `ed` is removed. So will stem at this point to `fe`
Can someone explain to me how online Porter Stemmers manage to stem to feed?
Thanks.
It's because "feed" doesn't have a VC (vowel/consonant) combination, therefore m = 0. To remove the "ed" suffix, m > 0 (check the conditions for each step).
The rules for removing a suffix will be given in the form
(condition) S1 -> S2
This means that if a word ends with the suffix S1, and the stem before S1 satisfies the given condition, S1 is replaced by S2. The condition is usually given in terms of m, e.g.
(m > 1) EMENT ->
Here S1 is `EMENT' and S2 is null. This would map REPLACEMENT to REPLAC, since REPLAC is a word part for which m = 2.
now, in your example :
(m>0) EED -> EE feed -> feed
before 'EED', are there vowel(s) followed by constant(s), repeated more than zero time??
answer is no, befer 'EED' is "F", there are not vowel(s) followed by constant(s)
In feed m refers to vowel,consonant pair. there is no such pair.
But in agreed "VC" is ag. Hence it is replaced by agree. The condition is m>0.
Here m=0.
It's really sad that nobody here actually read the question. This is why feed doesn't get stemmed to fe by rule 2 of step 1b:
The definition of the algorithm states:
In a set of rules written beneath each other, only one is obeyed, and this
will be the one with the longest matching S1 for the given word.
It isn't clearly statet that the conditions are always ignored here, but they are. So feed does match to the first rule (but it isn't applied since the condition isn't met) and therefore the rest of the rules in 1b are ignored.
The code would approximately look like this:
// 1b
if(word.ends_with("eed")) { // (m > 0) EED -> EE
mval = getMvalueOfStem();
if(mval > 0) {
word.erase("d");
}
}
else if(word.ends_with("ed")) { // (*v*) ED -> NULL
if(containsVowel(wordStem) {
word.erase("ed");
}
}
else if(word.ends_with("ing")) { // (*v*) ING -> NULL
if(containsVowel(wordStem) {
word.erase("ing");
}
}
The important things here are the else ifs.

range restriction/domain restriction in Isabelle

I am trying to input a schema into Isabelle however when I add range restriction or domain restriction into the theorem prover it doesn't want to parse. I have the following schema in LaTeX:
\begin{schema}{VideoShop}
members: \power PERSON \\
rented: PERSON \rel TITLE \\
stockLevel: TITLE \pfun \nat
\where
\dom rented \subseteq members \\
\ran rented \subseteq \dom stockLevel \\
\forall t: \ran rented # \# (rented \rres \{t\}) \leq stockLevel~t
\end{schema}
When inputting this into Isabelle I get the following:
locale videoshop =
fixes members :: "PERSON set"
and rented :: "(PERSON * TITLE) set"
and stockLevel :: "(TITLE * nat) set"
assumes "Domain rented \<subseteq> members"
and "Range rented \<subseteq> Domain stockLevel"
and "(\<forall> t. (t \<in> Range rented) \<and> (card (rented \<rhd> {t}) \<le> stockLevel t))"
begin
.....
It all parses except for the last expression \<forall> t.....
I just don't understand how to add range restriction into Isabelle.
There are multiple problems with your input.
The ⊳ symbol you are using in the expression
(rented ⊳ {t})
is not associated with any operator, so it can't be parsed. I'm not quite sure what it's supposed to mean. From the high-level idea of the specification I'm guessing something along the lines of "all persons who rented a specific title". This can be expressed most easily with a set comprehension:
{p. (p, t) ∈ rented}
You translated the bounded universal quantifier into a quantifier containing a conjunction. This is likely not what you want, because it says "for all t, t is in the range of rented and something else". Isabelle has notation for bounded quantifiers.
∀t ∈ Range rented. ...
