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Posted to commits@spamassassin.apache.org by he...@apache.org on 2022/04/02 08:04:26 UTC

svn commit: r1899507 - in /spamassassin: branches/3.4/sa-learn.raw trunk/sa-learn.raw

Author: hege
Date: Sat Apr  2 08:04:26 2022
New Revision: 1899507

URL: http://svn.apache.org/viewvc?rev=1899507&view=rev
Log:
Bug 7950 - sa-learn documentation broken link

Modified:
    spamassassin/branches/3.4/sa-learn.raw
    spamassassin/trunk/sa-learn.raw

Modified: spamassassin/branches/3.4/sa-learn.raw
URL: http://svn.apache.org/viewvc/spamassassin/branches/3.4/sa-learn.raw?rev=1899507&r1=1899506&r2=1899507&view=diff
==============================================================================
--- spamassassin/branches/3.4/sa-learn.raw (original)
+++ spamassassin/branches/3.4/sa-learn.raw Sat Apr  2 08:04:26 2022
@@ -1344,7 +1344,7 @@ Paul Graham's "A Plan For Spam" paper
 E<lt>http://www.linuxjournal.com/article/6467E<gt>
 Gary Robinson's f(x) and combining algorithms, as used in SpamAssassin
 
-E<lt>http://www.bgl.nu/~glouis/bogofilter/E<gt>
+E<lt>http://web.archive.org/web/20120512230723/http://www.bgl.nu/~glouis/bogofilter/E<gt>
 'Training on error' page.  A discussion of various Bayes training regimes,
 including 'train on error' and unsupervised training.
 

Modified: spamassassin/trunk/sa-learn.raw
URL: http://svn.apache.org/viewvc/spamassassin/trunk/sa-learn.raw?rev=1899507&r1=1899506&r2=1899507&view=diff
==============================================================================
--- spamassassin/trunk/sa-learn.raw (original)
+++ spamassassin/trunk/sa-learn.raw Sat Apr  2 08:04:26 2022
@@ -1344,7 +1344,7 @@ Paul Graham's "A Plan For Spam" paper
 E<lt>http://www.linuxjournal.com/article/6467E<gt>
 Gary Robinson's f(x) and combining algorithms, as used in SpamAssassin
 
-E<lt>http://www.bgl.nu/~glouis/bogofilter/E<gt>
+E<lt>http://web.archive.org/web/20120512230723/http://www.bgl.nu/~glouis/bogofilter/E<gt>
 'Training on error' page.  A discussion of various Bayes training regimes,
 including 'train on error' and unsupervised training.