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
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Computational Methods in Applied SciencesAuthors
Date
2023Discipline
TekniikkaHuman and Machine based Intelligence in LearningEngineeringHuman and Machine based Intelligence in LearningAccess restrictions
Embargoed until: 2025-07-09Request copy from author
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© 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.
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SpringerParent publication ISBN
978-3-031-29081-7Is part of publication
Impact of Scientific Computing on Science and SocietyISSN Search the Publication Forum
1871-3033Keywords
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https://converis.jyu.fi/converis/portal/detail/Publication/183935626
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Research Council of FinlandFunding program(s)
Academy Programme, AoF; Research profiles, AoFAdditional information about funding
The author would like to thank the Academy of Finland for the financial support (grants 311877 and 315550).License
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