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Survival Analysis: A Neural-Bayesian Approach

机译:生存分析:神经贝叶斯方法

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In this article we show that traditional Cox survival analysis can be improved upon when written in terms of a multi-layered perceptron and analyzed in the context of the Bayesian evidence framework. The obtained posterior distribution of network parameters is approximated both by Hybrid Markov Chain Monte Carlo sampling and by variational methods. We discuss the merits of both approaches. We argue that the neural-Bayesian approach circumvents the shortcomings of the original Cox analysis, and therefore yields better predictive results. As a bonus, we apply the Bayesian posterior (the probability distribution of the the network parameters given the data) to estimate p-values on the inputs.
机译:在本文中,我们表明,在贝叶斯证据框架的背景下,可以改善传统的Cox生存分析并在贝叶斯证据框架的背景下进行分析。通过混合Markov链蒙特卡罗采样和变分方法,所获得的网络参数的后部分布近似。我们讨论了两种方法的优点。我们认为神经贝叶斯方法避免了原始Cox分析的缺点,因此产生了更好的预测结果。作为奖励,我们应用贝叶斯后验(给定数据的网络参数的概率分布)来估计输入上的p值。

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