Modeling of production processes by naive Bayesian classifierand artificial neural networks

Modeling of production processes by naive Bayesian classifierand artificial neural networks

Marcin Perzyk, Robert Biernacki

Instytut Technologi Materiałowych Politechniki Warszawskiej.

DOI:

https://doi.org/10.7494/cmms.2004.3.0058

Abstract:

Modeling qualities of two types learning systems are compared: naive Bayesian classifier (NBC) and artificial neural networks (ANN), based on prediction errors and relevant importance factors of input signals. Simulated and real industrial data were used. It was found that NBC can be an effective and a better tool in some applications, compared to ANN.

Cite as:

Perzyk, M., Biernacki, R. (2004). Modeling of production processes by naive Bayesian classifierand artificial neural networks. Computer Methods in Materials Science, 4(3), 98 – 104. https://doi.org/10.7494/cmms.2004.3.0058

Article (PDF):

Keywords:

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