-
Notifications
You must be signed in to change notification settings - Fork 132
percyliang/brown-cluster
Folders and files
Name | Name | Last commit message | Last commit date | |
---|---|---|---|---|
Repository files navigation
Implementation of the Brown hierarchical word clustering algorithm. Percy Liang Release 1.3 2012.07.24 Input: a sequence of words separated by whitespace (see input.txt for an example). Output: for each word type, its cluster (see output.txt for an example). In particular, each line is: <cluster represented as a bit string> <word> <number of times word occurs in input> Runs in $O(N C^2)$, where $N$ is the number of word types and $C$ is the number of clusters. References: Brown, et al.: Class-Based n-gram Models of Natural Language http://acl.ldc.upenn.edu/J/J92/J92-4003.pdf Liang: Semi-supervised learning for natural language processing http://cs.stanford.edu/~pliang/papers/meng-thesis.pdf Compile: make Run: # Clusters input.txt into 50 clusters: ./wcluster --text input.txt --c 50 # Output in input-c50-p1.out/paths ============================================================ Change Log 1.3: compatibility updates for newer versions of g++ (courtesy of Chris Dyer). 1.2: make compatible with MacOS (replaced timespec with timeval and changed order of linking). 1.1: Removed deprecated operators so it works with GCC 4.3. ============================================================ (C) Copyright 2007-2012, Percy Liang http://cs.stanford.edu/~pliang Permission is granted for anyone to copy, use, or modify these programs and accompanying documents for purposes of research or education, provided this copyright notice is retained, and note is made of any changes that have been made. These programs and documents are distributed without any warranty, express or implied. As the programs were written for research purposes only, they have not been tested to the degree that would be advisable in any important application. All use of these programs is entirely at the user's own risk.
About
C++ implementation of the Brown word clustering algorithm.
Resources
Stars
Watchers
Forks
Releases
No releases published
Packages 0
No packages published