I have got a data set with records in the interval of 30 seconds, I am trying to do forecast prediction using ARMA function from time series module. Due to data privacy, I have used random data to reproduce the error
import numpy as np from pandas import * import statsmodels.api as sm data = np.random.rand(100000) data_index = date_range('2013-5-26', periods = len(data), freq='30s') data = np.array(data) data_series = Series(data, index = data_index) model = sm.tsa.ARMA(data_series,(1,0)).fit()
My package versions:
Python version 2.7.3
pandas version 0.11.0
statsmodels version 0.5.0
The main error message is as follows(I omitted some):
ValueError Traceback (most recent call last) <ipython-input-24-0f57c74f0fc9> in <module>() 6 data = np.array(data) 7 data_series = Series(data, index = data_index) ----> 8 model = sm.tsa.ARMA(data_series,(1,0)).fit() ........... ........... ValueError: freq 30S not understood
It seems to me ARMA does not support the date format generated by pandas? If I remove freq option in date_range, then this command will again not work for large series since the year will go well beyond pandas limit.
Anyway to get around? Thanks
Update: OK, using data_series.values will work, but next, how do I do the prediction? my data_index is from [2013-05-26 00:00:00, ..., 2013-06-29 17:19:30]
prediction = model.predict('2013-05-26 00:00:00', '2013-06-29 17:19:30', dynamic=False)
still give me an error
I know prediction = model.predict() could go through and generate whole sequence prediction and then I can match, but overall it is not that convenient.