Amis - A maximum entropy estimator for feature forests
Amis is a parameter estimator for maximun entropy models [1]. Given a set of
events as training data, the program outputs parameters that maximize
the likelihood of the training data. The software supports the
following functions.
Download
Quick Installation
Unpack the package, run "configure", and "make install".
% tar xvzf amis-x.y.z.tar.gz
% cd amis-x.y.z
% ./configure
% make install
This procedure installs "/usr/local/bin/amis" (you must have an access
to "/usr/local/bin/"). If you want to install it in another
directory, see Amis manual.
Manuals
[1] Adam L. Berger, Stephen A. Della Pietra and Vincent J. Della
Pietra. A maximum entropy approach to natural language processing.
Computational Linguistics, 22(1):39-71, 1996.
[2] Yusuke Miyao and Jun'ichi Tsujii. Maximum entropy estimation for
feature forests. In Proc. HLT2002.
[3] Stephen A. Della Pietra, Vincent J. Della Pietra and John
Lafferty. Inducing features of random fields. IEEE Transactions on
Pattern Analysis and Machine Intelligence, 19(4):380-393, 1997.
[4] Jorge Nocedal. Updating quasi-Newton matrices with limited
storage. Mathematics of Computation, 35:773-783, 1980.