登录
首页 » Python » MachineLearning_Python-master

MachineLearning_Python-master

于 2018-12-17 发布 文件大小:34921KB
0 180
下载积分: 1 下载次数: 3

代码说明:

  python实现的SVM分类mnist手写训练集,包含SVM,KNN算法(SVM classification MNIST implemented by Python)

文件列表:

MachineLearning_Python-master, 0 , 2018-11-07
MachineLearning_Python-master\.gitignore, 13 , 2018-11-07
MachineLearning_Python-master\AnomalyDetection, 0 , 2018-11-07
MachineLearning_Python-master\AnomalyDetection\AnomalyDetection.py, 3932 , 2018-11-07
MachineLearning_Python-master\AnomalyDetection\data1.mat, 9501 , 2018-11-07
MachineLearning_Python-master\AnomalyDetection\data2.mat, 93481 , 2018-11-07
MachineLearning_Python-master\K-Means, 0 , 2018-11-07
MachineLearning_Python-master\K-Means\K-Means_scikit-learn.py, 549 , 2018-11-07
MachineLearning_Python-master\K-Means\K-Menas.py, 5202 , 2018-11-07
MachineLearning_Python-master\K-Means\bird.mat, 45606 , 2018-11-07
MachineLearning_Python-master\K-Means\bird.png, 33031 , 2018-11-07
MachineLearning_Python-master\K-Means\data.mat, 4784 , 2018-11-07
MachineLearning_Python-master\LICENSE, 1064 , 2018-11-07
MachineLearning_Python-master\LinearRegression, 0 , 2018-11-07
MachineLearning_Python-master\LinearRegression\LinearRegression.py, 3852 , 2018-11-07
MachineLearning_Python-master\LinearRegression\LinearRegression_scikit-learn.py, 1293 , 2018-11-07
MachineLearning_Python-master\LinearRegression\data.csv, 657 , 2018-11-07
MachineLearning_Python-master\LinearRegression\data.npy, 644 , 2018-11-07
MachineLearning_Python-master\LinearRegression\data.txt, 657 , 2018-11-07
MachineLearning_Python-master\LogisticRegression, 0 , 2018-11-07
MachineLearning_Python-master\LogisticRegression\LogisticRegression.py, 5245 , 2018-11-07
MachineLearning_Python-master\LogisticRegression\LogisticRegression_OneVsAll.py, 5030 , 2018-11-07
MachineLearning_Python-master\LogisticRegression\LogisticRegression_OneVsAll_scikit-learn.py, 806 , 2018-11-07
MachineLearning_Python-master\LogisticRegression\LogisticRegression_scikit-learn.py, 1370 , 2018-11-07
MachineLearning_Python-master\LogisticRegression\class_y.csv, 150000 , 2018-11-07
MachineLearning_Python-master\LogisticRegression\data1.npy, 2480 , 2018-11-07
MachineLearning_Python-master\LogisticRegression\data1.txt, 3775 , 2018-11-07
MachineLearning_Python-master\LogisticRegression\data2.txt, 2233 , 2018-11-07
MachineLearning_Python-master\LogisticRegression\data_digits.mat, 7512835 , 2018-11-07
MachineLearning_Python-master\LogisticRegression\predict.csv, 250000 , 2018-11-07
MachineLearning_Python-master\NeuralNetwok, 0 , 2018-11-07
MachineLearning_Python-master\NeuralNetwok\NeuralNetwork.py, 11096 , 2018-11-07
MachineLearning_Python-master\NeuralNetwok\data_digits.mat, 7512835 , 2018-11-07
MachineLearning_Python-master\NeuralNetwok\predict.csv, 250000 , 2018-11-07
MachineLearning_Python-master\PCA, 0 , 2018-11-07
MachineLearning_Python-master\PCA\PCA.py, 4461 , 2018-11-07
MachineLearning_Python-master\PCA\PCA_scikit-learn.py, 3177 , 2018-11-07
MachineLearning_Python-master\PCA\data.mat, 995 , 2018-11-07
MachineLearning_Python-master\PCA\data_faces.mat, 11027767 , 2018-11-07
MachineLearning_Python-master\SVM, 0 , 2018-11-07
MachineLearning_Python-master\SVM\SVM_scikit-learn.py, 2174 , 2018-11-07
MachineLearning_Python-master\SVM\data.txt, 2233 , 2018-11-07
MachineLearning_Python-master\SVM\data1.mat, 981 , 2018-11-07
MachineLearning_Python-master\SVM\data2.mat, 7604 , 2018-11-07
MachineLearning_Python-master\SVM\data3.mat, 6038 , 2018-11-07
MachineLearning_Python-master\formula, 0 , 2018-11-07
MachineLearning_Python-master\formula\AnomalyDetection.wmf, 20098 , 2018-11-07
MachineLearning_Python-master\formula\K-Means.wmf, 7664 , 2018-11-07
MachineLearning_Python-master\formula\LinearRegression_01.wmf, 10704 , 2018-11-07
MachineLearning_Python-master\formula\LogisticRegression_01.wmf, 21976 , 2018-11-07
