I want to predict the return of a time series, I first fitted the data set but it doesn't work when I come to predict the tomorrow's return. My code is

    date = datetime.datetime(2014,12,31)
    todayDate = (date).strftime('%Y-%m-%d')
    startdate = (date - timedelta(days = 1)).strftime('%Y-%m-%d') 
    enddate = (date + timedelta(days = 2)).strftime('%Y-%m-%d')         
    data = get_pricing([symbol],start_date= date1, end_date = todayDate, frequency='daily')
    df =  pd.DataFrame({"value": data.price.values.ravel()},index = data.major_axis.ravel())
    result = df.pct_change().dropna() 

    degree = {}
    for x in range(0,5):
        for y in range(0,5):
            try:
                arma = ARMA(result, (x,y)).fit()
                degree[str(x) +str(y)] = arma.aic

            except:
                continue

    dic= sorted(degree.iteritems(), key = lambda d:d[1])

    p = int(dic[0][0][0])
    q = int(dic[0][0][1])
    arma = ARMA(result, (p,q)).fit()
    predicts = arma.predict()
    exogx = np.array(range(1,4))
    predictofs = arma.predict(startdate,enddate, exogx)

The last line doesn't work and it produced an error

ValueError: Must provide freq argument if no data is supplied

I don't understand. Anyone had encountered the same issue?

I had the same issue it is because your index is missing the Freq argument. If you print data.index you will see that something like

DatetimeIndex(['2015-06-27', '2015-06-29', '2015-06-30', '2015-07-01', '2015-07-02', '2015-07-03', '2015-07-04', '2015-07-06', '2015-07-07', '2015-07-08', '2015-07-09', '2015-07-10', '2015-07-11', '2015-07-13', '2015-07-14', '2015-07-15', '2015-07-16', '2015-07-17', '2015-07-18', '2015-07-20', '2015-07-21', '2015-07-22', '2015-07-23', '2015-07-24', '2015-07-25', '2015-07-27', '2015-07-28', '2015-07-29', '2015-07-30', '2015-07-31'], dtype='datetime64[ns]', name=u'Date', freq=None)]

Note the 'Freq = None'

you can do something like :

data = Series(data.values, data.index)
data = data.asfreq('D')

You can also hard specify frequency by doing

data.index.freq = 'D'

Let me know if that helps a little.


If that does not work you can simply use the integer to do the prediction and then fill the index manualy

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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