当前位置: 首页 > news >正文

《机器学习实战》学习记录-ch2

PS: 个人笔记,建议不看
原书资料:https://github.com/ageron/handson-ml2

2.1数据获取

import pandas as pd
data = pd.read_csv(r"C:\Users\cyan\Desktop\AI\ML\handson-ml2\datasets\housing\housing.csv")
data.head()
data.info()
<class 'pandas.core.frame.DataFrame'>
RangeIndex: 20640 entries, 0 to 20639
Data columns (total 10 columns):#   Column              Non-Null Count  Dtype  
---  ------              --------------  -----  0   longitude           20640 non-null  float641   latitude            20640 non-null  float642   housing_median_age  20640 non-null  float643   total_rooms         20640 non-null  float644   total_bedrooms      20433 non-null  float645   population          20640 non-null  float646   households          20640 non-null  float647   median_income       20640 non-null  float648   median_house_value  20640 non-null  float649   ocean_proximity     20640 non-null  object 
dtypes: float64(9), object(1)
memory usage: 1.6+ MB
data.columns
Index(['longitude', 'latitude', 'housing_median_age', 'total_rooms','total_bedrooms', 'population', 'households', 'median_income','median_house_value', 'ocean_proximity'],dtype='object')
data['ocean_proximity'].value_counts().plot()

在这里插入图片描述

data.describe()
longitudelatitudehousing_median_agetotal_roomstotal_bedroomspopulationhouseholdsmedian_incomemedian_house_value
count20640.00000020640.00000020640.00000020640.00000020433.00000020640.00000020640.00000020640.00000020640.000000
mean-119.56970435.63186128.6394862635.763081537.8705531425.476744499.5396803.870671206855.816909
std2.0035322.13595212.5855582181.615252421.3850701132.462122382.3297531.899822115395.615874
min-124.35000032.5400001.0000002.0000001.0000003.0000001.0000000.49990014999.000000
25%-121.80000033.93000018.0000001447.750000296.000000787.000000280.0000002.563400119600.000000
50%-118.49000034.26000029.0000002127.000000435.0000001166.000000409.0000003.534800179700.000000
75%-118.01000037.71000037.0000003148.000000647.0000001725.000000605.0000004.743250264725.000000
max-114.31000041.95000052.00000039320.0000006445.00000035682.0000006082.00000015.000100500001.000000
import matplotlib.pyplot as plt
%matplotlib inline # 这是IPython的内置绘图命令,PyCharm用不了,可以省略plt.show()
#data.hist(bins=100,figsize=(20,15),column = 'longitude') # 选一列
# 绘制直方图
data.hist(bins=50,figsize=(20,15)) # bins 代表柱子的数目,高度为覆盖宽度内取值数目之和# plt.show()

在这里插入图片描述

# 划分数据集与测试集
import numpy as np
# 自定义划分函数
def split_train_test(data, test_ratio):shuffled_indices = np.random.permutation(len(data)) # 将 0 ~ len(data) 随机打乱test_set_size = int(len(data) * test_ratio)test_indices = shuffled_indices[:test_set_size]train_indices = shuffled_indices[test_set_size:]return data.iloc[train_indices], data.iloc[test_indices]
train_data,test_data = my_split_train_test(data,.2)
len(train_data),len(test_data)

(16512, 4128)

from sklearn.model_selection import train_test_split
# 利用 sklean的包 切分数据集,random_state 类似 np.random.seed(42), 保证了每次运行切分出的测试集相同
train_set, test_set = train_test_split(data, test_size=0.2, random_state=42)
len(train_set),len(test_set)
(16512, 4128)
# 但是仅仅随机抽取作为测试集是不合理的,要保证测试集的数据分布跟样本一致
# 创建收入类别属性,为了服从房价中位数的分布对数据进行划分
data["income_cat"] = pd.cut(data["median_income"],bins=[0., 1.5, 3.0, 4.5, 6., np.inf],labels=[1, 2, 3, 4, 5])
# 分层抽样
from sklearn.model_selection import StratifiedShuffleSplit
split = StratifiedShuffleSplit(n_splits=1, test_size=0.2, random_state=42) # 
for train_index, test_index in split.split(data, data["income_cat"]):strat_train_set = data.loc[train_index]strat_test_set = data.loc[test_index]
# 查看测试集数据分布比例
strat_test_set["income_cat"].value_counts() / len(strat_test_set),data["income_cat"].value_counts() / len(data)
(3    0.3505332    0.3187984    0.1763575    0.1143411    0.039971Name: income_cat, dtype: float64,3    0.3505812    0.3188474    0.1763085    0.1144381    0.039826Name: income_cat, dtype: float64)
# 删除添加的 income_cat 属性
strat_test_set.drop("income_cat",axis=1,inplace=True)
strat_train_set.drop("income_cat",axis=1,inplace=True)
# 或者如此删除,可能效率更高,或者更美观吧
for set_ in (strat_train_set, strat_test_set):set_.drop("income_cat", axis=1, inplace=True)
http://www.lryc.cn/news/182231.html

相关文章:

  • lv7 嵌入式开发-网络编程开发 07 TCP服务器实现
  • mysql技术文档--阿里巴巴java准则《Mysql数据库建表规约》--结合阿丹理解尝试解读--国庆开卷
  • Qt+openCV学习笔记(十六)Qt6.6.0rc+openCV4.8.1+emsdk3.1.37编译静态库
  • JUC第十四讲:JUC锁: ReentrantReadWriteLock详解
  • 在vue3中使用vite-svg-loader插件
  • 国庆10.4
  • 2023/8/12 下午8:41:46 树状控件guilite
  • BL808学习日志-2-LVGL for M0 and D0
  • treectrl类封装 2023/8/13 下午4:07:35
  • Android学习之路(20) 进程间通信
  • 机器学习——KNN算法流程详解(以iris为例)
  • 国庆假期day5
  • ES6中的let、const
  • Python 列表操作指南3
  • 三个要点,掌握Spring Boot单元测试
  • 【nginx】Nginx配置:
  • CSS3与HTML5
  • redis的简单使用
  • Windows下启动freeRDP并自适应远端桌面大小
  • ES6中的数值扩展
  • 自定义注解实现Redis分布式锁、手动控制事务和根据异常名字或内容限流的三合一的功能
  • Linux:minishell
  • STM32驱动步进电机
  • 计算机视觉——飞桨深度学习实战-深度学习网络模型
  • 用c动态数组(不用c++vector)实现手撸神经网咯230901
  • 视频讲解|基于DistFlow潮流的配电网故障重构代码
  • Ultralytics(YoloV8)开发环境配置,训练,模型转换,部署全流程测试记录
  • springboot之@ImportResource:导入Spring配置文件~
  • 阿里云服务器免费申请入口_注册阿里云免费领4台服务器
  • ES6中的async、await函数