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Sfemcca: Supervised Fractional-Order Embedding Multiview Canonical Correlation Analysis for Video Preference Estimation

机译:SFEMCCA:监督的分数次级嵌入多维次数典型相关性分析,用于视频偏好估计

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In this paper, we present supervised fractional-order embedding multiview canonical correlation analysis (SFEMCCA). SFEMCCA is a CCA method realizing the following three points: (1) learning noisy data with small number of samples and large number of dimensions, (2) multiview learning that can integrate three or more kinds of features, and (3) supervised learning using labels corresponding to the samples. In real data, it is necessary to deal with high dimensional noisy data with limited number of samples, and there are many cases where three or more kinds of multimodal and supervised data are treated in order to calculate more accurate projections. Therefore, SFEMCCA, which takes the above advantages (1)-(3) into account, is effective for data obtained from real environments. From experimental results, it was confirmed that accuracy improvements using SFEMCCA were statistically significant compared to the several conventional methods of supervised multiview CCA.
机译:在本文中,我们呈现了监督分数嵌入的多视野规范相关分析(SFEMCCA)。 Sfemcca是一个实现以下三个点的CCA方法:(1)使用少量样本和大量的大量数据学习嘈杂数据,(2)多视图学习,可以集成三种或更多种功能,(3)监督使用标签对应于样品。在实际数据中,有必要处理具有有限数量的样本的高维噪声数据,并且存在许多情况下进行三种或更多种多式多峰和监督数据以便计算更准确的投影。因此,考虑到上述优势(1) - (3)的Sfemcca对从真实环境中获得的数据有效。从实验结果中,与监督多维CCA的几种常规方法相比,证实使用SFEMCCA的准确性改进是统计学意义的。

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