人工知能学会全国大会論文集
Online ISSN : 2758-7347
36th (2022)
セッションID: 2S5-IS-2c-05
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Overfitting Problem in the Approximate Bayesian Computation Method Based on Maxima Weighted Isolation Kernel
*Iurii S. NAGORNOV
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Recently we designed the heuristic approximate Bayesian computation method based on maxima weighted isolation kernel. The method showed good results on parameter estimation for the branching processes model that has unevenly stochastically distributed data. This work is devoted to the problem of the fitting and overfitting of the internal parameters for the method such as a number of Voronoi sites and a number of trees of isolation forest. Here, we discuss the reasons for overfitting and how to fit parameters properly with an example of a two-dimension task.

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© 2022 The Japanese Society for Artificial Intelligence
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