aboutsummaryrefslogtreecommitdiffstats
diff options
context:
space:
mode:
authorrafan <rafan@FreeBSD.org>2009-02-25 10:30:35 +0800
committerrafan <rafan@FreeBSD.org>2009-02-25 10:30:35 +0800
commite5ba1ccf03804e8db1b418326f2dc9e0b8080cd6 (patch)
tree459a025bf581df72b1e32af0e2f20d35d38c32d3
parent137f5d6bb84073598f700161fac89a125d723736 (diff)
downloadfreebsd-ports-gnome-e5ba1ccf03804e8db1b418326f2dc9e0b8080cd6.tar.gz
freebsd-ports-gnome-e5ba1ccf03804e8db1b418326f2dc9e0b8080cd6.tar.zst
freebsd-ports-gnome-e5ba1ccf03804e8db1b418326f2dc9e0b8080cd6.zip
- Update description to reflect reality
-rw-r--r--science/libsvm/pkg-descr35
1 files changed, 22 insertions, 13 deletions
diff --git a/science/libsvm/pkg-descr b/science/libsvm/pkg-descr
index 95d31e4c9d00..72d16dab601e 100644
--- a/science/libsvm/pkg-descr
+++ b/science/libsvm/pkg-descr
@@ -1,19 +1,28 @@
LIBSVM is an integrated software for support vector classification, (C-SVC,
-nu-SVC ), regression (epsilon-SVR, nu-SVR) and distribution estimation
-(one-class SVM ). It supports multi-class classification. The basic algorithm
-is a simplification of both SMO by Platt and SVMLight by Joachims. It is also
-a simplification of the modification 2 of SMO by Keerthi et al.
+nu-SVC), regression (epsilon-SVR, nu-SVR) and distribution estimation
+(one-class SVM). It supports multi-class classification.
-Our goal is to help users from other fields to easily use SVM as a tool.
-LIBSVM provides a simple interface where users can easily link it with their
-own programs. Main features of LIBSVM include
+Since version 2.8, it implements an SMO-type algorithm proposed in this paper:
+R.-E. Fan, P.-H. Chen, and C.-J. Lin. Working set selection using second order
+information for training SVM. Journal of Machine Learning Research 6,
+1889-1918, 2005. You can also find a pseudo code there. (how to cite LIBSVM)
-Different SVM formulations
-Efficient multi-class classification
-Cross validation for model selection
-Weighted SVM for unbalanced data
-Both C++ and Java sources
-GUI demonstrating SVM classification and regression
+Our goal is to help users from other fields to easily use SVM as a tool. LIBSVM
+provides a simple interface where users can easily link it with their own
+programs. Main features of LIBSVM include
+
+ * Different SVM formulations
+ * Efficient multi-class classification
+ * Cross validation for model selection
+ * Probability estimates
+ * Weighted SVM for unbalanced data
+ * Both C++ and Java sources
+ * GUI demonstrating SVM classification and regression
+ * Python, R (also Splus), MATLAB, Perl, Ruby, Weka, Common LISP and LabVIEW
+ interfaces. C# .NET code is available.
+ It's also included in some learning environments: YALE and PCP.
+ * Automatic model selection which can generate contour of cross valiation
+ accuracy.
WWW: http://www.csie.ntu.edu.tw/~cjlin/libsvm/
Author: Chih-Chung Chang and Chih-Jen Lin <cjlin@csie.ntu.edu.tw>