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Web Mining Research: A Survey Authors: Raymond Kosala & Hendrik Blockeel Presenter: Ryan Patterson April 23rd 2014 CS332 Data Mining pg 01
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outline Introduction Web Mining Web Content Mining Web Structure Mining Web Usage Mining Review Exam Questions pg 02
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outline Introduction Web Mining Web Content Mining Web Structure Mining Web Usage Mining Review Exam Questions pg 03
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Introduction “The Web is huge, diverse, and dynamic... we are currently drowning in information and facing information overload.” Web users encounter problems: Finding relevant information Creating new knowledge out of the information available on the Web Personalization of the information Learning about consumers or individual users pg 04
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outline Introduction Web Mining Web Content Mining Web Structure Mining Web Usage Mining Review Exam Questions pg 05
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Web Mining “Web mining is the use of data mining techniques to automatically discover and extract information from Web documents and services.” Web mining subtasks: 1.Resource finding 2.Information selection and pre-processing 3.Generalization 4.Analysis pg 06
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Web Mining Information Retrieval & Information Extraction Information Retrieval (IR) o the automatic retrieval of all relevant documents while at the same time retrieving as few of the non- relevant as possible Information Extraction (IE) o transforming a collection of documents into information that is more readily digested and analyzed pg 07
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Live demo pg 08
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outline Introduction Web Mining Web Content Mining Web Structure Mining Web Usage Mining Review Exam Questions pg 09
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Web Content Mining Information Retrieval View Unstructured Documents Most utilizes “bag of words” representation to generate documents features o ignores the sequence in which the words occur Document features can be reduced with selection algorithms o ie. information gain Possible alternative document feature representations: o word positions in the document o phrases/terms (ie. “annual interest rate”) Semi-Structured Documents Utilize additional structural information gleaned from the document o HTML markup (intra-document structure) o HTML links (inter-document structure) pg 10
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Web content mining, IR unstructured documents pg 11
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Web content mining, IR semi structured documents pg 12
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Web Content Mining Database View “the Database view tries... to transform a Web site to become a database so that... querying on the Web become[s] possible.” Uses Object Exchange Model (OEM) o represents semi-structured data by a labeled graph Database view algorithms typically start from manually selected Web sites o site-specific parsers Database view algorithms produce: o extract document level schema or DataGuides structural summary of semi-structured data o extract frequent substructures (sub-schema) o multi-layered database each layer is obtained by generalizations on lower layers pg 13
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Web content mining, Database view pg 14
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outline Introduction Web Mining Web Content Mining Web Structure Mining Web Usage Mining Review Exam Questions pg 15
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Web Structure Mining “... we are interested in the structure of the hyperlinks within the Web itself” Inspired by the study of social networks and citation analysis o based on incoming & outgoing links we could discover specific types of pages (such as hubs, authorities, etc) Some algorithms calculate the quality/relevancy of each Web page o ie. Page Rank Others measure the completeness of a Web site o measuring frequency of local links on the same server o interpreting the nature of hierarchy of hyperlinks on one domain pg 16
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outline Introduction Web Mining Web Content Mining Web Structure Mining Web Usage Mining Review Exam Questions pg 17
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Web Usage Mining “... focuses on techniques that could predict user behavior while the user interacts with the Web.” Web usage is mined by parsing Web server logs o mapped into relational tables → data mining techniques applied o log data utilized directly Users connecting through proxy servers and/or users or ISP’s utilizing caching of Web data results in decreased server log accuracy Two applications: o personalized - user profile or user modeling in adaptive interfaces o impersonalized - learning user navigation patterns pg 18
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outline Introduction Web Mining Web Content Mining Web Structure Mining Web Usage Mining Review Exam Questions pg 19
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Review Web mining o 4 subtasks o IR & IE Web content mining o primarily intra-page analysis o IR view vs DB view Web structure mining o primarily inter-page analysis Web usage mining o primarily analysis of server activity logs pg 20
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Web mining categories Web Mining Web Content Mining Web Structure MiningWeb Usage Mining IR ViewDB View View of Data - Unstructured - Semi structured - Web site as DB - Links structure- Interactivity Main Data - Text documents - Hypertext documents - Links structure- Server logs - Browser logs Representation - Bag of word, n-grams - Terms, phrases - Concepts of ontology - Relational - Edge-labeled graph (OEM) - Relational - Graph- Relational table - Graphs Method - TFIDF and variants - Machine learning - Statistical (incl. NLP) - Proprietary algorithms - ILP - (modified) association rules - Proprietary algorithms- Machine Learning - Statistical - (modified) association rules Application Categories - Categorization - Clustering - Finding extraction rules - Finding patterns in text - User modeling - Finding frequent sub- structures - Web site schema discovery - Categorization - Clustering - Site construction, adaptation, and management - Marketing - User modeling pg 21
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outline Introduction Web Mining Web Content Mining Web Structure Mining Web Usage Mining Review Exam Questions pg 22
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Exam Question 1 Q:Of the following Web mining paradigms: Information Retrieval Information Extraction Which does a traditional Web search engine (google.com, bing.com, etc.) attempt to accomplish? Briefly support your answer. pg 23
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Exam Question 1 Q:Of the following Web mining paradigms: Information Retrieval Information Extraction Which does a traditional Web search engine (google.com, bing.com, etc.) attempt to accomplish? Briefly support your answer. A:Information Retrieval, the search engine attempts provides a list of documents ranked by their relevancy to the search query. pg 24
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Exam Question 2 Q:State one common problem hampering accurate Web usage mining? Briefly support your answer. pg 25
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Exam Question 2 Q:State one common problem hampering accurate Web usage mining? Briefly support your answer. A: Users connecting to a Web site though a proxy server, Users (or their ISP’s) utilizing Web data caching, will result in decreased server log accuracy. Accurate server logs are required for accurate Web usage mining. pg 26
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Exam Question 3 Q:What is the phrase associated with the most popular method for Web content mining algorithms to generate document features from unstructured documents? pg 27
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Exam Question 3 Q:What is the phrase associated with the most popular method for Web content mining algorithms to generate document features from unstructured documents? A:“Bag of words” representation. pg 28
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