You are trying to use stockLevel as a function, which it isn't. From your LaTeX input I gather that it's supposed to be a partial function. Isabelle calls these maps. The appropriate type is:
TITLE ⇀ nat
Note the "harpoon" symbol instead of a function arrow. The domain function for maps is called dom. The second locale assumption can be expressed as:
Range rented ⊆ dom stockLevel
Given that, you can use stockLevel as a function from TITLE to nat option.

UU-Parsinglib slowering drastically when some rules are enabled

I'm writing a compiler using uu-parsinglib and I saw a very strange thing. I defined a pChoice combinator like:
pChoice = foldr (<<|>) pFail
(notice, I'm using greedy <<|>).
Lets consider following code:
pFactor i = pChoice [ Expr.Var <$> pVar
, Expr.Lit <$> pLit True
, L.pParensed (pExpr i)
-- , Expr.Tuple <$> pTuple (pOpE i)
-- , Expr.List <$> pLst (pListE i)
]
Each element starts with different character - Expr.Var starts with a letter, Expr.Lit with a number, L.pParensed with parenthesis (, Expr.Tuple with brace { and Expr.List with bracket [.
I've got a big test code in which there are no tuples and no lists. The code parses in 0.15s. When I uncomment the above lines, the time increases to 0.65s. This is over 400% slowdown... How is it possible? I'm using only greedy operators and I'm sure parser is not haning in Tuple nor List section, because in the whole code there is no tuple nor list.
If you would need more code or definitions, I'll of course poste it.
I think the cause of the matter may lie in the fact that you have parameterised pFactor. This will cause each call to such a parser to build a new parser, which will take time. It is much better to create such parsers once and for all and share them in the actual parsing process. I cannot see how you are using this parser I cannot answer your questions any further.

Production rules for a grammar

Before anything, yes, this is from coursework and I've been at it sporadically while dealing with another project.
A language consists of those strings (of terminals 'a' and 'b') where the number of a = number of b. Trying to find the production rules of the grammar that will define the above language.
More formally, L(G) = {w | Na(w) = Nb(w)}
So i guess it should go something like, L = {ϵ, ab, aabb, abab, abba, bbaa, ... and so on }
Any hints, or even related problems with solution would do which might help me better grasp the present problem.
I think this is it:
S -> empty (1)
S -> aSb (2)
S -> bSa (3)
S -> SS (4)
Edit: I changed the rules. Now here's how to produce bbaaabab
S ->(4) SS ->(4) SSS ->(3) bSaSS ->(3) bbSaaSS -> (1)bbaaSS
->(2) bbaaaSbS ->(2) bbaaaSbaSb ->(1)bbaaabaSb ->(1) bbaaabab
Another hint: Write all your production rules such that they guarantee Na(w) = Nb(w) at every step.

Good algorithm and data structure for looking up words with missing letters?

I need to write an efficient algorithm for looking up words with missing letters in a dictionary and I want the set of possible words.
For example, if I have th??e, I might get back "these", "those", "theme:, "there", etc.
There will be up to TWO question marks and when two question marks do occur, they will occur in sequence.
I was wondering if anyone can suggest some data structures or algorithm I should use.
A Trie is too space-inefficient and would make it too slow. Any other ideas modifications?
Currently I am using 3 hash tables for when it is an exact match, 1 question mark, and 2 question marks.
Given a dictionary I hash all the possible words. For example, if I have the word WORD. I hash WORD, ?ORD, W?RD, WO?D, WOR?, ??RD, W??D, and WO?? into the dictionary. Then I use a link list to link the collisions together. So say hash(W?RD) = hash(STR?NG) = 17. hashtab(17) will point to WORD and WORD points to STRING because it is a linked list.
The timing on average lookup of one word is about 2e-6s. I am looking to do better, preferably on the order of 1e-9. It took 0.5 seconds for 3m entries insertions and it took 4 seconds for 3m entries lookup.
