AI RESEARCH

Optimizing accuracy and diversity: a multi-task approach to forecast combinations

arXiv CS.LG

ArXi:2310.20545v3 Announce Type: replace We present a multi-task optimization approach based on a deep learning architecture for time series forecasting. We leverage large collections of time series to identify the weights of forecasting models that can be combined to produce forecasts for each series. This method jointly addresses two tasks: the selection of different forecasting models, and their effective combination. In doing so, it keeps into account, in an original way, both the accuracy and diversity of the forecasting methods.