Adversarial Variational Bayes Methods for Tweedie Compound Poisson Mixed Models

Yaodong Yang, Rui Luo, Y. Liu
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引用次数: 4

Abstract

The Tweedie Compound Poisson-Gamma model is routinely used for modeling non-negative continuous data with a discrete probability mass at zero. Mixed models with random effects account for the covariance structure related to the grouping hierarchy in the data. An important application of Tweedie mixed models is pricing the insurance policies, e.g. car insurance. However, the intractable likelihood function, the unknown variance function, and the hierarchical structure of mixed effects have presented considerable challenges for drawing inferences on Tweedie. In this study, we tackle the Bayesian Tweedie mixed-effects models via variational inference approaches. In particular, we empower the posterior approximation by implicit models trained in an adversarial setting. To reduce the variance of gradients, we reparameterize random effects, and integrate out one local latent variable of Tweedie. We also employ a flexible hyper prior to ensure the richness of the approximation. Our method is evaluated on both simulated and real-world data. Results show that the proposed method has smaller estimation bias on the random effects compared to traditional inference methods including MCMC; it also achieves a state-of-the-art predictive performance, meanwhile offering a richer estimation of the variance function.
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Tweedie复合泊松混合模型的对抗变分贝叶斯方法
Tweedie复合泊松-伽马模型通常用于对离散概率质量为零的非负连续数据进行建模。具有随机效应的混合模型解释了数据中与分组层次相关的协方差结构。Tweedie混合模型的一个重要应用是为保险单定价,例如汽车保险。然而,难以处理的似然函数、未知的方差函数和混合效应的层次结构给Tweedie上的推断带来了相当大的挑战。在本研究中,我们通过变分推理方法处理贝叶斯Tweedie混合效应模型。特别是,我们通过在对抗设置中训练的隐式模型增强了后验近似。为了减小梯度的方差,我们将随机效应重新参数化,并积分出Tweedie的一个局部潜在变量。我们还采用了一个柔性超先验来保证近似的丰富性。我们的方法在模拟和现实世界的数据上进行了评估。结果表明,与MCMC等传统推理方法相比,该方法对随机效应的估计偏差较小;它还实现了最先进的预测性能,同时提供了更丰富的方差函数估计。
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