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Long short-term cognitive networks

  • Gonzalo Nápoles (Corresponding author)
  • , Isel Grau
  • , Agnieszka Jastrzębska
  • , Yamisleydi Salgueiro

Research output: Contribution to journalArticleAcademicpeer-review

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Abstract

In this paper, we present a recurrent neural system named long short-term cognitive networks (LSTCNs) as a generalization of the short-term cognitive network (STCN) model. Such a generalization is motivated by the difficulty of forecasting very long time series efficiently. The LSTCN model can be defined as a collection of STCN blocks, each processing a specific time patch of the (multivariate) time series being modeled. In this neural ensemble, each block passes information to the subsequent one in the form of weight matrices representing the prior knowledge. As a second contribution, we propose a deterministic learning algorithm to compute the learnable weights while preserving the prior knowledge resulting from previous learning processes. As a third contribution, we introduce a feature influence score as a proxy to explain the forecasting process in multivariate time series. The simulations using three case studies show that our neural system reports small forecasting errors while being significantly faster than state-of-the-art recurrent models.

Original languageEnglish
Pages (from-to)16959-16971
Number of pages13
JournalNeural Computing and Applications
Volume34
Issue number19
Early online dateMay 2022
DOIs
Publication statusPublished - Oct 2022

Funding

Y. Salgueiro would like to acknowledge the support provided by the National Center for Artificial Intelligence CENIA FB210017, Basal ANID and the super-computing infrastructure of the NLHPC (ECM-02).

Keywords

  • Interpretability
  • Multivariate time series
  • Recurrent neural networks
  • Short-term cognitive networks

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  • Code: Long Short-term Cognitive Networks

    Nápoles, G. & Grau, I., 2022

    Research output: Non-textual formSoftwareAcademic

    Open Access
  • Semiconductor Demand Forecasting using Long Short-term Cognitive Networks

    Grau, I., de Hoop, M., Glaser, A., Nápoles, G. & Dijkman, R., Nov 2022, Proceedings of the 34th Benelux Conference on Artificial Intelligence and 31st Belgian-Dutch Conference on Machine Learning, BNAIC/BeNeLearn 2022. University of Antwerp, 13 p.

    Research output: Chapter in Book/Report/Conference proceedingConference contributionAcademicpeer-review

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  • Long Short-term Cognitive Networks

    Nápoles, G., Grau, I., Jastrzebska, A. & Salgueiro, Y., 2021, In: arXiv. 2021, 10 p., 2106.16233.

    Research output: Contribution to journalArticleAcademic

    Open Access

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