Empirical analysis of Bayesian kernel methods for modeling count data

Molly Stam Floyd, H. Baroud, K. Barker
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引用次数: 5

Abstract

Bayesian models are used for estimation and forecasting in a wide range of application areas. One extension of such methods is the Bayesian kernel model, which integrate the Bayesian conjugate prior with kernel functions. This paper empirically analyzes the performance of Bayesian kernel models when applied to count data. The analysis is performed with several data sets with different characteristics regarding the numbers of observations and predictors. While the size of the data and number of predictors is changing across data sets, the predictors are all continuous in this study. The Poisson Bayesian kernel model is applied to each data set and compared to the Poisson generalized linear model. The measures of goodness of fit used are the deviance and the log-likelihood functional value, and the computation is done by dividing the data into training and testing sets, for the Bayesian kernel model, a tuning set is used to optimize the parameters of the kernel function. The Bayesian kernel approach tends to outperform classical count data models for smaller data sets with a small number of predictors. The analysis conducted in this paper is an initial step towards the validation of the Poisson Bayesian kernel model. This type of model can be useful in risk analysis applications in which data sources are scarce and can help in analytical and data-driven decision making.
贝叶斯核方法在计数数据建模中的实证分析
贝叶斯模型被广泛应用于估计和预测领域。这种方法的一个扩展是贝叶斯核模型,它将贝叶斯共轭先验与核函数相结合。本文对贝叶斯核模型应用于计数数据的性能进行了实证分析。分析是用几个数据集进行的,这些数据集在观测值和预测因子的数量方面具有不同的特征。虽然数据的大小和预测因子的数量在数据集之间是变化的,但在本研究中,预测因子都是连续的。将泊松贝叶斯核模型应用于每个数据集,并与泊松广义线性模型进行比较。拟合优度的度量是偏差值和对数似然函数值,通过将数据分为训练集和测试集来计算,对于贝叶斯核模型,使用调优集来优化核函数的参数。对于具有少量预测器的较小数据集,贝叶斯核方法往往优于经典计数数据模型。本文的分析是验证泊松贝叶斯核模型的第一步。这种类型的模型在数据源稀缺的风险分析应用程序中非常有用,可以帮助进行分析和数据驱动的决策制定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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