On the Role of Taylor’s Formula in Machine Learning
Kärkkäinen, T. (2023). On the Role of Taylor’s Formula in Machine Learning. In P. Neittaanmäki, & M.-L. Rantalainen (Eds.), Impact of Scientific Computing on Science and Society (pp. 275-294). Springer. Computational Methods in Applied Sciences, 58. https://doi.org/10.1007/978-3-031-29082-4_16
Julkaistu sarjassa
Computational Methods in Applied SciencesTekijät
Päivämäärä
2023Oppiaine
TekniikkaHuman and Machine based Intelligence in LearningEngineeringHuman and Machine based Intelligence in LearningPääsyrajoitukset
Embargo päättyy: 2025-07-09Pyydä artikkeli tutkijalta
Tekijänoikeudet
© 2023 the Authors
The classical Taylor’s formula is an elementary tool in mathematical analysis and function approximation. Its role in the optimization theory, whose data-driven variants have a central role in machine learning training algorithms, is well-known. However, utilization of Taylor’s formula in the derivation of new machine learning methods is not common and the purpose of this article is to introduce such use cases. Both a feedforward neural network and a recently introduced distance-based method are used as data-driven models. We demonstrate and assess the proposed techniques empirically both in unsupervised and supervised learning scenarios.
Julkaisija
SpringerEmojulkaisun ISBN
978-3-031-29081-7Kuuluu julkaisuun
Impact of Scientific Computing on Science and SocietyISSN Hae Julkaisufoorumista
1871-3033Asiasanat
Julkaisu tutkimustietojärjestelmässä
https://converis.jyu.fi/converis/portal/detail/Publication/183935626
Metadata
Näytä kaikki kuvailutiedotKokoelmat
Rahoittaja(t)
Suomen AkatemiaRahoitusohjelmat(t)
Akatemiaohjelma, SA; Profilointi, SALisätietoja rahoituksesta
The author would like to thank the Academy of Finland for the financial support (grants 311877 and 315550).Lisenssi
Samankaltainen aineisto
Näytetään aineistoja, joilla on samankaltainen nimeke tai asiasanat.
-
Problem Transformation Methods with Distance-Based Learning for Multi-Target Regression
Hämäläinen, Joonas; Kärkkäinen, Tommi (ESANN, 2020)Multi-target regression is a special subset of supervised machine learning problems. Problem transformation methods are used in the field to improve the performance of basic methods. The purpose of this article is to test ... -
Taxonomy-Informed Neural Networks for Smart Manufacturing
Terziyan, Vagan; Vitko, Oleksandra (Elsevier, 2024)A neural network (NN) is known to be an efficient and learnable tool supporting decision-making processes particularly in Industry 4.0. The majority of NNs are data-driven and, therefore, depend on training data quantity ... -
Assessment of microalgae species, biomass, and distribution from spectral images using a convolution neural network
Salmi, Pauliina; Calderini, Marco; Pääkkönen, Salli; Taipale, Sami; Pölönen, Ilkka (Springer Science and Business Media LLC, 2022)Effective monitoring of microalgae growth is crucial for environmental observation, while the applications of this monitoring could also be expanded to commercial and research-focused microalgae cultivation. Currently, the ... -
Quantification of Errors Generated by Uncertain Data in a Linear Boundary Value Problem Using Neural Networks
Halonen, Vilho; Pölönen, Ilkka (Society for Industrial & Applied Mathematics (SIAM), 2023)Quantifying errors caused by indeterminacy in data is currently computationally expensive even in relatively simple PDE problems. Efficient methods could prove very useful in, for example, scientific experiments done with ... -
Node co-activations as a means of error detection : Towards fault-tolerant neural networks
Myllyaho, Lalli; Nurminen, Jukka K.; Mikkonen, Tommi (Elsevier, 2022)Context: Machine learning has proved an efficient tool, but the systems need tools to mitigate risks during runtime. One approach is fault tolerance: detecting and handling errors before they cause harm. Objective: This ...
Ellei toisin mainittu, julkisesti saatavilla olevia JYX-metatietoja (poislukien tiivistelmät) saa vapaasti uudelleenkäyttää CC0-lisenssillä.