This package consists of Perl modules that implement the semantic relatedness measures of Leacock-Chodorow (1998), Jiang-Conrath (1997), Resnik (1995), Lin (1998), Hirst-St-Onge (1998), Wu & Palmer (1994), Banerjee-Pedersen (2002), and Patwardhan (2003).
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We are pleased to announce the release of WordNet-Similarity version 2.05. This version contains some very significant changes to the structure and function of the /utils that compute information content, and fixes several bugs in these calculations. In addition, the process for finding WordNet compounds in text has been centralized in WordNet::Tools, and an existing bug in the process has been fixed. Due to the bug fixes present in this release, you are strongly encourage to upgrade to 2.05 at your earliest opportunity. Please see the Change Log for additional details.
NAME CHANGES - Revision history for WordNet::Similarity DESCRIPTION Version 2.05 (Released 06/16/2008) * 05/30/08 (1) Created new module WordNet::Similarity::FrequencyCounter containing common support code for information content programs. (Sid) (2) Updated all the frequency counting programs in /utils (*Freq.pl) to use the common code in WordNet::Similarity::FrequencyCounter. (Sid) (3) Changed the default path to Perl from /usr/local/bin to /usr/bin in all scripts and tests in the package. (Sid) (4) Fixed incorrect handling of BNC header information. (Sid) (5) Modified the compoundify() method in WordNet::Tools to include compounds containing special characters (period, hyphen, forward-slash, single-quote). (Sid) (6) Updated compoundify() to handle larger compounds. (Sid) * 04/23/08 (1) Fixed the "excessive ROOTs" bug in *Freq.pl. (Sid) (2) Fixed the extra verb concept counts in *Freq.pl. (Sid)
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