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The Optimally Designed Variational Autoencoder Networks for Clustering and Recovery of Incomplete Multimedia Data

机译:针对不完整多媒体数据的聚类和恢复的优化设计的变分自动编码器网络

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摘要

Clustering analysis of massive data in wireless multimedia sensor networks (WMSN) has become a hot topic. However, most data clustering algorithms have difficulty in obtaining latent nonlinear correlations of data features, resulting in a low clustering accuracy. In addition, it is difficult to extract features from missing or corrupted data, so incomplete data are widely used in practical work. In this paper, the optimally designed variational autoencoder networks is proposed for extracting features of incomplete data and using high-order fuzzy c-means algorithm (HOFCM) to improve cluster performance of incomplete data. Specifically, the feature extraction model is improved by using variational autoencoder to learn the feature of incomplete data. To capture nonlinear correlations in different heterogeneous data patterns, tensor based fuzzy c-means algorithm is used to cluster low-dimensional features. The tensor distance is used as the distance measure to capture the unknown correlations of data as much as possible. Finally, in the case that the clustering results are obtained, the missing data can be restored by using the low-dimensional features. Experiments on real datasets show that the proposed algorithm not only can improve the clustering performance of incomplete data effectively, but also can fill in missing features and get better data reconstruction results.
机译:无线多媒体传感器网络(WMSN)中的海量数据的聚类分析已成为热门话题。然而,大多数数据聚类算法难以获得数据特征的潜在非线性相关性,导致聚类精度低。另外,很难从丢失或损坏的数据中提取特征,因此在实际工作中广泛使用不完整的数据。本文提出了一种优化设计的变分自编码器网络,用于提取不完整数据的特征,并使用高阶模糊c均值算法(HOFCM)来提高不完整数据的聚类性能。具体来说,通过使用变分自动编码器学习不完整数据的特征来改进特征提取模型。为了捕获不同异构数据模式中的非线性相关性,基于张量的模糊c均值算法用于聚类低维特征。张量距离用作距离度量,以尽可能多地捕获数据的未知相关性。最后,在获得聚类结果的情况下,可以通过使用低维特征来恢复丢失的数据。在真实数据集上的实验表明,该算法不仅可以有效地提高不完整数据的聚类性能,而且可以弥补缺失的特征,获得更好的数据重建效果。

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