Welcome to OGeek Q&A Community for programmer and developer-Open, Learning and Share
Welcome To Ask or Share your Answers For Others

Categories

0 votes
220 views
in Technique[技术] by (71.8m points)

c - Effcient way to find longest duplicate string for Python (From Programming Pearls)

From Section 15.2 of Programming Pearls

The C codes can be viewed here: http://www.cs.bell-labs.com/cm/cs/pearls/longdup.c

When I implement it in Python using suffix-array:

example = open("iliad10.txt").read()
def comlen(p, q):
    i = 0
    for x in zip(p, q):
        if x[0] == x[1]:
            i += 1
        else:
            break
    return i

suffix_list = []
example_len = len(example)
idx = list(range(example_len))
idx.sort(cmp = lambda a, b: cmp(example[a:], example[b:]))  #VERY VERY SLOW

max_len = -1
for i in range(example_len - 1):
    this_len = comlen(example[idx[i]:], example[idx[i+1]:])
    print this_len
    if this_len > max_len:
        max_len = this_len
        maxi = i

I found it very slow for the idx.sort step. I think it's slow because Python need to pass the substring by value instead of by pointer (as the C codes above).

The tested file can be downloaded from here

The C codes need only 0.3 seconds to finish.

time cat iliad10.txt |./longdup 
On this the rest of the Achaeans with one voice were for
respecting the priest and taking the ransom that he offered; but
not so Agamemnon, who spoke fiercely to him and sent him roughly
away. 

real    0m0.328s
user    0m0.291s
sys 0m0.006s

But for Python codes, it never ends on my computer (I waited for 10 minutes and killed it)

Does anyone have ideas how to make the codes efficient? (For example, less than 10 seconds)

See Question&Answers more detail:os

与恶龙缠斗过久,自身亦成为恶龙;凝视深渊过久,深渊将回以凝视…
Welcome To Ask or Share your Answers For Others

1 Reply

0 votes
by (71.8m points)

My solution is based on Suffix arrays. It is constructed by Prefix doubling the Longest common prefix. The worst-case complexity is O(n (log n)^2). The file "iliad.mb.txt" takes 4 seconds on my laptop. The longest_common_substring function is short and can be easily modified, e.g. for searching the 10 longest non-overlapping substrings. This Python code is faster than the original C code from the question, if duplicate strings are longer than 10000 characters.

from itertools import groupby
from operator import itemgetter

def longest_common_substring(text):
    """Get the longest common substrings and their positions.
    >>> longest_common_substring('banana')
    {'ana': [1, 3]}
    >>> text = "not so Agamemnon, who spoke fiercely to "
    >>> sorted(longest_common_substring(text).items())
    [(' s', [3, 21]), ('no', [0, 13]), ('o ', [5, 20, 38])]

    This function can be easy modified for any criteria, e.g. for searching ten
    longest non overlapping repeated substrings.
    """
    sa, rsa, lcp = suffix_array(text)
    maxlen = max(lcp)
    result = {}
    for i in range(1, len(text)):
        if lcp[i] == maxlen:
            j1, j2, h = sa[i - 1], sa[i], lcp[i]
            assert text[j1:j1 + h] == text[j2:j2 + h]
            substring = text[j1:j1 + h]
            if not substring in result:
                result[substring] = [j1]
            result[substring].append(j2)
    return dict((k, sorted(v)) for k, v in result.items())

def suffix_array(text, _step=16):
    """Analyze all common strings in the text.

    Short substrings of the length _step a are first pre-sorted. The are the 
    results repeatedly merged so that the garanteed number of compared
    characters bytes is doubled in every iteration until all substrings are
    sorted exactly.

