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社交和信息网络建模:机器学习的机会

Modeling Social and Information Networks: Opportunities for Machine Learning
课程网址: http://videolectures.net/icml09_leskovec_msain/  
主讲教师: Jure Leskovec
开课单位: 斯坦福大学
开课时间: 2009-08-26
课程语种: 英语
中文简介:
网络,社交媒体和在线社交网站的出现引发了人类社交活动的详细痕迹。这为分析和模拟数百万人的行为提供了许多机会。例如,我们现在可以研究2.4亿人的完整Microsoft Instant Messenger网络的“行星规模”动态,每月交换的消息超过255亿条。许多类型的数据,尤其是网络和“社交”数据,以网络或图形的形式出现。本教程将介绍此类网络数据的几个方面:网络数据集的宏观属性;建立静态和动态网络大规模网络结构的统计模型;在节点组的层次上的网络结构和演化的特性和模型以及用于提取这种结构的算法。我还将介绍博客,即时消息,维基百科和网络搜索的几个应用程序和案例研究。整个教程将提供机器学习作为主题。本教程的目的是向机器学习社区介绍支持Web和其他在线媒体的社交和信息网络领域的最新发展。
课程简介: Emergence of the web, social media and online social networking websites gave rise to detailed traces of human social activity. This offers many opportunities to analyze and model behaviors of millions of people. For example, we can now study ''planetary scale'' dynamics of a full Microsoft Instant Messenger network of 240 million people, with more than 255 billion exchanged messages per month. Many types of data, especially web and "social" data, come in a form of a network or a graph. This tutorial will cover several aspects of such network data: macroscopic properties of network data sets; statistical models for modeling large scale network structure of static and dynamic networks; properties and models of network structure and evolution at the level of groups of nodes and algorithms for extracting such structures. I will also present several applications and case studies of blogs, instant messaging, Wikipedia and web search. Machine learning as a topic will be present throughout the tutorial. The idea of the tutorial is to introduce the machine learning community to recent developments in the area of social and information networks that underpin the Web and other on-line media.
关 键 词: 社交媒体; 网络数据; 机器学习
课程来源: 视频讲座网
最后编审: 2019-04-23:lxf
阅读次数: 31