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svn merge --ignore-ancestry svn://svn.insecure.org/nmap@26621 svn://svn.insecure.org/nmap-exp/luis/nmap-os6 This is the IPv6 OS detection branch. "nmap -6 -O" works now, though at this point it only prints fingerprints and not OS guesses, because we need to collect more submissions.
486 lines
16 KiB
Plaintext
486 lines
16 KiB
Plaintext
LIBLINEAR is a simple package for solving large-scale regularized
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linear classification. It currently supports L2-regularized logistic
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regression/L2-loss support vector classification/L1-loss support vector
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classification, and L1-regularized L2-loss support vector classification/
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logistic regression. This document explains the usage of LIBLINEAR.
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To get started, please read the ``Quick Start'' section first.
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For developers, please check the ``Library Usage'' section to learn
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how to integrate LIBLINEAR in your software.
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Table of Contents
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=================
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- When to use LIBLINEAR but not LIBSVM
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- Quick Start
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- Installation
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- `train' Usage
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- `predict' Usage
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- Examples
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- Library Usage
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- Building Windows Binaries
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- Additional Information
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- MATLAB/OCTAVE interface
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- PYTHON interface
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When to use LIBLINEAR but not LIBSVM
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====================================
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There are some large data for which with/without nonlinear mappings
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gives similar performances. Without using kernels, one can
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efficiently train a much larger set via a linear classifier. These
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data usually have a large number of features. Document classification
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is an example.
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Warning: While generally liblinear is very fast, its default solver
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may be slow under certain situations (e.g., data not scaled or C is
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large). See Appendix B of our SVM guide about how to handle such
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cases.
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http://www.csie.ntu.edu.tw/~cjlin/papers/guide/guide.pdf
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Warning: If you are a beginner and your data sets are not large, you
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should consider LIBSVM first.
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LIBSVM page:
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http://www.csie.ntu.edu.tw/~cjlin/libsvm
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Quick Start
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===========
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See the section ``Installation'' for installing LIBLINEAR.
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After installation, there are programs `train' and `predict' for
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training and testing, respectively.
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About the data format, please check the README file of LIBSVM. Note
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that feature index must start from 1 (but not 0).
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A sample classification data included in this package is `heart_scale'.
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Type `train heart_scale', and the program will read the training
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data and output the model file `heart_scale.model'. If you have a test
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set called heart_scale.t, then type `predict heart_scale.t
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heart_scale.model output' to see the prediction accuracy. The `output'
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file contains the predicted class labels.
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For more information about `train' and `predict', see the sections
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`train' Usage and `predict' Usage.
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To obtain good performances, sometimes one needs to scale the
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data. Please check the program `svm-scale' of LIBSVM. For large and
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sparse data, use `-l 0' to keep the sparsity.
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Installation
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============
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On Unix systems, type `make' to build the `train' and `predict'
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programs. Run them without arguments to show the usages.
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On other systems, consult `Makefile' to build them (e.g., see
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'Building Windows binaries' in this file) or use the pre-built
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binaries (Windows binaries are in the directory `windows').
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This software uses some level-1 BLAS subroutines. The needed functions are
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included in this package. If a BLAS library is available on your
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machine, you may use it by modifying the Makefile: Unmark the following line
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#LIBS ?= -lblas
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and mark
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LIBS ?= blas/blas.a
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`train' Usage
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=============
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Usage: train [options] training_set_file [model_file]
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options:
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-s type : set type of solver (default 1)
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0 -- L2-regularized logistic regression (primal)
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1 -- L2-regularized L2-loss support vector classification (dual)
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2 -- L2-regularized L2-loss support vector classification (primal)
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3 -- L2-regularized L1-loss support vector classification (dual)
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4 -- multi-class support vector classification by Crammer and Singer
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5 -- L1-regularized L2-loss support vector classification
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6 -- L1-regularized logistic regression
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7 -- L2-regularized logistic regression (dual)
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-c cost : set the parameter C (default 1)
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-e epsilon : set tolerance of termination criterion
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-s 0 and 2
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|f'(w)|_2 <= eps*min(pos,neg)/l*|f'(w0)|_2,
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where f is the primal function and pos/neg are # of
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positive/negative data (default 0.01)
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-s 1, 3, 4 and 7
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Dual maximal violation <= eps; similar to libsvm (default 0.1)
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-s 5 and 6
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|f'(w)|_inf <= eps*min(pos,neg)/l*|f'(w0)|_inf,
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where f is the primal function (default 0.01)
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-B bias : if bias >= 0, instance x becomes [x; bias]; if < 0, no bias term added (default -1)
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-wi weight: weights adjust the parameter C of different classes (see README for details)
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-v n: n-fold cross validation mode
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-q : quiet mode (no outputs)
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Option -v randomly splits the data into n parts and calculates cross
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validation accuracy on them.
