A Robust Minimal Learning Machine based on the M-Estimator
Kärkkäinen, T., Gomes, J., Mesquita, D., Freire, A., & Junior, A. S. (2017). A Robust Minimal Learning Machine based on the M-Estimator. In ESANN 2017 : Proceedings of the 25th European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning (pp. 383-388). ESANN. https://www.elen.ucl.ac.be/Proceedings/esann/esannpdf/es2017-44.pdf
Päivämäärä
2017Tekijänoikeudet
© the Authors, 2017.
In this paper we propose a robust Minimal Learning Machine
(R-RLM) for regression problems. The proposed method uses a robust
M-estimator to generate a linear mapping between input and output
distances matrices of MLM. The R-MLM was tested on one synthetic
and three real world datasets that were contaminated with an increasing
number of outliers. The method achieved a performance comparable to
the robust Extreme Learning Machine (R-RLM) and thus can be seen as
a valid alternative for regression tasks on datasets with outliers.
Julkaisija
ESANNEmojulkaisun ISBN
978-2-87587-039-1Konferenssi
European Symposium on Artificial Neural Networks, Computational Intelligence and Machine LearningKuuluu julkaisuun
ESANN 2017 : Proceedings of the 25th European Symposium on Artificial Neural Networks, Computational Intelligence and Machine LearningAsiasanat
Alkuperäislähde
https://www.elen.ucl.ac.be/Proceedings/esann/esannpdf/es2017-44.pdfJulkaisu tutkimustietojärjestelmässä
https://converis.jyu.fi/converis/portal/detail/Publication/28052396
Metadata
Näytä kaikki kuvailutiedotKokoelmat
Lisenssi
Samankaltainen aineisto
Näytetään aineistoja, joilla on samankaltainen nimeke tai asiasanat.
-
Improvements and applications of the elements of prototype-based clustering
Hämäläinen, Joonas (Jyväskylän yliopisto, 2018) -
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 ... -
Computational Methods in Spectral Imaging
Pölönen, Ilkka (Springer, 2023)Spectral imaging is an evolving technology with numerous applications. These images can be computationally processed in several ways. In addition to machine learning methods, spectral images can be processed mathematically ... -
Generation of Error Indicators for Partial Differential Equations by Machine Learning Methods
Muzalevskiy, Alexey; Neittaanmäki, Pekka; Repin, Sergey (Springer, 2022)Computer simulation methods for models based on partial differential equations usually apply adaptive strategies that generate sequences of approximations for consequently refined meshes. In this process, error indicators ... -
Method for Radiance Approximation of Hyperspectral Data Using Deep Neural Network
Rahkonen, Samuli; Pölönen, Ilkka (Springer, 2023)We propose a neural network model for calculating the radiance from raw hyperspectral data gathered using a Fabry–Perot interferometer color camera developed by VTT Technical Research Centre of Finland. The hyperspectral ...
Ellei toisin mainittu, julkisesti saatavilla olevia JYX-metatietoja (poislukien tiivistelmät) saa vapaasti uudelleenkäyttää CC0-lisenssillä.