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Incorporating prior knowledge induced from stochastic differential equations in the classification of stochastic observations

机译:将随机微分方程式衍生的先验知识纳入随机观测的分类中

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摘要

In classification, prior knowledge is incorporated in a Bayesian framework by assuming that the feature-label distribution belongs to an uncertainty class of feature-label distributions governed by a prior distribution. A posterior distribution is then derived from the prior and the sample data. An optimal Bayesian classifier (OBC) minimizes the expected misclassification error relative to the posterior distribution. From an application perspective, prior construction is critical. The prior distribution is formed by mapping a set of mathematical relations among the features and labels, the prior knowledge, into a distribution governing the probability mass across the uncertainty class. In this paper, we consider prior knowledge in the form of stochastic differential equations (SDEs). We consider a vector SDE in integral form involving a drift vector and dispersion matrix. Having constructed the prior, we develop the optimal Bayesian classifier between two models and examine, via synthetic experiments, the effects of uncertainty in the drift vector and dispersion matrix. We apply the theory to a set of SDEs for the purpose of differentiating the evolutionary history between two species.Electronic supplementary materialThe online version of this article (doi:10.1186/s13637-016-0036-y) contains supplementary material, which is available to authorized users.
机译:在分类中,通过假设特征标签分布属于由先验分布控制的特征标签分布的不确定性类别,将先验知识合并到贝叶斯框架中。然后从先验数据和样本数据得出后验分布。最佳贝叶斯分类器(OBC)使相对于后验分布的预期错误分类错误最小化。从应用程序的角度来看,预先构造至关重要。先验分布是通过将特征和标签之间的一组数学关系(先验知识)映射到控制整个不确定性类别中的概率质量的分布而形成的。在本文中,我们以随机微分方程(SDE)的形式考虑先验知识。我们考虑包含漂移向量和色散矩阵的积分形式的向量SDE。在构造了先验后,我们在两个模型之间开发了最佳贝叶斯分类器,并通过综合实验检验了漂移矢量和色散矩阵中不确定性的影响。为了将两个物种的进化历史区分开来,我们将该理论应用于一组SDE。电子补充材料本文的在线版本(doi:10.1186 / s13637-016-0036-y)包含补充材料,可用于授权用户。

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