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Formulations:
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For L2-regularized logistic regression (-s 0), we solve
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min_w w^Tw/2 + C \sum log(1 + exp(-y_i w^Tx_i))
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For L2-regularized L2-loss SVC dual (-s 1), we solve
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min_alpha 0.5(alpha^T (Q + I/2/C) alpha) - e^T alpha
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s.t. 0 <= alpha_i,
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For L2-regularized L2-loss SVC (-s 2), we solve
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min_w w^Tw/2 + C \sum max(0, 1- y_i w^Tx_i)^2
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For L2-regularized L1-loss SVC dual (-s 3), we solve
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min_alpha 0.5(alpha^T Q alpha) - e^T alpha
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s.t. 0 <= alpha_i <= C,
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For L1-regularized L2-loss SVC (-s 5), we solve
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min_w \sum |w_j| + C \sum max(0, 1- y_i w^Tx_i)^2
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For L1-regularized logistic regression (-s 6), we solve
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min_w \sum |w_j| + C \sum log(1 + exp(-y_i w^Tx_i))
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where
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Q is a matrix with Q_ij = y_i y_j x_i^T x_j.
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For L2-regularized logistic regression (-s 7), we solve
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min_alpha 0.5(alpha^T Q alpha) + \sum alpha_i*log(alpha_i) + \sum (C-alpha_i)*log(C-alpha_i) - a constant
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s.t. 0 <= alpha_i <= C,
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If bias >= 0, w becomes [w; w_{n+1}] and x becomes [x; bias].
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The primal-dual relationship implies that -s 1 and -s 2 give the same
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model, and -s 0 and -s 7 give the same.
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We implement 1-vs-the rest multi-class strategy. In training i
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vs. non_i, their C parameters are (weight from -wi)*C and C,
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respectively. If there are only two classes, we train only one
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model. Thus weight1*C vs. weight2*C is used. See examples below.
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We also implement multi-class SVM by Crammer and Singer (-s 4):
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min_{w_m, \xi_i} 0.5 \sum_m ||w_m||^2 + C \sum_i \xi_i
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s.t. w^T_{y_i} x_i - w^T_m x_i >= \e^m_i - \xi_i \forall m,i
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where e^m_i = 0 if y_i = m,
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e^m_i = 1 if y_i != m,
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Here we solve the dual problem:
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min_{\alpha} 0.5 \sum_m ||w_m(\alpha)||^2 + \sum_i \sum_m e^m_i alpha^m_i
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s.t. \alpha^m_i <= C^m_i \forall m,i , \sum_m \alpha^m_i=0 \forall i
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where w_m(\alpha) = \sum_i \alpha^m_i x_i,
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and C^m_i = C if m = y_i,
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C^m_i = 0 if m != y_i.
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`predict' Usage
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===============
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Usage: predict [options] test_file model_file output_file
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options:
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-b probability_estimates: whether to predict probability estimates, 0 or 1 (default 0)
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Examples
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========
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> train data_file
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Train linear SVM with L2-loss function.
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> train -s 0 data_file
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Train a logistic regression model.
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> train -v 5 -e 0.001 data_file
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Do five-fold cross-validation using L2-loss svm.
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Use a smaller stopping tolerance 0.001 than the default
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0.1 if you want more accurate solutions.
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> train -c 10 -w1 2 -w2 5 -w3 2 four_class_data_file
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Train four classifiers:
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positive negative Cp Cn
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class 1 class 2,3,4. 20 10
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class 2 class 1,3,4. 50 10
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class 3 class 1,2,4. 20 10
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class 4 class 1,2,3. 10 10
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> train -c 10 -w3 1 -w2 5 two_class_data_file
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If there are only two classes, we train ONE model.
