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Supervised multiview learning based on simultaneous learning of multiview intact and single view classifier

机译:基于多视图完整和单视图分类器的同时学习的监督多视图学习

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摘要

Multiview learning problem refers to the problem of learning a classifier from multiple view data. In this data set, each data point is presented by multiple different views. In this paper, we propose a novel method for this problem. This method is based on two assumptions. The first assumption is that each data point has an intact feature vector, and each view is obtained by a linear transformation from the intact vector. The second assumption is that the intact vectors are discriminative, and in the intact space, we have a linear classifier to separate the positive class from the negative class. We define an intact vector for each data point, and a view-conditional transformation matrix for each view, and propose to reconstruct the multiple view feature vectors by the product of the corresponding intact vectors and transformation matrices. Moreover, we also propose a linear classifier in the intact space, and learn it jointly with the intact vectors. The learning problem is modeled by a minimization problem, and the objective function is composed of a Cauchy error estimator-based view-conditional reconstruction term over all data points and views, and a classification error term measured by hinge loss over all the intact vectors of all the data points. Some regularization terms are also imposed to different variables in the objective function. The minimization problem is solved by an iterative algorithm using alternate optimization strategy and gradient descent algorithm. The proposed algorithm shows its advantage in the compression to other multiview learning algorithms on benchmark data sets.
机译:多视图学习问题是指从多个视图数据学习分类器的问题。在该数据集中,每个数据点由多个不同的视图呈现。在本文中,我们提出了一种解决这个问题的新方法。该方法基于两个假设。第一假设是每个数据点具有完整的特征向量,并且每个视图通过来自完整向量的线性变换获得。第二假设是完整的矢量是歧视性的,并且在完整的空间中,我们具有线性分类器,用于将正类与负类分开。我们为每个数据点定义一个完整的向量,以及每个视图的视图条件转换矩阵,并建议通过相应的完整矢量和变换矩阵的乘积重建多视图特征向量。此外,我们还提出了完整空间中的线性分类器,并与完整的向量共同学习。学习问题由最小化问题建模,目标函数由所有数据点和视图的Cauchy误差估计器的视图条件重建术语组成,以及通过铰链损耗在所有完整向量上测量的分类错误项所有数据点。一些正则化术语也对目标函数中的不同变量施加。利用替代优化策略和梯度下降算法的迭代算法来解决最小化问题。所提出的算法在基准数据集上的压缩中显示了其对其他多视图学习算法的优点。

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