Time Series forecasting with multiple series with irregular frequency

0

I had been attracted to DeepAR for forecasting on a combination of many series.

However, my series data is sales data, and the frequency is irregular, even within each series. It seems that within unsampling the data – which is highly undesirable – this might not be a suitable model.

I would be content if this is not a model that exists at the moment to build a prediction model for each series individually, as long as that did not involve unsampling or interpolation.

What advice would people have around this? Is there a model that supports many irregular series? Or, failing that, which model would be most suited to predicting on an irregular time series?

Mark
已提問 1 年前檢視次數 371 次
2 個答案
1

Hi, you may want to follow this Kaggle training: "Forecasting With Machine Learning" See https://www.kaggle.com/code/ryanholbrook/forecasting-with-machine-learning/data

you will predict sales for the thousands of product families sold at Favorita
 stores located in Ecuador. The training data includes dates, store and 
product information, whether that item was being promoted, as well as 
the sales numbers. Additional files include supplementary information that
 may be useful in building your models.
profile pictureAWS
專家
已回答 1 年前
0

Awesome, thanks. I’ll have a look.

Mark
已回答 1 年前

您尚未登入。 登入 去張貼答案。

一個好的回答可以清楚地回答問題並提供建設性的意見回饋,同時有助於提問者的專業成長。

回答問題指南