4.7 Article

Time series classifier recommendation by a meta-learning approach

Journal

PATTERN RECOGNITION
Volume 128, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.patcog.2022.108671

Keywords

Time series classification; Meta-learning; Landmarkers; Hierarchical inference; Meta-targets

Funding

  1. Basque Government through the BERC [2022-2025]
  2. Spanish Ministry of Econ-omy and Competitiveness MINECO through BCAM Severo Ochoa excellence accreditation [SEV-2017-0718, Research Group IT1244-19]
  3. (Basque Government) [PID2019-104966GB-I0 0]
  4. (Spanish Ministry of Economy, Industry and Competitiveness) [3KIA (KK2020/00049), KK-2021/00095, KK-2021/00065, BES-2016-076890]
  5. Elkartek projects
  6. Basque Government [BES-2016-076890]
  7. Spanish Ministry of Economy and Competitiveness MINECO through BCAM Severo Ochoa excellence accreditation [2022-2025]
  8. AEI/FEDER, UE [SEV-2017-0718]
  9. GECEC-PAST
  10. Spanish Ministry of Economy, Industry and Competitiveness [Research Group IT1244-19]
  11. Elkartek [PID2019-104966GB-I0 0, 3KIA (KK2020/00049), KK-2021/00095, KK-2021/00065]
  12. [IT1244-19]
  13. [TIN2017-82626-R]
  14. [KK2020/00049]

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This study investigates time series classifier recommendation for the first time, considering various recommendation forms or meta-targets. The researchers design a set of quick estimators as predictors for the recommendation system. Experimental results show that the proposed method outperforms other methods in most scenarios, and a hierarchical inference method for meta-targets is also proposed.
This work addresses time series classifier recommendation for the first time in the literature by considering several recommendation forms or meta-targets: classifier accuracies, complete ranking, top-M ranking, best set and best classifier. For this, an ad-hoc set of quick estimators of the accuracies of the candidate classifiers (landmarkers) are designed, which are used as predictors for the recommendation system. The performance of our recommender is compared with the performance of a standard method for non-sequential data and a set of baseline methods, which our method outperforms in 7 of the 9 considered scenarios. Since some meta-targets can be inferred from the predictions of other more finegrained meta-targets, the last part of the work addresses the hierarchical inference of meta-targets. The experimentation suggests that, in many cases, a single model is sufficient to output many types of meta targets with competitive results.(c) 2022 Elsevier Ltd. All rights reserved.

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