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  1. Home
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  4. Hierarchical Proxy Modeling for Improved HPO in Time Series Forecasting
 
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Hierarchical Proxy Modeling for Improved HPO in Time Series Forecasting

Date Issued
2023-08-06
Author(s)
Jati, Arindam
Ekambaram, Vijay
Pal, Shaonli
Quanz, Brian
Gifford, Wesley M.
Harsha, Pavithra
Siegel, Stuart
Mukherjee, Sumanta
Narayanaswami, Chandra
DOI
10.1145/3580305.3599378
Abstract
Selecting the right set of hyperparameters is crucial in time series forecasting. The classical temporal cross-validation framework for hyperparameter optimization (HPO) often leads to poor test performance because of a possible mismatch between validation and test periods. To address this test-validation mismatch, we propose a novel technique, H-Pro to drive HPO via test proxies by exploiting data hierarchies often associated with time series datasets. Since higher-level aggregated time series often show less irregularity and better predictability as compared to the lowest-level time series which can be sparse and intermittent, we optimize the hyperparameters of the lowest-level base-forecaster by leveraging the proxy forecasts for the test period generated from the forecasters at higher levels. H-Pro can be applied on any off-the-shelf machine learning model to perform HPO. We validate the efficacy of our technique with extensive empirical evaluation on five publicly available hierarchical forecasting datasets. Our approach outperforms existing state-of-the-art methods in Tourism, Wiki, and Traffic datasets, and achieves competitive result in Tourism-L dataset, without any model-specific enhancements. Moreover, our method outperforms the winning method of the M5 forecast accuracy competition.
Subjects
  • cross-validation

  • forecasting

  • hyperparameter optimi...

  • model selection

  • time series

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