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An Explainable Statistical Learning Algorithm to Support Data Fusion

机译:一种支持数据融合的可解释统计学习算法

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This paper presents a statistical learning algorithm called the relevance vector machine that is currently under development to support data fusion applications. The algorithm is applicable to classification and regression problems and has been shown to be capable of learning complex, explainable behaviors in real engineering problems. This article summarizes construction of the learning algorithm and provides an example application to demonstrate some of the capabilities of the relevance vector machine with feature fusion. Finally, the possibilities are presented for using the relevance vector machine to support multi-modal data fusion by exploiting the statistically consistent outputs given by the model to extend binary label fusion to continuous label fusion.
机译:本文提出了一种称为关联向量机的统计学习算法,目前正在开发该算法以支持数据融合应用程序。该算法适用于分类和回归问题,并已被证明能够学习实际工程问题中复杂的,可解释的行为。本文总结了学习算法的构造,并提供了一个示例应用程序来演示具有特征融合的相关矢量机的某些功能。最后,通过利用模型给出的统计上一致的输出将二进制标签融合扩展到连续标签融合,提出了使用相关矢量机支持多模式数据融合的可能性。

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