Section 01
Introduction: The Neural Loss Reserving Engine Project—An Attempt to Connect Traditional Actuarial Science and Deep Learning
This article introduces the open-source project Neural Loss Reserving Engine initiated by actuarial students, which explores the application of neural network architectures to non-life insurance loss reserving, aiming to bridge the gap between traditional actuarial methods and modern deep learning. The core of the project is not only to prove that deep learning can be applied to loss triangles but also to focus on understanding the actuarial reasoning logic behind it, lowering the barrier for actuaries to learn deep learning.