I believe in this case it is best to just use a flat file where each word stands in one line. With this you can conveniently use the power of a regular expression search, which is highly optimized and will probably beat any data structure you can devise yourself for this problem.
Solution #1: Using Regex
This is working Ruby code for this problem:
def query(str, data)
r = Regexp.new("^#{str.gsub("?", ".")}$")
idx = 0
begin
idx = data.index(r, idx)
if idx
yield data[idx, str.size]
idx += str.size + 1
end
end while idx
end
start_time = Time.now
query("?r?te", File.read("wordlist.txt")) do |w|
puts w
end
puts Time.now - start_time
The file wordlist.txt contains 45425 words (downloadable here). The program's output for query ?r?te is:
brute
crate
Crete
grate
irate
prate
write
wrote
0.013689
So it takes just 37 milliseconds to both read the whole file and to find all matches in it. And it scales very well for all kinds of query patterns, even where a Trie is very slow:
query ????????????????e
counterproductive
indistinguishable
microarchitecture
microprogrammable
0.018681
query ?h?a?r?c?l?
theatricals
0.013608
This looks fast enough for me.
Solution #2: Regex with Prepared Data
If you want to go even faster, you can split the wordlist into strings that contain words of equal lengths and just search the correct one based on your query length. Replace the last 5 lines with this code:
def query_split(str, data)
query(str, data[str.length]) do |w|
yield w
end
end
# prepare data
data = Hash.new("")
File.read("wordlist.txt").each_line do |w|
data[w.length-1] += w
end
# use prepared data for query
start_time = Time.now
query_split("?r?te", data) do |w|
puts w
end
puts Time.now - start_time
Building the data structure takes now about 0.4 second, but all queries are about 10 times faster (depending on the number of words with that length):
?r?te 0.001112 sec
?h?a?r?c?l? 0.000852 sec
????????????????e 0.000169 sec
Solution #3: One Big Hashtable (Updated Requirements)
Since you have changed your requirements, you can easily expand on your idea to use just one big hashtable that contains all precalculated results. But instead of working around collisions yourself you could rely on the performance of a properly implemented hashtable.
Here I create one big hashtable, where each possible query maps to a list of its results:
def create_big_hash(data)
h = Hash.new do |h,k|
h[k] = Array.new
end
data.each_line do |l|
w = l.strip
# add all words with one ?
w.length.times do |i|
q = String.new(w)
q[i] = "?"
h[q].push w
end
# add all words with two ??
(w.length-1).times do |i|
q = String.new(w)
q[i, 2] = "??"
h[q].push w
end
end
h
end
# prepare data
t = Time.new
h = create_big_hash(File.read("wordlist.txt"))
puts "#{Time.new - t} sec preparing data\n#{h.size} entries in big hash"
# use prepared data for query
t = Time.new
h["?ood"].each do |w|
puts w
end
puts (Time.new - t)
Output is
4.960255 sec preparing data
616745 entries in big hash
food
good
hood
mood
wood
2.0e-05
The query performance is O(1), it is just a lookup in the hashtable. The time 2.0e-05 is probably below the timer's precision. When running it 1000 times, I get an average of 1.958e-6 seconds per query. To get it faster, I would switch to C++ and use the Google Sparse Hash which is extremely memory efficient, and fast.
Solution #4: Get Really Serious
All above solutions work and should be good enough for many use cases. If you really want to get serious and have lots of spare time on your hands, read some good papers:
Tries for Approximate String Matching - If well implemented, tries can have very compact memory requirements (50% less space than the dictionary itself), and are very fast.
Agrep - A Fast Approximate Pattern-Matching Tool - Agrep is based on a new efficient and flexible algorithm for approximate string matching.
Google Scholar search for approximate string matching - More than enough to read on this topic.
Given the current limitations:
There will be up to 2 question marks
When there are 2 question marks, they appear together
There are ~100,000 words in the dictionary, average word length is 6.
