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Scalable Tensor Mining?

机译:可伸缩的Tensor Mining?

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摘要

Tensors, or multi dimensional arrays, are receiving significant attentiondue to the various types of data that can be modeled by them; examples include call graphs (sender, receiver, time), knowledge bases (subject, verb, object), 3-dimensional web graphs augmented with anchor texts, to name a few. Scalable tensor mining aims to extract important patterns and anomalies from a large amount of tensor data. In this paper, we provide an overview of scalable tensor mining. We first present main algorithms for tensor mining, and their scalable versions. Next, we describe success stories of using tensors for interesting data mining problems including higher order web analysis, knowledge base mining, network traffic analysis, citation analysis, and sensor data analysis. Finally, we discuss interesting future research directions for scalable tensor mining.
机译:张量或多维数组正因其可以建模的各种类型的数据而备受关注。例子包括呼叫图(发送者,接收者,时间),知识库(主语,动词,宾语),带有锚文本的3维网络图,仅举几例。可伸缩张量挖掘的目的是从大量张量数据中提取重要的模式和异常。在本文中,我们提供了可伸缩张量挖掘的概述。我们首先介绍张量挖掘的主要算法及其可扩展版本。接下来,我们描述将张量用于有趣的数据挖掘问题的成功案例,这些问题包括高阶Web分析,知识库挖掘,网络流量分析,引用分析和传感器数据分析。最后,我们讨论了可伸缩张量挖掘的有趣的未来研究方向。

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