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ARIMA模型的平稳性反转

[英]invert stationarity for ARIMA model

如何反转平稳性并将日期重新应用于数据进行绘图?

srcs:

我正在尝试反转平稳性并获得预测图,尤其是对于名为“ app_1”和“ app_2”的两列(下面的橙色和红色线)。

我从中提取的数据如下所示: 绘图数据集

print(u1.info())
u1.head()

<class 'pandas.core.frame.DataFrame'>
DatetimeIndex: 15011 entries, 2017-08-28 11:00:00 to 2018-01-31 19:30:00
Freq: 15T
Data columns (total 10 columns):
 app_1        15011 non-null float64
 app_2        15011 non-null float64
user          15011 non-null object
 bar          15011 non-null float64
 grocers      15011 non-null float64
 home         15011 non-null float64
 lunch        15011 non-null float64
 park         15011 non-null float64
 relatives    15011 non-null float64
 work         15011 non-null float64
dtypes: float64(9), object(1)
memory usage: 1.3+ MB

app_1   app_2   user    bar grocers home    lunch   park    relatives   work
date                                        
2017-08-28 11:00:00 0.010000    0.0 user_1  0.0 0.0 0.0 0.0 0.0 0.0 0.0
2017-08-28 11:15:00 0.010125    0.0 user_1  0.0 0.0 0.0 0.0 0.0 0.0 0.0
2017-08-28 11:30:00 0.010250    0.0 user_1  0.0 0.0 0.0 0.0 0.0 0.0 0.0
2017-08-28 11:45:00 0.010375    0.0 user_1  0.0 0.0 0.0 0.0 0.0 0.0 0.0
2017-08-28 12:00:00 0.010500    0.0 user_1  0.0 0.0 0.0 0.0 0.0 0.0 0.0

location列代表用户在给定时间的位置-在第一次“重大位置更改”事件之后,一次且只有一个列一次为1。

我正在使用VARIMAX进行分析-使用statsmodels VARMAX版本的AR:

from statsmodels.tsa.statespace.varmax import VARMAX
import pandas as pd
import numpy as np

%matplotlib inline

import matplotlib
import matplotlib.pyplot as plt

from random import random
#...

columns = [ ' app_1', ' app_2', ' bar', ' grocers', ' home', ' lunch', ' work', ' park', ' relatives' ]
series = u1[columns]

# from: https://machinelearningmastery.com/make-predictions-time-series-forecasting-python/
# create a difference transform of the dataset
def difference(dataset):
    diff = list()
    for i in range(1, len(dataset)):
        value = dataset[i] - dataset[i - 1]
        diff.append(value)
    return np.array(diff)

# Make a prediction give regression coefficients and lag obs
def predict(coef, history):
    yhat = coef[0]
    for i in range(1, len(coef)):
        yhat += coef[i] * history[-i]
    return yhat

X = pd.DataFrame()
for column in columns:
    X[column] = difference(series[column].values)

size = (4*24)*54 # hoping
train, test = X[0:size], X[size:size+(14*4*24)]

train = train.loc[:, (train != train.iloc[0]).any()] # https://stackoverflow.com/questions/20209600/panda-dataframe-remove-constant-column
test = test.loc[:, (test != test.iloc[0]).any()] # https://stackoverflow.com/questions/20209600/panda-dataframe-remove-constant-column

#print(train.var(), X.info())

# train autoregression
model = VARMAX(train)
model_fit = model.fit(method='powell', disp=False)
#print(model_fit.mle_retvals)

##window = model_fit.k_ar
coef = model_fit.params

# walk forward over time steps in test
history = [train.iloc[i] for i in range(len(train))]
predictions = list()
for t in range(len(test)):
    yhat = predict(coef, history)
    obs = test.iloc[t]
    predictions.append(yhat)
    history.append(obs) 

print(mean_squared_error(test, predictions))

0.5594208989876831

来自scikitlearn的那个mean_squared_error并不令人恐惧(实际上,它大约是文档中显示的三个样本的中间)。 _可能意味着数据是可预测的。 我想在情节中看到它。

# plot
plt.plot(test)
plt.plot(predictions, color='red')
plt.show()

预测图

因此,这里发生的部分原因是数据是季节性的,因此必须对其应用平稳性。 现在,这些线都是垂直的,而不是时间的。

但是让我担心的另一件事是红色数据的规模 太多了 无论如何,我该如何反转平稳性并将日期重新应用于数据进行绘图? 它显然不应该那样。 :)

这样做的方法首先是将其制作为数据框:

predDf = pd.DataFrame(predictions)

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