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Python机器学习-分类「建议收藏」

Python机器学习 建议 收藏 分类
2023-06-13 09:12:11 时间

大家好,又见面了,我是你们的朋友全栈君。

  • 监督学习下的分类模型,主要运用sklearn实践
  • kNN分类器
  • 决策树
  • 朴素贝叶斯
  • 实战一:预测股市涨跌
# -*- coding: utf-8 -*-
"""
Created on Mon Aug 28 15:42:55 2017

@author: Administrator
"""

# unit4 classify

#数据介绍:
#网易财经上获得的上证指数的历史数据,爬取了20年的上证指数数据。
#实验目的:
#根据给出当前时间前150天的历史数据,预测当天上证指数的涨跌。

import pandas as pd
import numpy as np
from sklearn import svm
from sklearn import cross_validation

fpath='F:\RANJIEWEN\MachineLearning\Python机器学习实战_mooc\data\classify\stock\\000777.csv'

data=pd.read_csv(fpath,encoding='gbk',parse_dates=[0],index_col=0)
data.sort_index(0,ascending=True,inplace=True)

dayfeature=150
featurenum=5*dayfeature
x=np.zeros((data.shape[0]-dayfeature,featurenum+1))
y=np.zeros((data.shape[0]-dayfeature))

for i in range(0,data.shape[0]-dayfeature):
    x[i,0:featurenum]=np.array(data[i:i+dayfeature] \
          [[u'收盘价',u'最高价',u'最低价',u'开盘价',u'成交量']]).reshape((1,featurenum))
    x[i,featurenum]=data.ix[i+dayfeature][u'开盘价']
 
for i in range(0,data.shape[0]-dayfeature):
    if data.ix[i+dayfeature][u'收盘价']>=data.ix[i+dayfeature][u'开盘价']:
        y[i]=1
    else:
        y[i]=0          
 
clf=svm.SVC(kernel='rbf')
result = []
for i in range(5):
    x_train, x_test, y_train, y_test = \
                cross_validation.train_test_split(x, y, test_size = 0.2)
    clf.fit(x_train, y_train)
    result.append(np.mean(y_test == clf.predict(x_test)))
print("svm classifier accuacy:")
print(result)
  • 实战二:通过运动传感器采集的数据分析运行状态
# -*- coding: utf-8 -*-
"""
Created on Mon Aug 28 19:41:21 2017

@author: Administrator
"""

'''
现在收集了来自 A,B,C,D,E 5位用户的可穿戴设备上的传感器数据,
每位用户的数据集包含一个特征文件(a.feature)和一个标签文件
(a.label)
特征文件中每一行对应一个时刻的所有传感器数值,标签文件中每行记录了
和特征文件中对应时刻的标记过的用户姿态,两个文件的行数相同,相同行
之间互相对应
标签文件内容如图所示,每一行代表与特征文件中对应行的用户姿态类别。
总共有0-24共25种身体姿态,如,无活动状态,坐态、跑态等。标签文件作为
训练集的标准参考准则,可以进行特征的监督学习。

假设现在出现了一个新用户,但我们只有传感器采集的数据,那么该如何得到
这个新用户的姿态呢?
或者对同一用户如果传感器采集了新的数据,怎么样根据新的数据判断当前
用户处于什么样的姿态呢?
'''

import pandas as pd
import numpy as np

from sklearn.preprocessing import Imputer
from sklearn.cross_validation import train_test_split
from sklearn.metrics import classification_report

from sklearn.neighbors import KNeighborsClassifier
from sklearn.tree import DecisionTreeClassifier
from sklearn.naive_bayes import GaussianNB

def load_datasets(feature_paths,label_paths):
    feature=np.ndarray(shape=(0,41))
    label=np.ndarray(shape=(0,1))
    for file in feature_paths:
        df=pd.read_table(file,delimiter=',',na_values='?',header=None)
        imp=Imputer(missing_values='NaN',strategy='mean',axis=0)
        imp.fit(df)
        df=imp.transform(df)
        feature=np.concatenate((feature,df))
        
    for file in label_paths:
        df=pd.read_table(file,header=None)
        label=np.concatenate((label,df))
    
    label=np.ravel(label)
    return feature,label
        
if __name__ == '__main__':
    ''' 数据路径 '''
    fpath='F:/RANJIEWEN/MachineLearning/Python机器学习实战_mooc/data/classify/dataset/'
    featurePaths = [fpath+'A/A.feature',fpath+'B/B.feature',fpath+'C/C.feature',fpath+'D/D.feature',fpath+'E/E.feature']
    labelPaths = [fpath+'A/A.label',fpath+'B/B.label',fpath+'C/C.label',fpath+'D/D.label',fpath+'E/E.label']
    ''' 读入数据  '''
    x_train,y_train = load_datasets(featurePaths[:4],labelPaths[:4])
    x_test,y_test = load_datasets(featurePaths[4:],labelPaths[4:])
    x_train, x_, y_train, y_ = train_test_split(x_train, y_train, test_size = 0.0)
     
    print('Start training knn')
    knn = KNeighborsClassifier().fit(x_train, y_train)
    print('Training done')
    answer_knn = knn.predict(x_test)
    print('Prediction done')
     
    print('Start training DT')
    dt = DecisionTreeClassifier().fit(x_train, y_train)
    print('Training done')
    answer_dt = dt.predict(x_test)
    print('Prediction done')
     
    print('Start training Bayes')
    gnb = GaussianNB().fit(x_train, y_train)
    print('Training done')
    answer_gnb = gnb.predict(x_test)
    print('Prediction done')
     
    print('\n\nThe classification report for knn:')
    print(classification_report(y_test, answer_knn))
    print('\n\nThe classification report for DT:')
    print(classification_report(y_test, answer_dt))
    print('\n\nThe classification report for Bayes:')
    print(classification_report(y_test, answer_gnb))
  • result

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