I have two viable solutions for you:
The fast solution: HASH
You can use a hash which keys are your words with up to two '?', and the values are a list of fitting words. This hash will have around 100,000 + 100,000*6 + 100,000*5 = 1,200,000 entries (if you have 2 question marks, you just need to find the place of the first one...). Each entry can save a list of words, or a list of pointers to the existing words. If you save a list of pointers, and we assume that there are on average less than 20 words matching each word with two '?', then the additional memory is less than 20 * 1,200,000 = 24,000,000.
If each pointer size is 4 bytes, then the memory requirement here is (24,000,000+1,200,000)*4 bytes = 100,800,000 bytes ~= 96 mega bytes.
To sum up this solution:
Memory Consumption: ~96 MB
Time for each search: calculating a hash function, and following a pointer. O(1)
Note: if you want to use a hash of a smaller size, you can, but then it is better to save a balanced search tree in each entry instead of a linked list, for better performance.
The space savvy, but still very fast solution: TRIE variation
This solution uses the following observation:
If the '?' signs were at the end of the word, trie would be an excellent solution.
The search in the trie would search at the length of the word, and for the last couple of letters, a DFS traversal would bring all of the endings.
Very fast, and very memory-savvy solution.
So lets use this observation, in order to build something to work exactly like this.
You can think about every word you have in the dictionary, as a word ending with # (or any other symbol that does not exist in your dictionary).
So the word 'space' would be 'space#'.
Now, if you rotate each of the words, with the '#' sign, you get the following:
space#, pace#s, ace#sp, *ce#spa*, e#spac
(no # as first letter).
If you insert all of these variations into a TRIE, you can easily find the word you are seeking at the length of the word, by 'rotating' your word.
Example:
You want to find all words that fit 's??ce' (one of them is space, another is slice).
You build the word: s??ce#, and rotate it so that the ? sign is in the end. i.e. 'ce#s??'
All of the rotation variations exist inside the trie, and specifically 'ce#spa' (marked with * above). After the beginning is found - you need to go over all of the continuations in the appropriate length, and save them. Then, you need to rotate them again so that the # is the last letter, and walla - you have all of the words you were looking for!
To sum up this solution:
Memory Consumption:
For each word, all of its rotations appear in the trie. On average, *6 of the memory size is saved in the trie. The trie size is around *3 (just guessing...) of the space saved inside it. So the total space necessary for this trie is 6*3*100,000 = 1,800,000 words ~= 6.8 mega bytes.
Time for each search:
rotating the word: O(word length)
seeking the beginning in the trie: O(word length)
going over all of the endings: O(number of matches)
rotating the endings: O(total length of answers)
To sum up, it is very very fast, and depends on the word length * small constant.
To sum up...
The second choice has a great time/space complexity, and would be the best option for you to use. There are a few problems with the second solution (in which case you might want to use the first solution):
More complex to implement. I'm not sure whether there are programming languages with tries built-in out of the box. If there isn't - it means that you'll need to implement it yourself...
Does not scale well. If tomorrow you decide that you need your question marks spread all over the word, and not necessarily joined together, you'll need to think hard of how to fit the second solution to it. In the case of the first solution - it is quite easy to generalize.
To me this problem sounds like a good fit for a Trie data structure. Enter the entire dictionary into your trie, and then look up the word. For a missing letter you would have to try all sub-tries, which should be relatively easy to do with a recursive approach.
EDIT: I wrote a simple implementation of this in Ruby just now: http://gist.github.com/262667.
Directed Acyclic Word Graph would be perfect data structure for this problem. It combines efficiency of a trie (trie can be seen as a special case of DAWG), but is much more space efficient. Typical DAWG will take fraction of size that plain text file with words would take.
Enumerating words that meet specific conditions is simple and the same as in trie - you have to traverse graph in depth-first fashion.
Anna's second solution is the inspiration for this one.
First, load all the words into memory and divide the dictionary into sections based on word length.
