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Optimal Bayesian Classification with Vector Autoregressive Data Dependency.

Sport Psychologist(2024)SCI 4区

Nazarbayev Univ

Cited 11|Views20
Abstract
In classification theory, it is generally assumed that the data are independent and identically distributed. However, in many practical applications, we face a set of observations that are collected sequentially with a dependence structure among samples. The primary focus of this investigation is to construct the optimal Bayesian classifier (OBC) when the training observations are serially dependent. To model the effect of dependency, we assume the training observations are generated from VAR (p), which is a multidimensional vector autoregressive process of order p. At the same time, we assume there exists uncertainty about parameters governing the VAR(p) model. To model this uncertainty, we assume that model parameters (coefficient matrices) are random variables with a prior distribution, and find the resulting OBC under the assumption of known covariance matrices of white-noise processes. We employ simulations using both synthetic and real data to demonstrate the efficacy of the constructed OBC.
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Optimal Bayesian classification,vector autoregressive processes,serially dependent training data
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要点】:论文提出了一种针对向量自回归数据依赖性的最优贝叶斯分类器构建方法,考虑了样本之间的序列依赖性及模型参数的不确定性。

方法】:作者采用向量自回归(VAR)模型描述训练样本之间的依赖关系,并假设模型参数遵循先验分布,从而推导出在已知白噪声过程协方差矩阵条件下的最优贝叶斯分类器。

实验】:通过合成数据和实际数据进行的模拟实验验证了所构建最优贝叶斯分类器的有效性,但论文中未明确提及所使用的数据集名称。