MELGSep 30, 2022

Model error and its estimation, with particular application to loss reserving

arXiv:2210.01099v1h-index: 14
Originality Synthesis-oriented
AI Analysis

This work addresses a specific gap in forecasting error estimation for insurance loss reserving, but it is incremental as it builds on existing methods like Bayesian model averaging and LASSO.

The paper tackles the problem of estimating model error in forecasting, particularly for loss reserving, by using Bayesian model averaging with LASSO and bootstrapping to generate a set of admissible models and compute error estimates, though it finds that parameter and model errors are entangled and difficult to separate.

This paper is concerned with forecast error, particularly in relation to loss reserving. This is generally regarded as consisting of three components, namely parameter, process and model errors. The first two of these components, and their estimation, are well understood, but less so model error. Model error itself is considered in two parts: one part that is capable of estimation from past data (internal model error), and another part that is not (external model error). Attention is focused here on internal model error. Estimation of this error component is approached by means of Bayesian model averaging, using the Bayesian interpretation of the LASSO. This is used to generate a set of admissible models, each with its prior probability and the likelihood of observed data. A posterior on the model set, conditional on the data, results, and an estimate of model error (contained in a loss reserve) is obtained as the variance of the loss reserve according to this posterior. The population of models entering materially into the support of the posterior may turn out to be thinner than desired, and bootstrapping of the LASSO is used to gain bulk. This provides the bonus of an estimate of parameter error also. It turns out that the estimates of parameter and model errors are entangled, and dissociation of them is at least difficult, and possibly not even meaningful. These matters are discussed. The majority of the discussion applies to forecasting generally, but numerical illustration of the concepts is given in relation to insurance data and the problem of insurance loss reserving.

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