Web Data Mining
published: March 18, 2011, recorded: September 2010, views: 8036
Download slides: russir2010_baeza_yates_wdm.pdf (10.6 MB)
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The Web continues to grow and evolve very fast, changing our daily lives. This activity represents the collaborative work of the millions of institutions and people that contribute content to the Web as well as the one billion people that use it. In this ocean of hyperlinked data there is explicit and implicit information and knowledge.
Web Mining is the task of analyzing this data and extracting information and knowledge for many different purposes. The data comes in three main flavors: content (text, images, etc.), structure (hyperlinks) and usage (navigation, queries, etc.), implying different techniques such as text, graph or log mining. Each case reflects the wisdom of some group of people that can be used to make the Web better. For example, user generated tags in Web 2.0 sites.
The tutorial covers (a) the main concepts behind Web mining, the different data that is found in the Web and typical applications; (b) the mining process: data recollection, data cleaning, data warehousing and data analysis, including crawling in the case of content mining, and privacy issues in the case of usage mining; (c) the main techniques used for the different data types; and (d) use cases of the three types: content, structure and usage mining, ranging from Web site design to search engines.
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