MachineLearning_Python-master\formula\NeuralNetwork.wmf, 34806 , 2018-11-07
MachineLearning_Python-master\formula\PCA.wmf, 28284 , 2018-11-07
MachineLearning_Python-master\formula\SVM.wmf, 42698 , 2018-11-07
MachineLearning_Python-master\images, 0 , 2018-11-07
MachineLearning_Python-master\images\AnomalyDetection_01.png, 7492 , 2018-11-07
MachineLearning_Python-master\images\AnomalyDetection_02.png, 18669 , 2018-11-07
MachineLearning_Python-master\images\AnomalyDetection_03.png, 18823 , 2018-11-07
MachineLearning_Python-master\images\AnomalyDetection_04.png, 9615 , 2018-11-07
MachineLearning_Python-master\images\AnomalyDetection_05.png, 4425 , 2018-11-07
MachineLearning_Python-master\images\AnomalyDetection_06.png, 4525 , 2018-11-07
MachineLearning_Python-master\images\AnomalyDetection_07.png, 6410 , 2018-11-07
MachineLearning_Python-master\images\AnomalyDetection_08.png, 24047 , 2018-11-07
MachineLearning_Python-master\images\AnomalyDetection_09.png, 61147 , 2018-11-07
MachineLearning_Python-master\images\AnomalyDetection_10.png, 23750 , 2018-11-07
MachineLearning_Python-master\images\K-Means_01.png, 21789 , 2018-11-07
MachineLearning_Python-master\images\K-Means_02.png, 23848 , 2018-11-07
MachineLearning_Python-master\images\K-Means_03.png, 27750 , 2018-11-07
MachineLearning_Python-master\images\K-Means_04.png, 16227 , 2018-11-07
MachineLearning_Python-master\images\K-Means_05.png, 30645 , 2018-11-07
MachineLearning_Python-master\images\K-Means_06.png, 160442 , 2018-11-07
MachineLearning_Python-master\images\K-Means_07.png, 2267 , 2018-11-07
MachineLearning_Python-master\images\LinearRegression_01.png, 21159 , 2018-11-07
MachineLearning_Python-master\images\LogisticRegression_01.png, 18360 , 2018-11-07
MachineLearning_Python-master\images\LogisticRegression_02.png, 16007 , 2018-11-07
MachineLearning_Python-master\images\LogisticRegression_03.jpg, 2732027 , 2018-11-07
MachineLearning_Python-master\images\LogisticRegression_04.png, 39497 , 2018-11-07
MachineLearning_Python-master\images\LogisticRegression_05.png, 7343 , 2018-11-07
MachineLearning_Python-master\images\LogisticRegression_06.png, 46133 , 2018-11-07
MachineLearning_Python-master\images\LogisticRegression_07.png, 11039 , 2018-11-07
MachineLearning_Python-master\images\LogisticRegression_08.png, 156664 , 2018-11-07
MachineLearning_Python-master\images\LogisticRegression_09.png, 87041 , 2018-11-07
MachineLearning_Python-master\images\LogisticRegression_10.png, 17971 , 2018-11-07
MachineLearning_Python-master\images\LogisticRegression_11.png, 10624 , 2018-11-07
MachineLearning_Python-master\images\LogisticRegression_12.png, 33187 , 2018-11-07
MachineLearning_Python-master\images\LogisticRegression_13.png, 5576 , 2018-11-07
MachineLearning_Python-master\images\NeuralNetwork_01.png, 24893 , 2018-11-07
MachineLearning_Python-master\images\NeuralNetwork_02.png, 5807 , 2018-11-07
MachineLearning_Python-master\images\NeuralNetwork_03.jpg, 4815725 , 2018-11-07
MachineLearning_Python-master\images\NeuralNetwork_04.png, 37341 , 2018-11-07
MachineLearning_Python-master\images\NeuralNetwork_05.png, 43815 , 2018-11-07
MachineLearning_Python-master\images\NeuralNetwork_06.png, 85253 , 2018-11-07
MachineLearning_Python-master\images\NeuralNetwork_07.png, 112647 , 2018-11-07
MachineLearning_Python-master\images\NeuralNetwork_08.png, 14862 , 2018-11-07
MachineLearning_Python-master\images\NeuralNetwork_09.png, 6861 , 2018-11-07
MachineLearning_Python-master\images\PCA_01.png, 21288 , 2018-11-07
MachineLearning_Python-master\images\PCA_02.png, 7144 , 2018-11-07
MachineLearning_Python-master\images\PCA_03.png, 16049 , 2018-11-07
MachineLearning_Python-master\images\PCA_04.png, 16245 , 2018-11-07
MachineLearning_Python-master\images\PCA_05.png, 30430 , 2018-11-07
MachineLearning_Python-master\images\PCA_06.png, 167477 , 2018-11-07

