Karya
Judul/Title A Survey on Hyperparameters Optimization of Deep Learning for Time Series Classification
Penulis/Author Ayuningtyas Hari Fristiana (1); Syukron Abu Ishaq Alfarozi, S.T., Ph.D. (2); Ir. Adhistya Erna Permanasari, S.T., M.T., Ph.D. (3); Mahardhika Pratama (4); Dr.Eng. Ir. Sunu Wibirama, S.T., M.Eng., IPM. (5)
Tanggal/Date 24 2024
Kata Kunci/Keyword
Abstrak/Abstract Time series classification (TSC) is essential in various application domains to understand the system dynamics. The adoption of deep learning has advanced TSC, however its performance is sensitive to hyperparameters configuration. Manual tuning of high-dimensional hyperparameters can be labor intensive, leading to a preference for automatic hyperparameters optimization (HPO) methods. To the best of our knowledge, survey papers covering various studies on automatic hyperparameters optimization (HPO) of deep learning for TSC are scarce and even none. To address this gap, we present a systematic literature review to assist researchers in addressing the HPO problem for deep learning in TSC. We analyzed studies published between 2018 and June 2024. This review examines the HPO methods, hyperparameters, and tools utilized in this context based on 77 primary studies sourced from academic databases. The findings indicate that Metaheuristic algorithm and Bayesian Optimization are commonly employed approaches, with a focus on hyperparameters related to the deep learning architectures. This review provides insights that can inform the design and implementation of HPO strategies for deep learning models in time series analysis.
Rumpun Ilmu Teknologi Informasi
Bahasa Asli/Original Language English
Level Internasional
Status
Dokumen Karya
No Judul Tipe Dokumen Aksi
1A_Survey_on_Hyperparameters_Optimization_of_Deep_Learning_for_Time_Series_Classification.pdf[PAK] Full Dokumen
2form-L1_Sunu Wibirama_Penghargaan Karya Ilmiah Telah Terbit_2025_compressed.pdfDokumen Pendukung Karya Ilmiah (Hibah, Publikasi, Penelitian, Pengabdian)