Semi-periodic Activation for Time Series Classification

  • José Gilberto Barbosa de Medeiros Júnior USP
  • André Guarnier de Mitri USP
  • Diego Furtado Silva USP

Resumo


This paper investigates the lack of research on activation functions for neural network models in time series tasks. It highlights the need to identify essential properties of these activations to improve their effectiveness in specific domains. To this end, the study comprehensively analyzes properties, such as bounded, monotonic, nonlinearity, and periodicity, for activation in time series neural networks. We propose a new activation that maximizes the coverage of these properties, called LeakySineLU. We empirically evaluate the LeakySineLU against commonly used activations in the literature using 112 benchmark datasets for time series classification, obtaining the best average ranking in all comparative scenarios.
Publicado
17/11/2024
MEDEIROS JÚNIOR, José Gilberto Barbosa de; MITRI, André Guarnier de; SILVA, Diego Furtado. Semi-periodic Activation for Time Series Classification. In: BRAZILIAN CONFERENCE ON INTELLIGENT SYSTEMS (BRACIS), 13. , 2024, Belém/PA. Anais [...]. Porto Alegre: Sociedade Brasileira de Computação, 2024 . p. 76-90. ISSN 2643-6264.