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Pregled bibliografske jedinice broj: 1170860

Intra-domain and cross-domain transfer learning for time series data – How transferable are the features?


Otović, Erik; Njirjak, Marko; Jozinović, Dario; Mauša, Goran; Michelini, Alberto; S̆tajduhar, Ivan
Intra-domain and cross-domain transfer learning for time series data – How transferable are the features? // Knowledge-Based Systems, 239 (2021), 107976, 19 doi:10.1016/j.knosys.2021.107976 (međunarodna recenzija, članak, znanstveni)


CROSBI ID: 1170860 Za ispravke kontaktirajte CROSBI podršku putem web obrasca

Naslov
Intra-domain and cross-domain transfer learning for time series data – How transferable are the features?

Autori
Otović, Erik ; Njirjak, Marko ; Jozinović, Dario ; Mauša, Goran ; Michelini, Alberto ; S̆tajduhar, Ivan

Izvornik
Knowledge-Based Systems (0950-7051) 239 (2021); 107976, 19

Vrsta, podvrsta i kategorija rada
Radovi u časopisima, članak, znanstveni

Ključne riječi
Machine learning ; Transfer learning ; Time series ; Fine-tuning ; Convolutional neural networks

Sažetak
In practice, it is very challenging and sometimes impossible to collect datasets of labelled data large enough to successfully train a machine learning model, and one possible solution to this problem is using transfer learning. In this study, we investigate how transferable are features between different domains of time series data and under what conditions. The effects of transfer learning are observed in terms of the predictive performance of the models and their convergence rate during training. In our experiment, we used reduced datasets of 1500 and 9000 data instances to mimic real-world conditions. We trained two sets of models (four different architectures) on the reduced datasets: those trained with transfer learning and those trained from scratch. Knowledge transfer was performed both within the same application domain (seismology) and between different application domains (seismology, speech, medicine, finance). We observed the prediction performance of the models and their training convergence rate. We repeated the experiments seven times and applied statistical tests to confirm the validity of the results. The overall conclusion of our study is that transfer learning is highly likely to either increase or not negatively affect the model’s predictive performance or its training convergence rate. We discuss which source and target domains are compatible for knowledge transfer. We also discuss the effect of the target dataset size and the choice of the model and its hyperparameters on transfer learning.

Izvorni jezik
Engleski

Znanstvena područja
Računarstvo, Informacijske i komunikacijske znanosti



POVEZANOST RADA


Projekti:
COST-CA17137 - Mreža za gravitacijske valove, geofiziku i strojno učenje (G2NET) (COST ) ( CroRIS)

Ustanove:
Tehnički fakultet, Rijeka

Profili:

Avatar Url Ivan Štajduhar (autor)

Avatar Url Goran Mauša (autor)

Avatar Url Marko Njirjak (autor)

Avatar Url Erik Otović (autor)

Poveznice na cjeloviti tekst rada:

doi

Citiraj ovu publikaciju:

Otović, Erik; Njirjak, Marko; Jozinović, Dario; Mauša, Goran; Michelini, Alberto; S̆tajduhar, Ivan
Intra-domain and cross-domain transfer learning for time series data – How transferable are the features? // Knowledge-Based Systems, 239 (2021), 107976, 19 doi:10.1016/j.knosys.2021.107976 (međunarodna recenzija, članak, znanstveni)
Otović, E., Njirjak, M., Jozinović, D., Mauša, G., Michelini, A. & S̆tajduhar, I. (2021) Intra-domain and cross-domain transfer learning for time series data – How transferable are the features?. Knowledge-Based Systems, 239, 107976, 19 doi:10.1016/j.knosys.2021.107976.
@article{article, author = {Otovi\'{c}, Erik and Njirjak, Marko and Jozinovi\'{c}, Dario and Mau\v{s}a, Goran and Michelini, Alberto and S\utajduhar, Ivan}, year = {2021}, pages = {19}, DOI = {10.1016/j.knosys.2021.107976}, chapter = {107976}, keywords = {Machine learning, Transfer learning, Time series, Fine-tuning, Convolutional neural networks}, journal = {Knowledge-Based Systems}, doi = {10.1016/j.knosys.2021.107976}, volume = {239}, issn = {0950-7051}, title = {Intra-domain and cross-domain transfer learning for time series data – How transferable are the features?}, keyword = {Machine learning, Transfer learning, Time series, Fine-tuning, Convolutional neural networks}, chapternumber = {107976} }
@article{article, author = {Otovi\'{c}, Erik and Njirjak, Marko and Jozinovi\'{c}, Dario and Mau\v{s}a, Goran and Michelini, Alberto and S\utajduhar, Ivan}, year = {2021}, pages = {19}, DOI = {10.1016/j.knosys.2021.107976}, chapter = {107976}, keywords = {Machine learning, Transfer learning, Time series, Fine-tuning, Convolutional neural networks}, journal = {Knowledge-Based Systems}, doi = {10.1016/j.knosys.2021.107976}, volume = {239}, issn = {0950-7051}, title = {Intra-domain and cross-domain transfer learning for time series data – How transferable are the features?}, keyword = {Machine learning, Transfer learning, Time series, Fine-tuning, Convolutional neural networks}, chapternumber = {107976} }

Časopis indeksira:


  • Current Contents Connect (CCC)
  • Web of Science Core Collection (WoSCC)
    • Science Citation Index Expanded (SCI-EXP)
    • SCI-EXP, SSCI i/ili A&HCI
  • Scopus


Citati:





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