Visualizing Multimodal Big Data Anomaly Patterns in Higher-Order Feature Spaces

Alina Rakhi Ajayan, Firas Al-Doghman, Z. Chaczko
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Abstract

The world today, as we know it, is profuse with information about humans and objects. Datasets generated by cyber-physical systems are orders of magnitude larger than their current information processing capabilities. Tapping into these big data flows to uncover much deeper perceptions into the functioning, operational logic and smartness levels attainable has been investigated for quite a while. Knowledge Discovery & Representation capabilities across mutiple modalities holds much scope in this direction, with regards to their information holding potential. This paper investigates the applicability of an arithmetic tool Tensor Decompositions and Factorizations in this scenario. Higher order datasets are decomposed for Anomaly Pattern capture which encases intelligence along multiple modes of data flow. Preliminary investigations based on data derived from Smart Grid Smart City Project are compliant with our hypothesis. The results proved that Abnormal patterns detected in decomposed Tensor factors encompass deep information energy content from Big Data as efficiently as other Pattern Extraction and Knowledge Discovery frameworks, while salvaging time and resources.
高阶特征空间中多模态大数据异常模式的可视化
正如我们所知,今天的世界充满了关于人类和物体的信息。由网络物理系统生成的数据集比其当前的信息处理能力要大几个数量级。利用这些大数据流来揭示对可实现的功能、操作逻辑和智能水平的更深层次的认知已经研究了很长时间。跨多种模式的知识发现和表示能力在这个方向上具有很大的范围,这与它们的信息保存潜力有关。本文研究了一种算法工具张量分解和因子分解在这种情况下的适用性。对高阶数据集进行了分解,实现了多模式数据流的智能捕获。基于智能电网智能城市项目数据的初步调查符合我们的假设。结果表明,分解张量因子中检测到的异常模式与其他模式提取和知识发现框架一样,在节省时间和资源的同时,有效地包含了来自大数据的深层信息能量。
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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