scholarly journals A Novel Approach for User Navigation Pattern Discovery and Analysis for Web Usage Mining

2015 ◽  
Vol 11 (2) ◽  
pp. 372-382 ◽  
Author(s):  
J. Vellingiri ◽  
S. Kaliraj ◽  
S. Satheeshkumar ◽  
T. Parthiban
Author(s):  
Asri Inna Khoirun Nissa ◽  
Ibnu Asror ◽  
Gede Agung Ari Wisudiawan

[Id]Website Igracias Universitas Telkom merupakan salah satu website di universitas Telkom yang sering digunakan oleh seluruh entitas Universitas Telkom. Pola pengunjungan web dapat digunakan untuk mengetahui halaman apa saja yang telah dikunjungi oleh user dalam suatu website. Salah satu ilmu yang mempelajari pola navigasi user agar mendapatkan suatu informasi yang bermanfaat adalah web usage mining. Pada penelitian ini algoritma yang digunakan adalah sequential pattern discovery using equivalence classes (SPADE). Algoritma SPADE diterapkan untuk mencari pola perilaku pengguna website dengan cara melakukan preprocessing data untuk menyaring informasi yang dibutuhkan. Dilanjutkan dengan pembentukan data transaksi dan perhitungan SPADE dengan mengkombinasikan itemset dan menghitung frequent-nya untuk mendapatkan rule yang kemudian dicari kekuatan setiap rule dengan menghitung lift ratio-nya.Kata kunci : web usage mining, SPADE.[En]Igracias Telkom University is one of the Telkom University website that are frequently used by the entire entity of the by all entities that exist at Telkom University. The pattern of the web can be used recursively to find out what pages have been visited by the user on a website. One of the study of the patterns of user navigation in order to obtain a useful information is a web usage mining. On this final project, the algorithm used is a sequential pattern discovery using equivalence classes (SPADE). The SPADE algorithm is applied to search behavior patterns by preprocessing data to find out the useful information or knowledge. Proceed with the establishment of the data transaction and calculation of the SPADE by combining itemset and calculate the frequent to get a rules which will then look for the strength of each rule by calculating the lift ratio.


2012 ◽  
Vol 3 (4) ◽  
pp. 92-94
Author(s):  
SUJATHA PADMAKUMAR ◽  
◽  
Dr.PUNITHAVALLI Dr.PUNITHAVALLI ◽  
Dr.RANJITH Dr.RANJITH

Big Data ◽  
2016 ◽  
pp. 899-928
Author(s):  
Abubakr Gafar Abdalla ◽  
Tarig Mohamed Ahmed ◽  
Mohamed Elhassan Seliaman

The web is a rich data mining source which is dynamic and fast growing, providing great opportunities which are often not exploited. Web data represent a real challenge to traditional data mining techniques due to its huge amount and the unstructured nature. Web logs contain information about the interactions between visitors and the website. Analyzing these logs provides insights into visitors' behavior, usage patterns, and trends. Web usage mining, also known as web log mining, is the process of applying data mining techniques to discover useful information hidden in web server's logs. Web logs are primarily used by Web administrators to know how much traffic they get and to detect broken links and other types of errors. Web usage mining extracts useful information that can be beneficial to a number of application areas such as: web personalization, website restructuring, system performance improvement, and business intelligence. The Web usage mining process involves three main phases: pre-processing, pattern discovery, and pattern analysis. Various preprocessing techniques have been proposed to extract information from log files and group primitive data items into meaningful, lighter level abstractions that are suitable for mining, usually in forms of visitors' sessions. Major data mining techniques in web usage mining pattern discovery are: clustering, association analysis, classification, and sequential patterns discovery. This chapter discusses the process of web usage mining, its procedure, methods, and patterns discovery techniques. The chapter also presents a practical example using real web log data.


2008 ◽  
pp. 2004-2021
Author(s):  
Jenq-Foung Yao ◽  
Yongqiao Xiao

Web usage mining is to discover useful patterns in the web usage data, and the patterns provide useful information about the user’s browsing behavior. This chapter examines different types of web usage traversal patterns and the related techniques used to uncover them, including Association Rules, Sequential Patterns, Frequent Episodes, Maximal Frequent Forward Sequences, and Maximal Frequent Sequences. As a necessary step for pattern discovery, the preprocessing of the web logs is described. Some important issues, such as privacy, sessionization, are raised, and the possible solutions are also discussed.


Author(s):  
T. Venkat Narayana Rao ◽  
D. Hiranmayi

Web usage mining attempts to discover useful knowledge from the secondary data obtained from the interactions of the users with the Web. It is the type of Web mining activity that involves the automatic discovery of out what users are looking for on the Internet. In this chapter methodology of web usage mining explained in detail which are data collection, data preprocessing, knowledge discovery and pattern analysis. The different Web Usage Mining techniques are described, which are used for knowledge and pattern discovery. These are statistical analysis, sequential patterns, classification, association rule mining, clustering, dependency modeling. Pattern analysis is needed to filter out uninterested rules or patterns from the set found in the pattern discovery phase.


Author(s):  
Shahnaz Parvin Nina ◽  
Mahmudur Rahman ◽  
Khairul Islam Bhuiyan ◽  
Khandakar Entenam Unayes Ahmed

2014 ◽  
Vol 1 (2) ◽  
Author(s):  
Tri Suratno ◽  
Toni Prahasto ◽  
Adian Fatchur Rochim

2004 ◽  
pp. 335-358 ◽  
Author(s):  
Yongqiao Xiao ◽  
Jenq-Foung (J.F.) Yao

Web usage mining is to discover useful patterns in the web usage data, and the patterns provide useful information about the user’s browsing behavior. This chapter examines different types of web usage traversal patterns and the related techniques used to uncover them, including Association Rules, Sequential Patterns, Frequent Episodes, Maximal Frequent Forward Sequences, and Maximal Frequent Sequences. As a necessary step for pattern discovery, the preprocessing of the web logs is described. Some important issues, such as privacy, sessionization, are raised, and the possible solutions are also discussed.


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