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The C values for the two classes are 10 and 50.
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> predict -b 1 test_file data_file.model output_file
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Output probability estimates (for logistic regression only).
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Library Usage
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=============
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- Function: model* train(const struct problem *prob,
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const struct parameter *param);
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This function constructs and returns a linear classification model
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according to the given training data and parameters.
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struct problem describes the problem:
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struct problem
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{
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int l, n;
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int *y;
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struct feature_node **x;
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double bias;
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};
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where `l' is the number of training data. If bias >= 0, we assume
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that one additional feature is added to the end of each data
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instance. `n' is the number of feature (including the bias feature
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if bias >= 0). `y' is an array containing the target values. And
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`x' is an array of pointers,
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each of which points to a sparse representation (array of feature_node) of one
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training vector.
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For example, if we have the following training data:
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LABEL ATTR1 ATTR2 ATTR3 ATTR4 ATTR5
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----- ----- ----- ----- ----- -----
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1 0 0.1 0.2 0 0
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2 0 0.1 0.3 -1.2 0
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1 0.4 0 0 0 0
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2 0 0.1 0 1.4 0.5
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3 -0.1 -0.2 0.1 1.1 0.1
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and bias = 1, then the components of problem are:
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l = 5
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n = 6
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y -> 1 2 1 2 3
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x -> [ ] -> (2,0.1) (3,0.2) (6,1) (-1,?)
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[ ] -> (2,0.1) (3,0.3) (4,-1.2) (6,1) (-1,?)
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[ ] -> (1,0.4) (6,1) (-1,?)
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[ ] -> (2,0.1) (4,1.4) (5,0.5) (6,1) (-1,?)
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[ ] -> (1,-0.1) (2,-0.2) (3,0.1) (4,1.1) (5,0.1) (6,1) (-1,?)
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struct parameter describes the parameters of a linear classification model:
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struct parameter
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{
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int solver_type;
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/* these are for training only */
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double eps; /* stopping criteria */
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double C;
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int nr_weight;
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int *weight_label;
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double* weight;
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};
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solver_type can be one of L2R_LR, L2R_L2LOSS_SVC_DUAL, L2R_L2LOSS_SVC, L2R_L1LOSS_SVC_DUAL, MCSVM_CS, L1R_L2LOSS_SVC, L1R_LR, L2R_LR_DUAL.
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L2R_LR L2-regularized logistic regression (primal)
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L2R_L2LOSS_SVC_DUAL L2-regularized L2-loss support vector classification (dual)
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L2R_L2LOSS_SVC L2-regularized L2-loss support vector classification (primal)
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L2R_L1LOSS_SVC_DUAL L2-regularized L1-loss support vector classification (dual)
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MCSVM_CS multi-class support vector classification by Crammer and Singer
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L1R_L2LOSS_SVC L1-regularized L2-loss support vector classification
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L1R_LR L1-regularized logistic regression
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L2R_LR_DUAL L2-regularized logistic regression (dual)
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C is the cost of constraints violation.
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eps is the stopping criterion.
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nr_weight, weight_label, and weight are used to change the penalty
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for some classes (If the weight for a class is not changed, it is
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set to 1). This is useful for training classifier using unbalanced
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input data or with asymmetric misclassification cost.
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nr_weight is the number of elements in the array weight_label and
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weight. Each weight[i] corresponds to weight_label[i], meaning that
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the penalty of class weight_label[i] is scaled by a factor of weight[i].
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If you do not want to change penalty for any of the classes,
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just set nr_weight to 0.
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*NOTE* To avoid wrong parameters, check_parameter() should be
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called before train().
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struct model stores the model obtained from the training procedure:
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struct model
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{
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struct parameter param;
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int nr_class; /* number of classes */
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int nr_feature;
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double *w;
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int *label; /* label of each class */
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double bias;
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};
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param describes the parameters used to obtain the model.
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nr_class and nr_feature are the number of classes and features, respectively.
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The nr_feature*nr_class array w gives feature weights. We use one
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against the rest for multi-class classification, so each feature
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index corresponds to nr_class weight values. Weights are
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organized in the following way
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+------------------+------------------+------------+
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| nr_class weights | nr_class weights | ...
