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Analytic system based on multiple task learning with incomplete data

机译:基于不完整数据的多任务学习分析系统

摘要

A computing device computes a weight matrix to predict a value for a characteristic in a scoring dataset. For each of a plurality of related tasks, an augmented observation matrix, a plug-in autocovariance matrix, and a plug-in covariance vector are computed. A weight matrix used to predict the characteristic for each of a plurality of variables and each of a plurality of related tasks is computed. (a) and (b) are repeated with the computed updated weight matrix as the computed weight matrix until a convergence criterion is satisfied: (a) a gradient descent matrix is computed using the computed plug-in autocovariance matrix, the computed plug-in covariance vector, the computed weight matrix, and a predefined relationship matrix, wherein the predefined relationship matrix defines a relationship between the plurality of related tasks, and (b) an updated weight matrix is computed using the computed gradient descent matrix.
机译:计算设备计算权重矩阵以预测得分数据集中的特征的值。对于多个相关任务中的每一个,计算增强观察矩阵,插件自协方差矩阵和插件协方差向量。计算用于预测多个变量中的每个变量和多个相关任务中的每个任务的特征的权重矩阵。使用计算的更新权重矩阵作为计算的权重矩阵重复(a)和(b),直到满足收敛标准为止:(a)使用计算的插件自协方差矩阵计算梯度下降矩阵,计算的插件协方差向量,计算的权重矩阵和预定义的关系矩阵,其中,预定义的关系矩阵定义多个相关任务之间的关系,并且(b)使用计算的梯度下降矩阵来计算更新的权重矩阵。

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