Define distribution families and fit them to interval-censored and interval-truncated data, where the truncation bounds may depend on the individual observation. The defined distributions feature density, probability, sampling and fitting methods as well as efficient implementations of the log-density log f(x) and log-probability log P(x0 <= X <= x1) for use in 'TensorFlow' neural networks via the 'tensorflow' package. Allows training parametric neural networks on interval-censored and interval-truncated data with flexible parameterization. Applications include Claims Development in Non-Life Insurance, e.g. modelling reporting delay distributions from incomplete data, see Bücher, Rosenstock (2022) <doi:10.1007/s13385-022-00314-4>.
Package details |
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Author | Alexander Rosenstock [aut, cre, cph] |
Maintainer | Alexander Rosenstock <alexander.rosenstock@web.de> |
License | GPL |
Version | 0.0.3 |
URL | https://ashesitr.github.io/reservr/ https://github.com/AshesITR/reservr |
Package repository | View on CRAN |
Installation |
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