    Arguments:
        text:  The text to be analyzed.
        _step: Is only for optimization and testing. It is the optimal length
               of substrings used for initial pre-sorting. The bigger value is
               faster if there is enough memory. Memory requirements are
               approximately (estimate for 32 bit Python 3.3):
                   len(text) * (29 + (_size + 20 if _size > 2 else 0)) + 1MB

    Return value:      (tuple)
      (sa, rsa, lcp)
        sa:  Suffix array                  for i in range(1, size):
               assert text[sa[i-1]:] < text[sa[i]:]
        rsa: Reverse suffix array          for i in range(size):
               assert rsa[sa[i]] == i
        lcp: Longest common prefix         for i in range(1, size):
               assert text[sa[i-1]:sa[i-1]+lcp[i]] == text[sa[i]:sa[i]+lcp[i]]
               if sa[i-1] + lcp[i] < len(text):
                   assert text[sa[i-1] + lcp[i]] < text[sa[i] + lcp[i]]
    >>> suffix_array(text='banana')
    ([5, 3, 1, 0, 4, 2], [3, 2, 5, 1, 4, 0], [0, 1, 3, 0, 0, 2])

    Explanation: 'a' < 'ana' < 'anana' < 'banana' < 'na' < 'nana'
    The Longest Common String is 'ana': lcp[2] == 3 == len('ana')
    It is between  tx[sa[1]:] == 'ana' < 'anana' == tx[sa[2]:]
    """
    tx = text
    size = len(tx)
    step = min(max(_step, 1), len(tx))
    sa = list(range(len(tx)))
    sa.sort(key=lambda i: tx[i:i + step])
    grpstart = size * [False] + [True]  # a boolean map for iteration speedup.
    # It helps to skip yet resolved values. The last value True is a sentinel.
    rsa = size * [None]
    stgrp, igrp = '', 0
    for i, pos in enumerate(sa):
        st = tx[pos:pos + step]
        if st != stgrp:
            grpstart[igrp] = (igrp < i - 1)
            stgrp = st
            igrp = i
        rsa[pos] = igrp
        sa[i] = pos
    grpstart[igrp] = (igrp < size - 1 or size == 0)
    while grpstart.index(True) < size:
        # assert step <= size
        nextgr = grpstart.index(True)
        while nextgr < size:
            igrp = nextgr
            nextgr = grpstart.index(True, igrp + 1)
            glist = []
            for ig in range(igrp, nextgr):
                pos = sa[ig]
                if rsa[pos] != igrp:
                    break
                newgr = rsa[pos + step] if pos + step < size else -1
                glist.append((newgr, pos))
            glist.sort()
            for ig, g in groupby(glist, key=itemgetter(0)):
                g = [x[1] for x in g]
                sa[igrp:igrp + len(g)] = g
                grpstart[igrp] = (len(g) > 1)
                for pos in g:
                    rsa[pos] = igrp
                igrp += len(g)
        step *= 2
    del grpstart
    # create LCP array
    lcp = size * [None]
    h = 0
    for i in range(size):
        if rsa[i] > 0:
            j = sa[rsa[i] - 1]
            while i != size - h and j != size - h and tx[i + h] == tx[j + h]:
                h += 1
            lcp[rsa[i]] = h
            if h > 0:
                h -= 1
    if size > 0:
        lcp[0] = 0
    return sa, rsa, lcp

I prefer this solution over more complicated O(n log n) because Python has a very fast list sorting algorithm (Timsort). Python's sort is probably faster than necessary linear time operations in the method from that article, that should be O(n) under very special presumptions of random strings together with a small alphabet (typical for DNA genome analysis). I read in Gog 2011 that worst-case O(n log n) of my algorithm can be in practice faster than many O(n) algorithms that cannot use the CPU memory cache.

The code in another answer based on grow_chains is 19 times slower than the original example from the question, if the text contains a repeated string 8 kB long. Long repeated texts are not typical for classical literature, but they are frequent e.g. in "independent" school homework collections. The program should not freeze on it.

I wrote an example and tests with the same code for Python 2.7, 3.3 - 3.6.


与恶龙缠斗过久,自身亦成为恶龙;凝视深渊过久,深渊将回以凝视…
OGeek|极客中国-欢迎来到极客的世界,一个免费开放的程序员编程交流平台!开放,进步,分享!让技术改变生活,让极客改变未来! Welcome to OGeek Q&A Community for programmer and developer-Open, Learning and Share
Click Here to Ask a Question

...