Ensemble distributional forecasting for insurance loss reserving (2206.08541v5)
Abstract: Loss reserving generally focuses on identifying a single model that can generate superior predictive performance. However, different loss reserving models specialise in capturing different aspects of loss data. This is recognised in practice in the sense that results from different models are often considered, and sometimes combined. For instance, actuaries may take a weighted average of the prediction outcomes from various loss reserving models, often based on subjective assessments. In this paper, we propose a systematic framework to objectively combine (i.e. ensemble) multiple stochastic loss reserving models such that the strengths offered by different models can be utilised effectively. Our framework contains two main innovations compared to existing literature and practice. Firstly, our criteria model combination considers the full distributional properties of the ensemble and not just the central estimate - which is of particular importance in the reserving context. Secondly, our framework is that it is tailored for the features inherent to reserving data. These include, for instance, accident, development, calendar, and claim maturity effects. Crucially, the relative importance and scarcity of data across accident periods renders the problem distinct from the traditional ensembling techniques in statistical learning. Our framework is illustrated with a complex synthetic dataset. In the results, the optimised ensemble outperforms both (i) traditional model selection strategies, and (ii) an equally weighted ensemble. In particular, the improvement occurs not only with central estimates but also relevant quantiles, such as the 75th percentile of reserves (typically of interest to both insurers and regulators). The framework developed in this paper can be implemented thanks to an R package, ADLP
, which is available from CRAN.
- Persistence in forecasting performance and conditional combination strategies. Journal of Econometrics 135, 31–53.
- Stochastic loss reserving with mixture density neural networks. Insurance: Mathematics and Economics 105, 144–174.
- APRA, 2019. Prudential standard gps 340 insurance liability valuation. https://www.legislation.gov.au/Details/F2018L00738.
- SynthETIC: An individual insurance claim simulator with feature control. Insurance: Mathematics and Economics 100, 296–308.
- Performance of national weather service forecasts compared to operational, consensus, and weighted model output statistics. Weather and Forecasting 20, 1034–1047.
- The actuary and ibnr techniques: A machine learning approach. Available at SSRN 3697256 .
- Combining predictive distributions for the statistical post-processing of ensemble forecasts. International Journal of Forecasting 34, 477–496.
- Dynamic programming. Science 153, 34–37.
- Weights and pools for a norwegian density combination. The North American Journal of Economics and Finance 22, 61–76.
- Stacked regressions. Machine learning 24, 49–64.
- The forecast combination puzzle: A simple theoretical explanation. International Journal of Forecasting 32, 754–762.
- Optimal combination of survey forecasts. International Journal of Forecasting 31, 1096–1103.
- Machine Learning for Factor Investing: R Version. CRC Press.
- On the usefulness of the diebold-mariano test in the selection of prediction models. Statistical Journal 22, 153–161.
- Comparing predictive accuracy, twenty years later: A personal perspective on the use and abuse of diebold–mariano tests. Journal of Business & Economic Statistics 33, 1–1.
- Comparing predictive accuracy. Journal of Business & economic statistics 20, 134–144.
- A flexible framework for stochastic claims reserving, in: Proceedings of the Casualty Actuarial Society, pp. 1–38.
- Estimating unpaid claims using basic techniques. Casualty Actuarial Society .
- A neural network boosted double overdispersed poisson claims reserving model. ASTIN Bulletin: The Journal of the IAA 50, 25–60.
- Neural network embedding of the over-dispersed poisson reserving model. Scandinavian Actuarial Journal 2020, 1–29.
- Probabilistic forecasting. Annual Review of Statistics and Its Application 1, 125–151.
- Strictly proper scoring rules, prediction, and estimation. Journal of the American Statistical Association 102, 359–378.
- Calibrated probabilistic forecasting using ensemble model output statistics and minimum crps estimation. Monthly Weather Review 133, 1098–1118.
- Comparing density forecasts using threshold-and quantile-weighted scoring rules. Journal of Business & Economic Statistics 29, 411–422.
- Combining predictive distributions. Electronic Journal of Statistics 7, 1747–1782.
- Rational decisions, in: Breakthroughs in statistics. Springer, pp. 365–377.
- Nonparametric regression and generalized linear models: a roughness penalty approach. Crc Press.
- Cross-validating non-gaussian data: generalized approximate cross-validation revisited. Journal of Computational and Graphical Statistics 10, 581–591.
- Density forecast combination. Tanaka Business School.
- Combining density forecasts. International Journal of Forecasting 23, 1–13.
