Keywords and phrases: prediction model, calibration index, hybrid model, simulation study.
Received: August 11, 2021; Accepted: September 21, 2021; Published: October 7, 2021
How to cite this article: Yuki Shiko, Shuhei Yamamoto, Yosuke Inaba, Ippeita Dan and Yohei Kawasaki, Proposal for new calibration index reflecting the decision-making in actual clinical practice: a simulation study, Advances and Applications in Statistics 70(2) (2021), 201-218. DOI: 10.17654/AS070020201
This Open Access Article is Licensed under Creative Commons Attribution 4.0 International License
References:
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