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Multifactor cat bond pricing using distortion operator models with recurrent neural networks

Sección: Artículos
Título: Multifactor cat bond pricing using distortion operator models with recurrent neural networks / Xiaowei Chen, Jianxin Liu and Fuzhe HuangAutor: Chen, Xiaowei
Notas: Sumario: This article develops a unified framework for the pricing of catastrophe bonds that integrates distortion operator theory with recurrent neural networks. It introduces a peer-adjusted distortion factor that incorporates market information, investor sentiment, and reinsurance capacity. The jump-diffusionbased model outperforms the Wang transform in both explanatory and predictive terms. The RNN methodology enables more efficient and stable estimation of structural parameters. Empirical results confirm significant improvements in both the primary and secondary CAT bond marketsRegistros relacionados: En: Astin bulletin. - Belgium : ASTIN and AFIR Sections of the International Actuarial Association = ISSN 0515-0361. - 20/04/2026 Volumen 56 Número 2 - abril 2026 , 23 p.Materia / lugar / evento: Reaseguro Transferencia de riesgos Pérdidas máximas por siniestros Riesgos catastróficos Mercado de capitales Otros autores: Liu, Jianxin Huang, Fuzhe International Actuarial Association Otras clasificaciones: 6