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A Method to Estimate Regression Model Confidence Interval and Risk of Artificial Neural Network Model

Journal Article
03-16-03-0017
ISSN: 1946-3936, e-ISSN: 1946-3944
Published May 17, 2022 by SAE International in United States
A Method to Estimate Regression Model Confidence Interval and Risk of
                    Artificial Neural Network Model
Sector:
Citation: Nicodemus, E., Ambarkar, V., Ray, S., and Schipperijn, F., "A Method to Estimate Regression Model Confidence Interval and Risk of Artificial Neural Network Model," SAE Int. J. Engines 16(3):291-304, 2023, https://doi.org/10.4271/03-16-03-0017.
Language: English

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