• ubuntu 14.04 anaconda安装


    Python的准备工作

           Python 一个备受欢迎的点是社区支持很多,有非常多优秀的库或者模块。但是某些库之间有时候也存在依赖,所以要安装这些库也是挺繁琐的过程。但总有人忍受不了这种 繁琐,都会开发出不少自动化的工具来节省各位客官的时间。其中,Anaconda是一个非常好的安装工具。

    1. Anaconda安装

           这是一个非常齐全的python发行版本,最新的版本提供了多达195个流行的python包,包含了我们常用的numpy、scipy等等科学计算的包。有了它,妈妈再也不用担心我焦头烂额地安装一个又一个依赖包了。Anaconda在手,轻松我有!下载地址如下:http://www.continuum.io/downloads,现在的版本有python2.7版本和python3.5版本,下载好对应版本、对应系统的anaconda,它实际上是一个sh脚本文件,大约280M左右。我下载的是linux版的python 2.7版本。

    下载成功后,在终端执行(2.7版本):

    # bash Anaconda2-2.4.1-Linux-x86_64.sh

    在安装的过程中,会问你安装路径,直接回车默认就可以了

    2. 将python添加到环境变量中

    如果在安装Anaconda的过程中没有将安装路径添加到系统环境变量中,需要在安装后手工添加:

    1、在终端输入$sudo gedit /etc/profile,打开profile文件。

    2、在文件末尾添加一行:export PATH=/home/grant/anaconda2/bin:$PATH,其中,将“/home/grant/anaconda2/bin”替换为你实际的安装路径。保存。

    3. 使环境变量生效

    方法1:
    让/etc/profile文件修改后立即生效 ,可以使用如下命令:
    # .  /etc/profile
    注意: . 和 /etc/profile 有空格
    方法2:
    让/etc/profile文件修改后立即生效 ,可以使用如下命令:
    # source /etc/profile

    附:Linux中source命令的用法
    source命令:
    source命令也称为“点命令”,也就是一个点符号(.)。source命令通常用于重新执行刚修改的初始化文件,使之立即生效,而不必注销并重新登录。
    用法: 
    source filename 或 . filename

    4. scikit-learn 安装

    在终端执行命令:conda install scikit-learn
    一直 “Enter" 或 ”yes" 即可完成安装。
    真的很方便。

    5. scikit-learn 测试

    #!usr/bin/env python
    #-*- coding: utf-8 -*-
    
    import sys
    import os
    import time
    from sklearn import metrics
    import numpy as np
    import cPickle as pickle
    
    reload(sys)
    sys.setdefaultencoding('utf8')
    
    # Multinomial Naive Bayes Classifier
    def naive_bayes_classifier(train_x, train_y):
        from sklearn.naive_bayes import MultinomialNB
        model = MultinomialNB(alpha=0.01)
        model.fit(train_x, train_y)
        return model
    
    
    # KNN Classifier
    def knn_classifier(train_x, train_y):
        from sklearn.neighbors import KNeighborsClassifier
        model = KNeighborsClassifier()
        model.fit(train_x, train_y)
        return model
    
    
    # Logistic Regression Classifier
    def logistic_regression_classifier(train_x, train_y):
        from sklearn.linear_model import LogisticRegression
        model = LogisticRegression(penalty='l2')
        model.fit(train_x, train_y)
        return model
    
    
    # Random Forest Classifier
    def random_forest_classifier(train_x, train_y):
        from sklearn.ensemble import RandomForestClassifier
        model = RandomForestClassifier(n_estimators=8)
        model.fit(train_x, train_y)
        return model
    
    
    # Decision Tree Classifier
    def decision_tree_classifier(train_x, train_y):
        from sklearn import tree
        model = tree.DecisionTreeClassifier()
        model.fit(train_x, train_y)
        return model
    
    
    # GBDT(Gradient Boosting Decision Tree) Classifier
    def gradient_boosting_classifier(train_x, train_y):
        from sklearn.ensemble import GradientBoostingClassifier
        model = GradientBoostingClassifier(n_estimators=200)
        model.fit(train_x, train_y)
        return model
    
