我按照教程学习了 SARIMAX 模型: 有影响.或者换句话说,如果您有每日数据并且 p 为 6,您可以理解为周二数据是否会影响周日数据.
这里有一个很好的答案你可以找到非季节性成分值
I followed the tutorial to study the SARIMAX model: https://www.digitalocean.com/community/tutorials/a-guide-to-time-series-forecasting-with-arima-in-python-3. The date range of data is 1958-2001.
mod = sm.tsa.statespace.SARIMAX(y,
order=(1, 1, 1),
seasonal_order=(1, 1, 1, 12),
enforce_stationarity=False,
enforce_invertibility=False)
results = mod.fit()
when are fitting an ARIMA Time Series Model, I found the author all date range data to fit parameter of model. But when validating Forecasts, the author used date started from 1998-01-01 as one part of date range of data for fitting model.
pred = results.get_prediction(start=pd.to_datetime('1998-01-01'), dynamic=False)
I know in machine learning model, the training data and validation(test) data is different, I mean different range. I mean the author is right? why do like this(I mean the reason touse all train data), I a new one to SARIMAX model.
Could you guys tell me more about this model, for example how about predict days or weeks not just month, I mean how to set the parameter of order=(1,1,1), seasonal_order=(1, 1, 1, 12). Thanks!
The author is right. When you do a regression (linear, higher-order or logistic - doesn't matter) - it is absolutely ok to have deviations from your training data (for instance - logistic regression even on training data may give you a false positive).
Same stands for time series. I think this way the author wanted to show that the model is built correctly.
seasonal_order=(1, 1, 1, 12)
If you look at tsa stats documentation you will see that if you want to operate with quarterly data - you have to assign the last parameter (s) - value of 4. Monthly - 12. It means that if you want to operate with weekly data seasonal_order should look like this
seasonal_order=(1, 1, 1, 52)
daily data will be
seasonal_order=(1, 1, 1, 365)
order component is the parameter that is responsible for non-seasonal parameters p, d and q respectively. You have to find them depending on your data behaviour
Here is a good answer how you can find non-seasonal component values
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