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对于大的社会和信息网络图挖掘几何工具

Geometric Tools for Graph Mining of Large Social and Information Networks
课程网址: http://videolectures.net/kdd2010_mahoney_gtgm/  
主讲教师: Michael Mahoney
开课单位: 斯坦福大学
开课时间: 2010-10-01
课程语种: 英语
中文简介:
本教程将介绍有关识别和利用“几何”的最新算法和统计工作。大型信息图表中的结构,如大型社交和信息网络。这些工具(例如,主成分分析和相关的非线性降维方法)在机器学习和数据分析的许多领域中是流行的,因为它们具有相对良好的算法特性以及它们与正则化和统计推断的关联。但是,这些工具不能立即应用于许多大型信息图应用程序,因为图形是更多的组合对象;由于许多现实世界网络的噪声和稀疏性模式等,最近的理论和实证工作已经开始弥补这一点,并且这样做已经阐明了非常大的网络的几个令人惊讶和违反直觉的特性。主题包括:潜在的理论思想;弥合理论与实践差距的技巧;经验观察;以及这些工具在社区检测,路由,推理和可视化等多种应用中的实用性。
课程简介: The tutorial will cover recent algorithmic and statistical work on identifying and exploiting "geometric" structure in large informatics graphs such as large social and information networks. Such tools (e.g., Principal Component Analysis and related non-linear dimensionality reduction methods) are popular in many areas of machine learning and data analysis due to their relatively-nice algorithmic properties and their connections with regularization and statistical inference. These tools are not, however, immediately-applicable in many large informatics graphs applications since graphs are more combinatorial objects; due to the noise and sparsity patterns of many real-world networks, etc. Recent theoretical and empirical work has begun to remedy this, and in doing so it has already elucidated several surprising and counterintuitive properties of very large networks. Topics include: underlying theoretical ideas; tips to bridge the theory-practice gap; empirical observations; and the usefulness of these tools for such diverse applications as community detection, routing, inference, and visualization.
关 键 词: 社会信息网络; 算法和统计工作; 非线性降维方法; 大信息图形
课程来源: 视频讲座网
最后编审: 2020-05-21:王淑红(课程编辑志愿者)
阅读次数: 87