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| for 1st feature | for 2nd feature |
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+------------------+------------------+------------+
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If bias >= 0, x becomes [x; bias]. The number of features is
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increased by one, so w is a (nr_feature+1)*nr_class array. The
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value of bias is stored in the variable bias.
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The array label stores class labels.
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- Function: void cross_validation(const problem *prob, const parameter *param, int nr_fold, int *target);
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This function conducts cross validation. Data are separated to
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nr_fold folds. Under given parameters, sequentially each fold is
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validated using the model from training the remaining. Predicted
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labels in the validation process are stored in the array called
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target.
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The format of prob is same as that for train().
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- Function: int predict(const model *model_, const feature_node *x);
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This functions classifies a test vector using the given
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model. The predicted label is returned.
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- Function: int predict_values(const struct model *model_,
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const struct feature_node *x, double* dec_values);
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This function gives nr_w decision values in the array
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dec_values. nr_w is 1 if there are two classes except multi-class
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svm by Crammer and Singer (-s 4), and is the number of classes otherwise.
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We implement one-vs-the rest multi-class strategy (-s 0,1,2,3) and
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multi-class svm by Crammer and Singer (-s 4) for multi-class SVM.
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The class with the highest decision value is returned.
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- Function: int predict_probability(const struct model *model_,
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const struct feature_node *x, double* prob_estimates);
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This function gives nr_class probability estimates in the array
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prob_estimates. nr_class can be obtained from the function
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get_nr_class. The class with the highest probability is
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returned. Currently, we support only the probability outputs of
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logistic regression.
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- Function: int get_nr_feature(const model *model_);
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The function gives the number of attributes of the model.
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- Function: int get_nr_class(const model *model_);
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The function gives the number of classes of the model.
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- Function: void get_labels(const model *model_, int* label);
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This function outputs the name of labels into an array called label.
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- Function: const char *check_parameter(const struct problem *prob,
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const struct parameter *param);
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This function checks whether the parameters are within the feasible
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range of the problem. This function should be called before calling
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train() and cross_validation(). It returns NULL if the
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parameters are feasible, otherwise an error message is returned.
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- Function: int save_model(const char *model_file_name,
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const struct model *model_);
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This function saves a model to a file; returns 0 on success, or -1
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if an error occurs.
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- Function: struct model *load_model(const char *model_file_name);
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This function returns a pointer to the model read from the file,
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or a null pointer if the model could not be loaded.
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- Function: void free_model_content(struct model *model_ptr);
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This function frees the memory used by the entries in a model structure.
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- Function: void free_and_destroy_model(struct model **model_ptr_ptr);
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This function frees the memory used by a model and destroys the model
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structure.
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- Function: void destroy_param(struct parameter *param);
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This function frees the memory used by a parameter set.
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- Function: void set_print_string_function(void (*print_func)(const char *));
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Users can specify their output format by a function. Use
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set_print_string_function(NULL);
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for default printing to stdout.
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Building Windows Binaries
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=========================
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Windows binaries are in the directory `windows'. To build them via
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Visual C++, use the following steps:
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1. Open a dos command box and change to liblinear directory. If
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environment variables of VC++ have not been set, type
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"C:\Program Files\Microsoft Visual Studio 10.0\VC\bin\vcvars32.bat"
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You may have to modify the above command according which version of
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VC++ or where it is installed.
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2. Type
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nmake -f Makefile.win clean all
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MATLAB/OCTAVE Interface
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=======================
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Please check the file README in the directory `matlab'.
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PYTHON Interface
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================
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Please check the file README in the directory `python'.
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Additional Information
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======================
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If you find LIBLINEAR helpful, please cite it as
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R.-E. Fan, K.-W. Chang, C.-J. Hsieh, X.-R. Wang, and C.-J. Lin.
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LIBLINEAR: A Library for Large Linear Classification, Journal of
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Machine Learning Research 9(2008), 1871-1874. Software available at
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http://www.csie.ntu.edu.tw/~cjlin/liblinear
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For any questions and comments, please send your email to
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cjlin@csie.ntu.edu.tw
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