Python pandas线性回归groupby

jea*_*elj 11 python group-by linear-regression dataframe pandas

我试图通过pandas python dataframe对组进行线性回归:

这是数据帧df:

  group      date      value
    A     01-02-2016     16 
    A     01-03-2016     15 
    A     01-04-2016     14 
    A     01-05-2016     17 
    A     01-06-2016     19 
    A     01-07-2016     20 
    B     01-02-2016     16 
    B     01-03-2016     13 
    B     01-04-2016     13 
    C     01-02-2016     16 
    C     01-03-2016     16 

#import standard packages
import pandas as pd
import numpy as np

#import ML packages
from sklearn.linear_model import LinearRegression

#First, let's group the data by group
df_group = df.groupby('group')

#Then, we need to change the date to integer
df['date'] = pd.to_datetime(df['date'])  
df['date_delta'] = (df['date'] - df['date'].min())  / np.timedelta64(1,'D')
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现在我想预测01-10-2016每组的价值.

我想进入这样一个新的数据帧:

group      01-10-2016
  A      predicted value
  B      predicted value
  C      predicted value
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这个如何将OLS从statsmodels应用到groupby不起作用

for group in df_group.groups.keys():
      df= df_group.get_group(group)
      X = df['date_delta'] 
      y = df['value']
      model = LinearRegression(y, X)
      results = model.fit(X, y)
      print results.summary()
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我收到以下错误

ValueError: Found arrays with inconsistent numbers of samples: [ 1 52]

DeprecationWarning: Passing 1d arrays as data is deprecated in 0.17 and   willraise ValueError in 0.19. Reshape your data either using X.reshape(-1, 1) if your data has a single feature or X.reshape(1, -1) if it contains a single sample.DeprecationWarning)
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更新:

我改成了

for group in df_group.groups.keys():
      df= df_group.get_group(group)
      X = df[['date_delta']]
      y = df.value
      model = LinearRegression(y, X)
      results = model.fit(X, y)
      print results.summary()
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现在我收到这个错误:

ValueError: The truth value of a Series is ambiguous. Use a.empty, a.bool(), a.item(), a.any() or a.all().
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piR*_*red 9

新答案

def model(df, delta):
    y = df[['value']].values
    X = df[['date_delta']].values
    return np.squeeze(LinearRegression().fit(X, y).predict(delta))

def group_predictions(df, date):
    date = pd.to_datetime(date)
    df.date = pd.to_datetime(df.date)

    day = np.timedelta64(1, 'D')
    mn = df.date.min()
    df['date_delta'] = df.date.sub(mn).div(day)

    dd = (date - mn) / day

    return df.groupby('group').apply(model, delta=dd)
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演示

group_predictions(df, '01-10-2016')

group
A    22.333333333333332
B     3.500000000000007
C                  16.0
dtype: object
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老答案

LinearRegression错了.

  • 你不要用数据调用它适合数据.就这样打电话给班级
    • model = LinearRegression()
  • 然后fit
    • model.fit(X, y)

但所有这一切都是在存储的对象中设置值model 没有很好的summary方法.可能有一个地方,但我知道statsmodelssoooo中的那个,见下文


选项1
使用statsmodels替代

from statsmodels.formula.api import ols

for k, g in df_group:
    model = ols('value ~ date_delta', g)
    results = model.fit()
    print(results.summary())
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                        OLS Regression Results                            
==============================================================================
Dep. Variable:                  value   R-squared:                       0.652
Model:                            OLS   Adj. R-squared:                  0.565
Method:                 Least Squares   F-statistic:                     7.500
Date:                Fri, 06 Jan 2017   Prob (F-statistic):             0.0520
Time:                        10:48:17   Log-Likelihood:                -9.8391
No. Observations:                   6   AIC:                             23.68
Df Residuals:                       4   BIC:                             23.26
Df Model:                           1                                         
Covariance Type:            nonrobust                                         
==============================================================================
                 coef    std err          t      P>|t|      [95.0% Conf. Int.]
------------------------------------------------------------------------------
Intercept     14.3333      1.106     12.965      0.000        11.264    17.403
date_delta     1.0000      0.365      2.739      0.052        -0.014     2.014
==============================================================================
Omnibus:                          nan   Durbin-Watson:                   1.393
Prob(Omnibus):                    nan   Jarque-Bera (JB):                0.461
Skew:                          -0.649   Prob(JB):                        0.794
Kurtosis:                       2.602   Cond. No.                         5.78
==============================================================================

Warnings:
[1] Standard Errors assume that the covariance matrix of the errors is correctly specified.
                            OLS Regression Results                            
==============================================================================
Dep. Variable:                  value   R-squared:                       0.750
Model:                            OLS   Adj. R-squared:                  0.500
Method:                 Least Squares   F-statistic:                     3.000
Date:                Fri, 06 Jan 2017   Prob (F-statistic):              0.333
Time:                        10:48:17   Log-Likelihood:                -3.2171
No. Observations:                   3   AIC:                             10.43
Df Residuals:                       1   BIC:                             8.631
Df Model:                           1                                         
Covariance Type:            nonrobust                                         
==============================================================================
                 coef    std err          t      P>|t|      [95.0% Conf. Int.]
------------------------------------------------------------------------------
Intercept     15.5000      1.118     13.864      0.046         1.294    29.706
date_delta    -1.5000      0.866     -1.732      0.333       -12.504     9.504
==============================================================================
Omnibus:                          nan   Durbin-Watson:                   3.000
Prob(Omnibus):                    nan   Jarque-Bera (JB):                0.531
Skew:                          -0.707   Prob(JB):                        0.767
Kurtosis:                       1.500   Cond. No.                         2.92
==============================================================================

Warnings:
[1] Standard Errors assume that the covariance matrix of the errors is correctly specified.
                            OLS Regression Results                            
==============================================================================
Dep. Variable:                  value   R-squared:                        -inf
Model:                            OLS   Adj. R-squared:                   -inf
Method:                 Least Squares   F-statistic:                    -0.000
Date:                Fri, 06 Jan 2017   Prob (F-statistic):                nan
Time:                        10:48:17   Log-Likelihood:                 63.481
No. Observations:                   2   AIC:                            -123.0
Df Residuals:                       0   BIC:                            -125.6
Df Model:                           1                                         
Covariance Type:            nonrobust                                         
==============================================================================
                 coef    std err          t      P>|t|      [95.0% Conf. Int.]
------------------------------------------------------------------------------
Intercept     16.0000        inf          0        nan           nan       nan
date_delta -3.553e-15        inf         -0        nan           nan       nan
==============================================================================
Omnibus:                          nan   Durbin-Watson:                   0.400
Prob(Omnibus):                    nan   Jarque-Bera (JB):                0.333
Skew:                           0.000   Prob(JB):                        0.846
Kurtosis:                       1.000   Cond. No.                         2.62
==============================================================================
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