原子内部:挖掘网络的网络和超越

Hanghang Tong
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引用次数: 0

摘要

网络(即图形)出现在许多高影响的应用程序中。这些网络通常是从不同的来源、不同的时间、不同的粒度收集的。在这次演讲中,我将介绍我们最近在挖掘这种多网络方面的工作。首先,我们将提出几个新的数据模型,其关键思想是利用网络作为上下文来连接不同的数据集或不同的数据挖掘模型,包括网络网络(NoN)模型、共同进化时间序列网络(NoT)模型和回归网络模型。其次,我们将提供一些关于如何使用这些新模型进行挖掘的算法示例,其中关键思想是在挖掘过程中利用上下文网络作为有效的正则化器,包括排名、imputation、预测和推理。最后,我们将展示我们的新模型和算法在一些应用中的有效性,包括生物信息学,传感器网络,关键基础设施网络和学术数据挖掘。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inside the Atoms: Mining a Network of Networks and Beyond
Networks (i.e., graphs) appears in many high-impact applications. Often these networks are collected from different sources, at different times, at different granularities. In this talk, I will present our recent work on mining such multiple networks. First, we will present several new data models, whose key idea is to leverage networks as context to connect different data sets or different data mining models, including a network of networks (NoN) model, a network of co-evolving time series (NoT) model and a network of regression model. Second, we will present some algorithmic examples on how to perform mining with such new models where the key idea is to leverage the contextual network as an effective regularizer during the mining process, including ranking, imputation, prediction and inference. Finally, we will demonstrate the effectiveness of our new models and algorithms in some applications, including bioinformatics, sensor networks, critical infrastructure networks and scholarly data mining.
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