用于样本外预测的 ARMA.predict 不适用于浮点数? [英] ARMA.predict for out-of sample forecast does not work with floating points?

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问题描述

在我开发了用于样本内分析的小型 ARMAX 预测模型后,我想预测样本外的一些数据.

After i developed my little ARMAX-forecasting model for in-sample analysis i´d like to predict some data out of sample.

我用于预测计算的时间序列从 2013 年 1 月 1 日开始,到 2013 年 12 月 31 日结束!

The time series i use for forecasting calculation starts at 2013-01-01 and ends at 2013-12-31!

这是我正在处理的数据:

Here is my data I am working with:

hr = np.loadtxt("Data_2013_17.txt")
index = date_range(start='2013-1-1', end='2013-12-31', freq='D')
df = pd.DataFrame(hr, index=index)
holidays = ['2013-1-1', '2013-3-29', '2013-4-1', '2013-5-1', '2013-5-9', '2013-5-20', '2013-10-3', '2013-12-25', '2013-12-26']
# holidays for all Bundesländer 
idx = df.asfreq('B').index - DatetimeIndex(holidays)
indexed_df = df.reindex(idx)
# indexed_df = df.asfreq('B') (includes holidays)
# 'D'=day
#'B'=business day
# W@MON=shows only mondays

# external variable  
hr_ = np.loadtxt("Data_2_2013.txt")
index = date_range(start='2013-1-1', end='2013-12-31', freq='D')
df = pd.DataFrame(hr_, index=index)
idx2 = df.asfreq('B').index - DatetimeIndex(holidays)
external_df1 = df.reindex(idx2)
external_df = external_df1.fillna(external_df1.mean())

输出:

                0
2013-01-02  49.56
2013-01-03  48.09
2013-01-04  36.79
2013-01-07  60.84
2013-01-08  59.72
2013-01-09  61.88
2013-01-10  57.95
2013-01-11  56.29
2013-01-14  57.89
2013-01-15  64.49
2013-01-16  58.92
2013-01-17  62.30
2013-01-18  55.92
2013-01-21  55.67
2013-01-22  60.73
2013-01-23  60.12
2013-01-24  65.70
2013-01-25  55.15
2013-01-28  51.79
2013-01-29  39.69
2013-01-30  37.90
2013-01-31  37.60
2013-02-01  41.26
2013-02-04  29.18
2013-02-05  39.55
2013-02-06  47.57
2013-02-07  51.97
2013-02-08  46.95
2013-02-11  42.79
2013-02-12  51.83
...           ...
2013-11-18  58.04
2013-11-19  62.96
2013-11-20  63.90
2013-11-21  64.09
2013-11-22  64.78
2013-11-25  59.59
2013-11-26  70.69
2013-11-27  61.57
2013-11-28  47.87
2013-11-29  34.61
2013-12-02  68.77
2013-12-03  77.84
2013-12-04  63.09
2013-12-05  40.94
2013-12-06  38.60
2013-12-09  65.79
2013-12-10  68.98
2013-12-11  77.86
2013-12-12  76.44
2013-12-13  85.90
2013-12-16  53.51
2013-12-17  73.67
2013-12-18  59.76
2013-12-19  53.11
2013-12-20  38.33
2013-12-23  36.93
2013-12-24  11.30
2013-12-27  30.32
2013-12-30  39.94
2013-12-31  31.27

