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首页> 外文期刊>Astin bulletin >ADDRESSING IMBALANCED INSURANCE DATA THROUGH ZERO-INFLATED POISSON REGRESSION WITH BOOSTING
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ADDRESSING IMBALANCED INSURANCE DATA THROUGH ZERO-INFLATED POISSON REGRESSION WITH BOOSTING

机译:通过零充气的泊松回归来解决不平衡的保险数据

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摘要

A machine learning approach to zero-inflated Poisson (ZIP) regression is introduced to address common difficulty arising from imbalanced financial data. The suggested ZIP can be interpreted as an adaptive weight adjustment procedure that removes the need for post-modeling re-calibration and results in a substantial enhancement of predictive accuracy. Notwithstanding the increased complexity due to the expanded parameter set, we utilize a cyclic coordinate descent optimization to implement the ZIP regression, with adjustments made to address saddle points. We also study how various approaches alleviate the potential drawbacks of incomplete exposures in insurance applications. The procedure is tested on real-life data. We demonstrate a significant improvement in performance relative to other popular alternatives, which justifies our modeling techniques.
机译:引入了零充气泊松(ZIP)回归的机器学习方法,以解决非衡度财务数据产生的共同困难。 建议的zip可以解释为自适应权重调整过程,可以消除对建模后重新校准的需要,并导致预测准确性的大量提高。 尽管有扩展的参数集导致的复杂性增加,但我们利用循环坐标血液序列优化来实现ZIP回归,并进行调整以解决鞍点。 我们还研究各种方法如何减轻保险应用中不完全暴露的潜在缺点。 该过程在现实生活数据上进行测试。 我们展示了相对于其他流行替代品的性能的显着改善,这证明了我们的建模技术。

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