- Over-dispersed age-period-cohort models. Journal of the American Statistical Association 113, 1722–1732.
- Decomposition of the continuous ranked probability score for ensemble prediction systems. Weather and Forecasting 15, 559–570.
- Machine learning & traditional methods synergy in non-life reserving. Report of the ASTIN Working Party of the International Actuarial Association. Available online: https://www. actuaries. org/IAA/Documents/ASTIN/ASTIN_MLTMS% 20Report_SJAMAL. pdf (accessed on 19 July 2019) .
- Mortality forecasting using stacked regression ensembles. Scandinavian Actuarial Journal 2022, 591–626.
- Forecast uncertainty, disagreement, and the linear pool. Journal of Applied Econometrics 37, 23–41.
- Identification of the age-period-cohort model and the extended chain-ladder model. Biometrika 95, 979–986.
- Deeptriangle: A deep learning approach to loss reserving. Risks 7, 97.
- A model stacking approach for forecasting mortality. North American Actuarial Journal , 1–16.
- Efficient use of data for lstm mortality forecasting. European Actuarial Journal , 1–30.
- Machine learning, regression models, and prediction of claims reserves, in: Casualty Actuarial Society E-Forum, Summer 2020.
- A simple parametric model for rating automobile insurance or estimating ibnr claims reserves. ASTIN Bulletin: The Journal of the IAA 21, 93–109.
- Distribution-Free Calculation of the Standard Error of Chain Ladder Reserve Estimates. ASTIN Bulletin 23, 213–225.
- Inference and forecasting in the age–period–cohort model with unknown exposure with an application to mesothelioma mortality. Journal of the Royal Statistical Society Series A: Statistics in Society 178, 29–55.
- Evaluating density forecasts: model combination strategies versus the RBNZ. Technical Report. Reserve Bank of New Zealand.
- Combining density forecasts using focused scoring rules. Journal of Applied Econometrics 32, 1298–1313.
- Proper local scoring rules. The Annals of Statistics 40, 561–592.
- Is There an Optimal Forecast Combination?: A Stochastic Dominance Approach to the Forecasting Combination Puzzle. Department of Economics and Finance, College of Management and Economics .
- Using bayesian model averaging to calibrate forecast ensembles. Monthly weather review 133, 1155–1174.
- Combining probability forecasts. Journal of the Royal Statistical Society: Series B (Statistical Methodology) 72, 71–91.
- A stochastic model underlying the chain-ladder technique. British Actuarial Journal 4, 903–923.
- Estimation of claim cost data using zero adjusted gamma and inverse gaussian regression models. Journal of Mathematics and Statistics 9, 186–192.
- Generalized additive models for location, scale and shape. Journal of the Royal Statistical Society: Series C (Applied Statistics) 54, 507–554.
- Evaluating probabilistic forecasts using information theory. Monthly Weather Review 130, 1653–1660.
- A robust objective function for calibration of groundwater models in light of deficiencies of model structure and observations. Hydrology and Earth System Sciences Discussions , 1–26.
- Using the hayne mle models: A practitioner’s guide. CAS Monograph 4.
- A simple explanation of the forecast combination puzzle. Oxford Bulletin of Economics and Statistics 71, 331–355.
- The use of gamlss in assessing the distribution of unpaid claims reserves, in: Casualty Actuarial Society E-Forum, Summer 2014-Volume 2.
- Loss Reserving: An Actuarial Perspective. Kluwer Academic Publishers. Huebner International Series on Risk, Insurance and Economic Security.
- Stochastic loss reserving using Generalized Linear Models. Casualty Actuarial Society.
- An empirical investigation of the value of finalisation count information to loss reserving. Variance 10, 75–120.
- On the estimation of reserves from loglinear models. Insurance: mathematics and economics 10, 75–80.
- Skill of global raw and postprocessed ensemble predictions of rainfall over northern tropical africa. Weather and Forecasting 33, 369–388.
- A stochastic method for claims reserving in general insurance. Journal of the Institute of Actuaries 117, 677–731.
- Neural networks applied to chain–ladder reserving. European Actuarial Journal 8, 407–436.
- Stochastic claims reserving methods in insurance. John Wiley & Sons, Chichester.
- Using stacking to average bayesian predictive distributions (with discussion). Bayesian Analysis 13, 917–1007.
Collections
Sign up for free to add this paper to one or more collections.
Paper Prompts
Sign up for free to create and run prompts on this paper using GPT-5.