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What KAN mortality say: smooth and interpretable mortality modeling using Kolmogorov-Arnold networks

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001  MAP20260002064
003  MAP
005  20260205101745.0
008  260202e20260115bel|||p |0|||b|eng d
040  ‎$a‎MAP‎$b‎spa‎$d‎MAP
084  ‎$a‎6
100  ‎$0‎MAPA20220005371‎$a‎Zhang, Lianzeng
24510‎$a‎What KAN mortality say: smooth and interpretable mortality modeling using Kolmogorov-Arnold networks‎$c‎Lianzeng Zhang and Yuan Zhuang
520  ‎$a‎This study explores how traditional mortality model components can be directly used to initialize neural networks, addressing the common loss of structural information that occurs during model interpretation. We introduce KolmogorovArnold Networks (KAN) and develop both shallow models (KAN[2,1] and ARIMAKAN) and a KAN-based Actuarial Neural Network (KANN), which extends the existing CANN framework. The proposed KANN variantsKANN[2,1], KANNLC, and KANNAPCincorporate elements from classical mortality models and enhance them through deep learning. These models produce smooth mortality curves and smooth age, period, and cohort effects through simple regularization. Experiments across 34 populations show that KAN-based approaches offer stable performance, successfully balancing interpretability, smoothness, and predictive accuracy
650 4‎$0‎MAPA20080555306‎$a‎Mortalidad
650 4‎$0‎MAPA20080592042‎$a‎Modelos matemáticos
650 4‎$0‎MAPA20080579258‎$a‎Cálculo actuarial
650 4‎$0‎MAPA20170005476‎$a‎Machine learning
650 4‎$0‎MAPA20080555016‎$a‎Longevidad
650 4‎$0‎MAPA20080602437‎$a‎Matemática del seguro
650 4‎$0‎MAPA20080597733‎$a‎Modelos estadísticos
7001 ‎$0‎MAPA20260001678‎$a‎Zhuang, Yuan
7102 ‎$0‎MAPA20100017661‎$a‎International Actuarial Association
7730 ‎$w‎MAP20077000420‎$g‎19/01/2026 Volume 56 Issue 1 - January 2026 , p. 32 - 59‎$x‎0515-0361‎$t‎Astin bulletin‎$d‎Belgium : ASTIN and AFIR Sections of the International Actuarial Association