For each length, make n copies of an array of pointers to the words. Sort each array so that the strings appear in order when rotated by a certain number of letters. For example, suppose the original list of 5-letter words is [plane, apple, space, train, happy, stack, hacks]. Then your five arrays of pointers will be:
rotated by 0 letters: [apple, hacks, happy, plane, space, stack, train]
rotated by 1 letter: [hacks, happy, plane, space, apple, train, stack]
rotated by 2 letters: [space, stack, train, plane, hacks, apple, happy]
rotated by 3 letters: [space, stack, train, hacks, apple, plane, happy]
rotated by 4 letters: [apple, plane, space, stack, train, hacks, happy]
(Instead of pointers, you can use integers identifying the words, if that saves space on your platform.)
To search, just ask how much you would have to rotate the pattern so that the question marks appear at the end. Then you can binary search in the appropriate list.
If you need to find matches for ??ppy, you would have to rotate that by 2 to make ppy??. So look in the array that is in order when rotated by 2 letters. A quick binary search finds that "happy" is the only match.
If you need to find matches for th??g, you would have to rotate that by 4 to make gth??. So look in array 4, where a binary search finds that there are no matches.
This works no matter how many question marks there are, as long as they all appear together.
Space required in addition to the dictionary itself: For words of length N, this requires space for (N times the number of words of length N) pointers or integers.
Time per lookup: O(log n) where n is the number of words of the appropriate length.
Implementation in Python:
import bisect
class Matcher:
def __init__(self, words):
# Sort the words into bins by length.
bins = []
for w in words:
while len(bins) <= len(w):
bins.append([])
bins[len(w)].append(w)
# Make n copies of each list, sorted by rotations.
for n in range(len(bins)):
bins[n] = [sorted(bins[n], key=lambda w: w[i:]+w[:i]) for i in range(n)]
self.bins = bins
def find(self, pattern):
bins = self.bins
if len(pattern) >= len(bins):
return []
# Figure out which array to search.
r = (pattern.rindex('?') + 1) % len(pattern)
rpat = (pattern[r:] + pattern[:r]).rstrip('?')
if '?' in rpat:
raise ValueError("non-adjacent wildcards in pattern: " + repr(pattern))
a = bins[len(pattern)][r]
# Binary-search the array.
class RotatedArray:
def __len__(self):
return len(a)
def __getitem__(self, i):
word = a[i]
return word[r:] + word[:r]
ra = RotatedArray()
start = bisect.bisect(ra, rpat)
stop = bisect.bisect(ra, rpat[:-1] + chr(ord(rpat[-1]) + 1))
# Return the matches.
return a[start:stop]
words = open('/usr/share/dict/words', 'r').read().split()
print "Building matcher..."
m = Matcher(words) # takes 1-2 seconds, for me
print "Done."
print m.find("st??k")
print m.find("ov???low")
On my computer, the system dictionary is 909KB big and this program uses about 3.2MB of memory in addition to what it takes just to store the words (pointers are 4 bytes). For this dictionary, you could cut that in half by using 2-byte integers instead of pointers, because there are fewer than 216 words of each length.
Measurements: On my machine, m.find("st??k") runs in 0.000032 seconds, m.find("ov???low") in 0.000034 seconds, and m.find("????????????????e") in 0.000023 seconds.
By writing out the binary search instead of using class RotatedArray and the bisect library, I got those first two numbers down to 0.000016 seconds: twice as fast. Implementing this in C++ would make it faster still.
First we need a way to compare the query string with a given entry. Let's assume a function using regexes: matches(query,trialstr).
An O(n) algorithm would be to simply run through every list item (your dictionary would be represented as a list in the program), comparing each to your query string.