[252 rows x 1 columns]
                0
2013-01-02  70770
2013-01-03  74155
2013-01-04  74286
2013-01-07  75360
2013-01-08  76910
2013-01-09  78561
2013-01-10  77427
2013-01-11  75260
2013-01-14  78738
2013-01-15  78286
2013-01-16  79568
2013-01-17  79761
2013-01-18  77518
2013-01-21  80089
2013-01-22  79915
2013-01-23  78607
2013-01-24  79761
2013-01-25  77908
2013-01-28  79873
2013-01-29  80535
2013-01-30  76340
2013-01-31  78244
2013-02-01  77749
2013-02-04  79125
2013-02-05  79001
2013-02-06  77837
2013-02-07  77495
2013-02-08  75372
2013-02-11  73856
2013-02-12  77494
...           ...
2013-11-18  76292
2013-11-19  77420
2013-11-20  74993
2013-11-21  76658
2013-11-22  74769
2013-11-25  78347
2013-11-26  77756
2013-11-27  79648
2013-11-28  80075
2013-11-29  78587
2013-12-02  76867
2013-12-03  76070
2013-12-04  80344
2013-12-05  81736
2013-12-06  79617
2013-12-09  78085
2013-12-10  78430
2013-12-11  78120
2013-12-12  77735
2013-12-13  75872
2013-12-16  78651
2013-12-17  76180
2013-12-18  75867
2013-12-19  76018
2013-12-20  71101
2013-12-23  66841
2013-12-24  64557
2013-12-27  66747
2013-12-30  64787
2013-12-31  61101

[252 rows x 1 columns]

Descriptive statistics of ts:
                0
count  252.000000
mean    44.583651
std     11.708938
min     11.300000
25%     34.597500
50%     44.200000
75%     51.947500
max     85.900000

Skewness of endog_var: [ 0.44315988]

Kurtsosis of endog_var: [ 3.18049689]

Correlation hr & hr_: (0.71074420030220553, 2.0635001219278823e-57)

Augmented Dickey-Fuller Test for endog_var: (-2.9282259926181839, 0.042162780619902182, {'5%': -2.8698573654386559, '1%': -3.4492269328800189, '10%': -2.5712010851306641}, <statsmodels.tsa.stattools.ResultsStore object at 0x111e2ca50>)

p和q值的选择:

在:arma_mod = sm.tsa.ARMA(indexed_df, (3,3), external_df).fit()z = arma_mod.params打印P 值和 Q 值:"打印z

In: arma_mod = sm.tsa.ARMA(indexed_df, (3,3), external_df).fit() z = arma_mod.params print 'P- and Q-Values:' print z

输出:

P- and Q-Values:
const      19.674538
0           0.000345
ar.L1.0    -0.062796
ar.L2.0     0.340800
ar.L3.0     0.436345
ma.L1.0     0.613498
ma.L2.0     0.057267
ma.L3.0    -0.415455
dtype: float64
/Applications/anaconda/lib/python2.7/site-packages/statsmodels-0.6.1-py2.7-macosx-10.5-x86_64.egg/statsmodels/base/model.py:466: ConvergenceWarning: Maximum Likelihood optimization failed to converge. Check mle_retvals
  "Check mle_retvals", ConvergenceWarning)

这是我在样本外进行预测的方法:

Here´s what i do to forecast out of sample:

在:

start_pred = '2014-1-3'
end_pred = '2014-1-3'

predict_price1 = arma_mod1.predict(start_pred, end_pred, external_df)#, dynamic=True) 
print ('Predicted Price (ARMAX): {}' .format(predict_price1))

输出:

Traceback (most recent call last):

  File "<ipython-input-34-ad7feec95e4a>", line 6, in <module>
    predict_price1 = arma_mod1.predict(start_pred, end_pred, external_df)#, dynamic=True)

  File "/Applications/anaconda/lib/python2.7/site-packages/statsmodels-0.6.1-py2.7-macosx-10.5-x86_64.egg/statsmodels/base/wrapper.py", line 92, in wrapper
    return data.wrap_output(func(results, *args, **kwargs), how)

  File "/Applications/anaconda/lib/python2.7/site-packages/statsmodels-0.6.1-py2.7-macosx-10.5-x86_64.egg/statsmodels/tsa/arima_model.py", line 1441, in predict
    return self.model.predict(self.params, start, end, exog, dynamic)

  File "/Applications/anaconda/lib/python2.7/site-packages/statsmodels-0.6.1-py2.7-macosx-10.5-x86_64.egg/statsmodels/tsa/arima_model.py", line 711, in predict
    start = self._get_predict_start(start, dynamic)