    
    # SVM Classifier
    def svm_classifier(train_x, train_y):
        from sklearn.svm import SVC
        model = SVC(kernel='rbf', probability=True)
        model.fit(train_x, train_y)
        return model
    
    # SVM Classifier using cross validation
    def svm_cross_validation(train_x, train_y):
        from sklearn.grid_search import GridSearchCV
        from sklearn.svm import SVC
        model = SVC(kernel='rbf', probability=True)
        param_grid = {'C': [1e-3, 1e-2, 1e-1, 1, 10, 100, 1000], 'gamma': [0.001, 0.0001]}
        grid_search = GridSearchCV(model, param_grid, n_jobs = 1, verbose=1)
        grid_search.fit(train_x, train_y)
        best_parameters = grid_search.best_estimator_.get_params()
        for para, val in best_parameters.items():
            print para, val
        model = SVC(kernel='rbf', C=best_parameters['C'], gamma=best_parameters['gamma'], probability=True)
        model.fit(train_x, train_y)
        return model
    
    def read_data(data_file):
        import gzip
        f = gzip.open(data_file, "rb")
        train, val, test = pickle.load(f)
        f.close()
        train_x = train[0]
        train_y = train[1]
        test_x = test[0]
        test_y = test[1]
        return train_x, train_y, test_x, test_y
        
    if __name__ == '__main__':
        data_file = "mnist.pkl.gz"
        thresh = 0.5
        model_save_file = None
        model_save = {}
        
        test_classifiers = ['NB', 'KNN', 'LR', 'RF', 'DT', 'SVM', 'GBDT']
        classifiers = {'NB':naive_bayes_classifier, 
                      'KNN':knn_classifier,
                       'LR':logistic_regression_classifier,
                       'RF':random_forest_classifier,
                       'DT':decision_tree_classifier,
                      'SVM':svm_classifier,
                    'SVMCV':svm_cross_validation,
                     'GBDT':gradient_boosting_classifier
        }
        
        print 'reading training and testing data...'
        train_x, train_y, test_x, test_y = read_data(data_file)
        num_train, num_feat = train_x.shape
        num_test, num_feat = test_x.shape
        is_binary_class = (len(np.unique(train_y)) == 2)
        print '******************** Data Info *********************'
        print '#training data: %d, #testing_data: %d, dimension: %d' % (num_train, num_test, num_feat)
        
        for classifier in test_classifiers:
            print '******************* %s ********************' % classifier
            start_time = time.time()
            model = classifiers[classifier](train_x, train_y)
            print 'training took %fs!' % (time.time() - start_time)
            predict = model.predict(test_x)
            if model_save_file != None:
                model_save[classifier] = model
            if is_binary_class:
                precision = metrics.precision_score(test_y, predict)
                recall = metrics.recall_score(test_y, predict)
                print 'precision: %.2f%%, recall: %.2f%%' % (100 * precision, 100 * recall)
            accuracy = metrics.accuracy_score(test_y, predict)
            print 'accuracy: %.2f%%' % (100 * accuracy) 
    
        if model_save_file != None:
            pickle.dump(model_save, open(model_save_file, 'wb'))
    

    测试的分类器包括:
    classifiers = {'NB':naive_bayes_classifier,
                      'KNN':knn_classifier,
                       'LR':logistic_regression_classifier,
                       'RF':random_forest_classifier,
                       'DT':decision_tree_classifier,
                      'SVM':svm_classifier,
                    'SVMCV':svm_cross_validation,
                     'GBDT':gradient_boosting_classifier
        }

    使用数据集为: 

    本次使用mnist手写体库进行实验:http://deeplearning.net/data/mnist/mnist.pkl.gz。共5万训练样本和1万测试样本。

    最终结果如下:

    感谢分享:http://blog.csdn.net/zouxy09/article/details/48903179

         http://www.cnblogs.com/hdulzt/p/7156095.html

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  • 原文地址:https://www.cnblogs.com/Allen-rg/p/7766765.html
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