With a bit of pre-calculation, you could improve on this for large numbers of queries by building an additional list of words for each letter, so your dictionary might look like:
wordsbyletter = { 'a' : ['aardvark', 'abacus', ... ],
'b' : ['bat', 'bar', ...],
.... }
However, this would be of limited use, particularly if your query string starts with an unknown character. So we can do even better by noting where in a given word a particular letter lies, generating:
wordsmap = { 'a':{ 0:['aardvark', 'abacus'],
1:['bat','bar']
2:['abacus']},
'b':{ 0:['bat','bar'],
1:['abacus']},
....
}
As you can see, without using indices, you will end up hugely increasing the amount of required storage space - specifically a dictionary of n words and average length m will require nm2 of storage. However, you could very quickly now do your look up to get all the words from each set that can match.
The final optimisation (which you could use off the bat on the naive approach) is to also separate all the words of the same length into separate stores, since you always know how long the word is.
This version would be O(kx) where k is the number of known letters in the query word, and x=x(n) is the time to look up a single item in a dictionary of length n in your implementation (usually log(n).
So with a final dictionary like:
allmap = {
3 : {
'a' : {
1 : ['ant','all'],
2 : ['bar','pat']
}
'b' : {
1 : ['bar','boy'],
...
}
4 : {
'a' : {
1 : ['ante'],
....
Then our algorithm is just:
possiblewords = set()
firsttime = True
wordlen = len(query)
for idx,letter in enumerate(query):
if(letter is not '?'):
matchesthisletter = set(allmap[wordlen][letter][idx])
if firsttime:
possiblewords = matchesthisletter
else:
possiblewords &= matchesthisletter
At the end, the set possiblewords will contain all the matching letters.
If you generate all the possible words that match the pattern (arate, arbte, arcte ... zryte, zrzte) and then look them up in a binary tree representation of the dictionary, that will have the average performance characteristics of O(e^N1 * log(N2)) where N1 is the number of question marks and N2 is the size of the dictionary. Seems good enough for me but I'm sure it's possible to figure out a better algorithm.
EDIT: If you will have more than say, three question marks, have a look at Phil H's answer and his letter indexing approach.
Assume you have enough memory, you could build a giant hashmap to provide the answer in constant time. Here is a quick example in python:
from array import array
all_words = open("english-words").read().split()
big_map = {}
def populate_map(word):
for i in range(pow(2, len(word))):
bin = _bin(i, len(word))
candidate = array('c', word)
for j in range(len(word)):
if bin[j] == "1":
candidate[j] = "?"
if candidate.tostring() in big_map:
big_map[candidate.tostring()].add(word)
else:
big_map[candidate.tostring()] = set([word])
def _bin(x, width):
return ''.join(str((x>>i)&1) for i in xrange(width-1,-1,-1))
def run():
for word in all_words:
populate_map(word)
run()
>>> big_map["y??r"]
set(['your', 'year'])
>>> big_map["yo?r"]
set(['your'])
>>> big_map["?o?r"]
set(['four', 'poor', 'door', 'your', 'hour'])
You can take a look at how its done in aspell. It prompts suggestions of correct word for misspelled words.
Build a hash set of all the words. To find matches, replace the question marks in the pattern with each possible combination of letters. If there are two question marks, a query consists of 262 = 676 quick, constant-expected-time hash table lookups.
import itertools
words = set(open("/usr/share/dict/words").read().split())
def query(pattern):
i = pattern.index('?')
j = pattern.rindex('?') + 1
for combo in itertools.product('abcdefghijklmnopqrstuvwxyz', repeat=j-i):
attempt = pattern[:i] + ''.join(combo) + pattern[j:]
if attempt in words:
print attempt
This uses less memory than my other answer, but it gets exponentially slower as you add more question marks.
If 80-90% accuracy is acceptable, you could manage with Peter Norvig's spell checker. The implementation is small and elegant.
A regex-based solution will consider every possible value in your dictionary. If performance is your largest constraint, an index could be built to speed it up considerably.