  File "/Applications/anaconda/lib/python2.7/site-packages/statsmodels-0.6.1-py2.7-macosx-10.5-x86_64.egg/statsmodels/tsa/arima_model.py", line 646, in _get_predict_start
    method)

  File "/Applications/anaconda/lib/python2.7/site-packages/statsmodels-0.6.1-py2.7-macosx-10.5-x86_64.egg/statsmodels/tsa/arima_model.py", line 376, in _validate
    start = _index_date(start, dates)

  File "/Applications/anaconda/lib/python2.7/site-packages/statsmodels-0.6.1-py2.7-macosx-10.5-x86_64.egg/statsmodels/tsa/base/datetools.py", line 57, in _index_date
    "an integer" % date)

ValueError: There is no frequency for these dates and date 2014-01-03 00:00:00 is not in dates index. Try giving a date that is in the dates index or use an integer

我不明白这个错误!

arima 源代码,即datetools.py"告诉我以下内容:

The arima source-code i.e. 'datetools.py' tells me the following:

    except KeyError as err:
        freq = _infer_freq(dates)
        if freq is None:
            #TODO: try to intelligently roll forward onto a date in the
            # index. Waiting to drop pandas 0.7.x support so this is
            # cleaner to do.
            raise ValueError("There is no frequency for these dates and "
                             "date %s is not in dates index. Try giving a "
                             "date that is in the dates index or use "
                             "an integer" % date)

        # we can start prediction at the end of endog
        if _idx_from_dates(dates[-1], date, freq) == 1:
            return len(dates)

        raise ValueError("date %s not in date index. Try giving a "
                         "date that is in the dates index or use an integer"
                         % date)

def _date_from_idx(d1, idx, freq):
    """
    Returns the date from an index beyond the end of a date series.
    d1 is the datetime of the last date in the series. idx is the
    index distance of how far the next date should be from d1. Ie., 1 gives
    the next date from d1 at freq.

    Notes
    -----
    This does not do any rounding to make sure that d1 is actually on the
    offset. For now, this needs to be taken care of before you get here.
    """

这意味着应该可以在样本外进行预测.我只是不明白我需要在哪里以及如何更改我的对象?!

So that means that it should be possible to forecast out of sample. i just do not understand where and how i need to change my objects?!

我发现了一些较旧的帖子,但他们不会告诉我该怎么做:Python 出样预测 ARIMA predict()https://stats.stackexchange.com/questions/76160/im-not-sure-that-statsmodels-is-predicting-out-of-sample

I found some older posts but they wont tell me what to do neither: Python out of sample forecasting ARIMA predict() and https://stats.stackexchange.com/questions/76160/im-not-sure-that-statsmodels-is-predicting-out-of-sample

如何根据上述给定信息预测样本外的数据?

How to forecast data out of sample with the given information above?

帮助非常感谢

推荐答案

两个问题.如错误消息所示,2014-1-3"不在您的数据中.正如文档应该提到的那样,您需要在数据的一个时间步内开始预测.

Two problems. As the error message indicates, '2014-1-3' isn't in your data. You need to start the prediction within one time step of your data, as the docs should mention.

第二个问题,您的数据没有定义的频率.通过从工作日频率数据中删除假期,您将失去对第二天是什么的感觉.我们无法知道第二天应该是现在.您可以为 pandas 编写一个自定义日期偏移量,但这会有些工作.

Second problem, your data doesn't have a defined frequency. By removing the holidays from the business day frequency data, you lose any sense of what the next day is. There's no way for us to know what the next day is supposed to be now. You could code up a custom date offset for pandas, but that would be some work.

最简单的解决方法是使用 numpy 数组并删除 pandas DatetimeIndex.

Easiest workaround is just to use numpy arrays and drop the pandas DatetimeIndex.

这篇关于用于样本外预测的 ARMA.predict 不适用于浮点数?的文章就介绍到这了,希望我们推荐的答案对大家有所帮助,也希望大家多多支持IT屋!

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