3

I get the error ValueError: Input contains NaN, when I try to predict the next value of series by using ARIMA model from pmdarima.

But the data I use didn't contains null values.

codes:

from pmdarima.arima import ARIMA
tmp_series = pd.Series([0.8867208063423082, 0.4969678051201152, -0.35079875681211814, 0.07156197743204402, 0.6888394890593726, 0.6136916470350972, 0.9020102952782968, 0.38539523911177426, -0.02211092685162178, 0.7051282791422511, -0.21841121961990842, 0.003262841037836234, 0.3970253153400027, 0.8187445259415379, -0.525847439014037, 0.3039480910711944, 0.0279240073596233, 0.8238419467739897, 0.8234157376839023, 0.5897892005398399, 0.8333118174945449])
model_211 = ARIMA(order=(2, 1, 1), out_of_sample_size=0, mle_regression=True, suppress_warnings=True)
model_211.fit(tmp_series[:-1])
print(model_211.predict())

error message:

---------------------------------------------------------------------------
ValueError                                Traceback (most recent call last)
Input In [7], in <cell line: 7>()
      5 display(model_211.params())
      6 display(model_211.aic())
----> 7 display(model_211.predict())

File /usr/local/lib/python3.8/dist-packages/pmdarima/arima/arima.py:793, in ARIMA.predict(self, n_periods, X, return_conf_int, alpha, **kwargs)
    790 arima = self.arima_res_
    791 end = arima.nobs + n_periods - 1
--> 793 f, conf_int = _seasonal_prediction_with_confidence(
    794     arima_res=arima,
    795     start=arima.nobs,
    796     end=end,
    797     X=X,
    798     alpha=alpha)
    800 if return_conf_int:
    801     # The confidence intervals may be a Pandas frame if it comes from
    802     # SARIMAX & we want Numpy. We will to duck type it so we don't add
    803     # new explicit requirements for the package
    804     return f, check_array(conf_int, force_all_finite=False)

File /usr/local/lib/python3.8/dist-packages/pmdarima/arima/arima.py:205, in _seasonal_prediction_with_confidence(arima_res, start, end, X, alpha, **kwargs)
    202     conf_int[:, 1] = f + q * np.sqrt(var)
    204 y_pred = check_endog(f, dtype=None, copy=False, preserve_series=True)
--> 205 conf_int = check_array(conf_int, copy=False, dtype=None)
    207 return y_pred, conf_int

File /usr/local/lib/python3.8/dist-packages/sklearn/utils/validation.py:899, in check_array(array, accept_sparse, accept_large_sparse, dtype, order, copy, force_all_finite, ensure_2d, allow_nd, ensure_min_samples, ensure_min_features, estimator, input_name)
    893         raise ValueError(
    894             "Found array with dim %d. %s expected <= 2."
    895             % (array.ndim, estimator_name)
    896         )
    898     if force_all_finite:
--> 899         _assert_all_finite(
    900             array,
    901             input_name=input_name,
    902             estimator_name=estimator_name,
    903             allow_nan=force_all_finite == "allow-nan",
    904         )
    906 if ensure_min_samples > 0:
    907     n_samples = _num_samples(array)

File /usr/local/lib/python3.8/dist-packages/sklearn/utils/validation.py:146, in _assert_all_finite(X, allow_nan, msg_dtype, estimator_name, input_name)
    124         if (
    125             not allow_nan
    126             and estimator_name
   (...)
    130             # Improve the error message on how to handle missing values in
    131             # scikit-learn.
    132             msg_err += (
    133                 f"\n{estimator_name} does not accept missing values"
    134                 " encoded as NaN natively. For supervised learning, you might want"
   (...)
    144                 "#estimators-that-handle-nan-values"
    145             )
--> 146         raise ValueError(msg_err)
    148 # for object dtype data, we only check for NaNs (GH-13254)
    149 elif X.dtype == np.dtype("object") and not allow_nan:

ValueError: Input contains NaN.

So, I have two questions:

  1. Is there any parameters I should set, in order to avoid this error?

  2. I found out the similar problem: Failing to predict next value using ARIMA: Input contains NaN, infinity or a value too large for dtype('float64'). In the comment of this post says : It's caused by a unsolved issue.

    I'm not sure if this error is also caused by the same issue. If so, is there any suggestion of other package of ARIMA model?


Environment Information:

  • I perform this code in a docker container
    • OS info:
      Distributor ID: Ubuntu
      Description:    Ubuntu 20.04.4 LTS
      Release:        20.04
      Codename:       focal
      
    • python env info:
      Python 3.8.10
      
    • pip package info (I only list related package, I put complete pip package list in here):
      Package                      Version                                                                            
      ---------------------------- --------------------                                                                        
      numpy                        1.22.4
      pandas                       1.4.3 
      pmdarima                     2.0.1   
      scikit-learn                 1.1.1                           
      scipy                        1.8.1
      statsmodels                  0.13.2 
      
1
  • 1
    Your code runs without an error for me. It might be a version issue. I am using Python 3.9.7, pandas 1.3.3 and pmdarima 1.8.3. Could you update and edit your post with the full version numbers if the problem persists? Sep 6, 2022 at 6:17

2 Answers 2

1

What environment do you work in? your code print(work):

20 0.316942 21 0.338248 22 0.378482...

1
  • Thank you so much, I have updated the environment information above Sep 6, 2022 at 9:41
0

Downgrading the following packages will resolve this error:

numpy==1.19.3
pandas==1.3.3
pmdarima==1.8.3
1

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.