You could start with an index on each word length containing an index of each index=character matching word sets. For length 5 words, for example, 2=r : {write, wrote, drate, arete, arite}, 3=o : {wrote, float, group}, etc. To get the possible matches for the original query, say '?ro??', the word sets would be intersected resulting in {wrote, group} in this case.
This is assuming that the only wildcard will be a single character and that the word length is known up front. If these are not valid assumptions, I can recommend n-gram based text matching, such as discussed in this paper.
The data structure you want is called a trie - see the wikipedia article for a short summary.
A trie is a tree structure where the paths through the tree form the set of all the words you wish to encode - each node can have up to 26 children, on for each possible letter at the next character position. See the diagram in the wikipedia article to see what I mean.
Have you considered using a Ternary Search Tree?
The lookup speed is comparable to a trie, but it is more space-efficient.
I have implemented this data structure several times, and it is a quite straightforward task in most languages.
My first post had an error that Jason found, it did not work well when ?? was in the beginning. I have now borrowed the cyclic shifts from Anna..
My solution:
Introduce an end-of-word character (#) and store all cyclic shifted words in sorted arrays!! Use one sorted array for each word length. When looking for "th??e#", shift the string to move the ?-marks to the end (obtaining e#th??) and pick the array containing words of length 5 and make a binary search for the first word occurring after string "e#th". All remaining words in the array match, i.e., we will find "e#thoo (thoose), e#thes (these), etc.
The solution has time complexity Log( N ), where N is the size of the dictionary, and it expands the size of the data by a factor of 6 or so ( the average word length)
Here's how I'd do it:
Concatenate the words of the dictionary into one long String separated by a non-word character.
Put all words into a TreeMap, where the key is the word and the value is the offset of the start of the word in the big String.
Find the base of the search string; i.e. the largest leading substring that doesn't include a '?'.
Use TreeMap.higherKey(base) and TreeMap.lowerKey(next(base)) to find the range within the String between which matches will be found. (The next method needs to calculate the next larger word to the base string with the same number or fewer characters; e.g. next("aa") is "ab", next("az") is "b".)
Create a regex for the search string and use Matcher.find() to search the substring corresponding to the range.
Steps 1 and 2 are done beforehand giving a data structure using O(NlogN) space where N is the number of words.
This approach degenerates to a brute-force regex search of the entire dictionary when the '?' appears in the first position, but the further to the right it is, the less matching needs to be done.
EDIT:
To improve the performance in the case where '?' is the first character, create a secondary lookup table that records the start/end offsets of runs of words whose second character is 'a', 'b', and so on. This can be used in the case where the first non-'?' is second character. You can us a similar approach for cases where the first non-'?' is the third character, fourth character and so on, but you end up with larger and larger numbers of smaller and smaller runs, and eventually this "optimization" becomes ineffective.
An alternative approach which requires significantly more space, but which is faster in most cases, is to prepare the dictionary data structure as above for all rotations of the words in the dictionary. For instance, the first rotation would consist of all words 2 characters or more with the first character of the word moved to the end of the word. The second rotation would be words of 3 characters or more with the first two characters moved to the end, and so on. Then to do the search, look for the longest sequence of non-'?' characters in the search string. If the index of the first character of this substring is N, use the Nth rotation to find the ranges, and search in the Nth rotation word list.
A lazy solution is to let SQLite or another DBMS do the job for you.
Just create an in-memory database, load your words and run a select using the LIKE operator.
Summary: Use two compact binary-searched indexes, one of the words, and one of the reversed words. The space cost is 2N pointers for the indexes; almost all lookups go very fast; the worst case, "??e", is still decent. If you make separate tables for each word length, that'd make even the worst case very fast.
