Semi-Supervised Learning for Multi-View Data Classification and Visualization

Information Pub Date : 2024-07-22 DOI:10.3390/info15070421
Najmeh Ziraki, A. Bosaghzadeh, Fadi Dornaika
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Abstract

Data visualization has several advantages, such as representing vast amounts of data and visually demonstrating patterns within it. Manifold learning methods help us estimate lower-dimensional representations of data, thereby enabling more effective visualizations. In data analysis, relying on a single view can often lead to misleading conclusions due to its limited perspective. Hence, leveraging multiple views simultaneously and interactively can mitigate this risk and enhance performance by exploiting diverse information sources. Additionally, incorporating different views concurrently during the graph construction process using interactive visualization approach has improved overall performance. In this paper, we introduce a novel algorithm for joint consistent graph construction and label estimation. Our method simultaneously constructs a unified graph and predicts the labels of unlabeled samples. Furthermore, the proposed approach estimates a projection matrix that enables the prediction of labels for unseen samples. Moreover, it incorporates the information in the label space to further enhance the accuracy. In addition, it merges the information in different views along with the labels to construct a consensus graph. Experimental results conducted on various image databases demonstrate the superiority of our fusion approach compared to using a single view or other fusion algorithms. This highlights the effectiveness of leveraging multiple views and simultaneously constructing a unified graph for improved performance in data classification and visualization tasks in semi-supervised contexts.
多视图数据分类和可视化的半监督学习
数据可视化具有多种优势,例如可以表示海量数据并直观地展示其中的模式。多维学习方法可以帮助我们估算数据的低维表示,从而实现更有效的可视化。在数据分析中,由于视角有限,依靠单一视角往往会得出误导性结论。因此,同时以交互方式利用多个视图可以降低这种风险,并通过利用不同的信息源来提高性能。此外,在使用交互式可视化方法构建图表的过程中,同时纳入不同的视图也提高了整体性能。在本文中,我们介绍了一种用于联合一致图构建和标签估计的新型算法。我们的方法可同时构建统一图并预测未标记样本的标签。此外,所提出的方法还能估算投影矩阵,从而预测未见样本的标签。此外,它还结合了标签空间的信息,进一步提高了准确性。此外,它还将不同视图中的信息与标签合并在一起,以构建一个共识图。在各种图像数据库上进行的实验结果表明,与使用单一视图或其他融合算法相比,我们的融合方法更具优势。这凸显了利用多个视图同时构建统一图谱的有效性,从而提高了半监督背景下数据分类和可视化任务的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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