Publication type: Conference paper
Type of review: Peer review (abstract)
Title: Self-organized division of labor in networks of forecasting models for time series with regime switches
Authors: Gygax, Gregory
Füchslin, Rudolf Marcel
Ott, Thomas
et. al: No
Proceedings: Proceedings of the NOLTA 2020 Conference
Page(s): 278
Pages to: 281
Conference details: 2020 International Symposium on Nonlinear Theory and Its Applications (NOLTA2020), Online Conference, 16-19 November 2020
Issue Date: Nov-2020
Language: English
Subjects: Self-organization; Resilient machine learning
Subject (DDC): 006: Special computer methods
Abstract: We present the idea of a self-organized division of labor in networks of forecasting models. We find that the principles of self-organizing maps provide a good starting point for building resilient machine learning systems based on our idea. The potential of the idea, benefits and challenges are discussed by means of two toy-like problems.
URI: https://digitalcollection.zhaw.ch/handle/11475/20862
Fulltext version: Published version
License (according to publishing contract): Licence according to publishing contract
Departement: Life Sciences and Facility Management
Organisational Unit: Institute of Computational Life Sciences (ICLS)
Appears in collections:Publikationen Life Sciences und Facility Management

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Gygax, G., Füchslin, R. M., & Ott, T. (2020). Self-organized division of labor in networks of forecasting models for time series with regime switches [Conference paper]. Proceedings of the NOLTA 2020 Conference, 278–281.
Gygax, G., Füchslin, R.M. and Ott, T. (2020) ‘Self-organized division of labor in networks of forecasting models for time series with regime switches’, in Proceedings of the NOLTA 2020 Conference, pp. 278–281.
G. Gygax, R. M. Füchslin, and T. Ott, “Self-organized division of labor in networks of forecasting models for time series with regime switches,” in Proceedings of the NOLTA 2020 Conference, Nov. 2020, pp. 278–281.
GYGAX, Gregory, Rudolf Marcel FÜCHSLIN und Thomas OTT, 2020. Self-organized division of labor in networks of forecasting models for time series with regime switches. In: Proceedings of the NOLTA 2020 Conference. Conference paper. November 2020. S. 278–281
Gygax, Gregory, Rudolf Marcel Füchslin, and Thomas Ott. 2020. “Self-Organized Division of Labor in Networks of Forecasting Models for Time Series with Regime Switches.” Conference paper. In Proceedings of the NOLTA 2020 Conference, 278–81.
Gygax, Gregory, et al. “Self-Organized Division of Labor in Networks of Forecasting Models for Time Series with Regime Switches.” Proceedings of the NOLTA 2020 Conference, 2020, pp. 278–81.


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