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Hi @KingKai69! |
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Hey all,
currently i am doing my master thesis and i am dealing with time series forecasting with regression models like XGBoost. During my research i found tsfresh.
I have a single time series of a KPI and a external regresor (market data) to predict future values of the KPI.
My question is if the extracted_features() respectively extract_relevant_features() function also work for time series forecasting? If i use the named functions the extracted features df contrains just one row with X columns, but in the end i need a feature value for each timestamp. Do those functions work for forecasting problems or should i rather use the rolling mechanism described here https://tsfresh.readthedocs.io/en/latest/text/forecasting.html
As i understood the rolling mechanism just created kind of sliding windows based on a timeseries and the extract relevant features function extracts "new" features. Can anyone also clarify that?
Best,
Kai
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