Details: Stephen C. posted a good idea: search an ordered dictionary to find the range where the pattern can appear. This doesn't help, though, when the pattern starts with a wildcard. You might also index by word-length, but here's another idea: add an ordered index on the reversed dictionary words; then a pattern always yields a small range in either the forward index or the reversed-word index (since we're told there are no patterns like ?ABCD?). The words themselves need be stored only once, with the entries of both structures pointing to the same words, and the lookup procedure viewing them either forwards or in reverse; but to use Python's built-in binary-search function I've made two separate strings arrays instead, wasting some space. (I'm using a sorted array instead of a tree as others have suggested, as it saves space and goes at least as fast.)
Code:
import bisect, re
def forward(string): return string
def reverse(string): return string[::-1]
index_forward = sorted(line.rstrip('\n')
for line in open('/usr/share/dict/words'))
index_reverse = sorted(map(reverse, index_forward))
def lookup(pattern):
"Return a list of the dictionary words that match pattern."
if reverse(pattern).find('?') <= pattern.find('?'):
key, index, fixup = pattern, index_forward, forward
else:
key, index, fixup = reverse(pattern), index_reverse, reverse
assert all(c.isalpha() or c == '?' for c in pattern)
lo = bisect.bisect_left(index, key.replace('?', 'A'))
hi = bisect.bisect_right(index, key.replace('?', 'z'))
r = re.compile(pattern.replace('?', '.') + '$')
return filter(r.match, (fixup(index[i]) for i in range(lo, hi)))
Tests: (The code also works for patterns like ?AB?D?, though without the speed guarantee.)
>>> lookup('hello')
['hello']
>>> lookup('??llo')
['callo', 'cello', 'hello', 'uhllo', 'Rollo', 'hollo', 'nullo']
>>> lookup('hel??')
['helio', 'helix', 'hello', 'helly', 'heloe', 'helve']
>>> lookup('he?l')
['heal', 'heel', 'hell', 'heml', 'herl']
>>> lookup('hx?l')
[]
Efficiency: This needs 2N pointers plus the space needed to store the dictionary-word text (in the tuned version). The worst-case time comes on the pattern '??e' which looks at 44062 candidates in my 235k-word /usr/share/dict/words; but almost all queries are much faster, like 'h??lo' looking at 190, and indexing first on word-length would reduce '??e' almost to nothing if we need to. Each candidate-check goes faster than the hashtable lookups others have suggested.
This resembles the rotations-index solution, which avoids all false match candidates at the cost of needing about 10N pointers instead of 2N (supposing an average word-length of about 10, as in my /usr/share/dict/words).
You could do a single binary search per lookup, instead of two, using a custom search function that searches for both low-bound and high-bound together (so the shared part of the search isn't repeated).
If you only have ? wildcards, no * wildcards that match a variable number of characters, you could try this: For each character index, build a dictionary from characters to sets of words. i.e. if the words are write, wrote, drate, arete, arite, your dictionary structure would look like this:
Character Index 0:
'a' -> {"arete", "arite"}
'd' -> {"drate"}
'w' -> {"write", "wrote"}
Character Index 1:
'r' -> {"write", "wrote", "drate", "arete", "arite"}
Character Index 2:
'a' -> {"drate"}
'e' -> {"arete"}
'i' -> {"write", "arite"}
'o' -> {"wrote"}
...
If you want to look up a?i?? you would take the set that corresponds to character index 0 => 'a' {"arete", "arite"} and the set that corresponds to character index 2 = 'i' => {"write", "arite"} and take the set intersection.
If you seriously want something on the order of a billion searches per second (though i can't dream why anyone outside of someone making the next grand-master scrabble AI or something for a huge web service would want that fast), i recommend utilizing threading to spawn [number of cores on your machine] threads + a master thread that delegates work to all of those threads. Then apply the best solution you have found so far and hope you don't run out of memory.
An idea i had is that you can speed up some cases by preparing sliced down dictionaries by letter then if you know the first letter of the selection you can resort to looking in a much smaller haystack.
Another thought I had was that you were trying to brute-force something -- perhaps build a DB or list or something for scrabble?

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