下载说明:请别用迅雷下载,失败请重下,重下不扣分!

发表评论

0 个回复

  • PCA主成分分析
    说明:  本程序为主成分分析PCA方法实现数据的降维(Principal component analysis)
    2020-06-21 17:40:01下载
    积分:1
  • LiveRoomDemo_Server-master
    说明:  实现视频实时在线直播,分前后端,前端用 vue 开发,后端用java ,采用了 spring boot 框架(It is used video play)
    2020-08-22 08:35:10下载
    积分:1
  • nonsense1
    说明:  super crazy best thing
    2019-01-28 02:24:07下载
    积分:1
  • beamforming
    说明:  LCMV算法,MVDR波束形成的常用算法 得出来自目标方向的正确接收,抑制别的方向的干扰和噪声(LCMV algorithm, MVDR beamforming algorithm commonly used Get the correct reception from the target direction, and suppress the interference and noise from other directions)
    2021-01-22 11:18:28下载
    积分:1
  • 统计学习方法(李航)
    说明:  统计学习是计算机及其应用领域的一门重要的学科本书全面系统地介绍了统计学习的主要方法,特别是监督学习方法,包括感知机、K近邻法、朴素贝叶斯法、决策树、逻辑斯谛回归、与最大熵模型、支持向量机、提升方法、EM算法、隐马尔可夫模型和条件随机场等。(Statistical learning is an important subject in the field of computer and application of this book comprehensively systematically introduces the main methods of statistical learning, especially the supervision method of study, including the perception, K neighbor method, naive bayesian method, decision tree, logistic regression, and the maximum entropy model, support vector machine (SVM), promotion methods, the EM algorithm, the hidden markov model and conditional random field, etc.)
    2020-06-20 11:20:02下载
    积分:1
  • 基于C语言的内部收益率法
    此内部收益率法用的是
    2022-07-03 20:17:59下载
    积分:1
  • 半车预瞄对比
    说明:  1/2车辆模型的驾驶员预瞄算法对比,具有实用的参考意义(Comparison of Preview Algorithms for 1/2 Vehicle Model)
    2020-10-13 14:47:31下载
    积分:1
  • BUCKpfm
    说明:  buck变换器变频控制闭环,可以很好地实现闭环输出(Frequency conversion control closed loop of Buck Converter)
    2020-11-30 14:19:28下载
    积分:1
  • TrajectoryOptimizationFmincon-master
    说明:  使用MATLAB中fmincon函数进行约束规划,解决最优化问题(Fmincon function for trajectory optimization)
    2019-03-01 16:56:25下载
    积分:1
  • hashfilemaybe
    说明:  Lorem ipsum dolor sit amet, consectetur adipiscing elit. Cras id metus quam. Donec rutrum odio mi, sit amet ullamcorper libero mattis ac. Fusce lobortis ac ipsum eu cursus. Curabitur sed scelerisque mauris, ac semper mi. Etiam porta magna sed vehicula rutrum. Sed id mi nec turpis sollicitudin interdum. Vivamus interdum, est at elementum congue, metus ipsum bibendum massa, sed vestibulum quam erat id purus. Mauris maximuincidunt dolor, hendrerit tempus lectus volutpat vitae. Proin sit amet vulputate enim. Phasellus ac porttitor nunc. Donec vel eros rhoncus orci pharetra finibus eu et eros. Duis aliquam, quam a pharetra gravida, tortor risus luctus ipsum, ac sodales nisi felis eget felis. Praesent ullamcorper felis dui, et consequat tortor egestas sed. Quisque pharetra nunc et fringilla mattis. Integer vel enim id mauris ullamcorper aliquam condimentum sit amet mi. Aliquam auctor sed ex in dictum
    2019-02-13 11:10:25下载
    积分:1
  • 696516资源总数
  • 106914会员总数
  • 0今日下载