Improving a Growing Atlas

2010 ◽  
pp. 267-274
Author(s):  
Tanya C. Haddad ◽  
Declan Dunne

As coastal web atlas (CWA) projects grow over time, designers will have to track and adapt to changes in site activity, user capabilities, and progress in available data and technology. The web server may log all user activity on a CWA and these logs may be analyzed and interpreted by the CWA designers to better understand how users are encountering the materials and data provided by the CWA. In addition, CWA users may be surveyed on their use of the web site either by direct observation studies or written surveys. Both the surveying of users and the analysis of server logs may expose trends or confirm patterns of use for a CWA, and these patterns may be valuable feedback for designers, and provide important reporting metrics for funding bodies and institutional sponsors.

2012 ◽  
Vol 3 (1) ◽  
pp. 30
Author(s):  
Mona M. Abu Al-Khair ◽  
M. Koutb ◽  
H. Kelash

Each year the number of consumers and the variety of their interests increase. As a result, providers are seeking ways to infer the customer's interests and to adapt their websites to make the content of interest more easily accessible. Assume that past navigation behavior as an indicator of the user's interests. Then, the records of this behavior, kept in the web-server logs, can be mined to extract the user's interests. On this principal, recommendations can be generated, to help old and new website's visitors to find the information about their interest faster.


Author(s):  
Yijun Gao

This study analyzed the Web server logs from the People's Daily Online and revealed some interesting findings: Pageview numbers of the mportant news in editors’ mind on the most obvious sections of the homepage, are not significantly different than those of the "common" news put on the less obvious sections.Cette étude a porté sur l'analyse des fichiers de journalisation de serveurs Web du Quotidien du Peuple en ligne et a révélé quelques données intéressantes : le nombre de pages vues pour les dépêches jugées importantes par la rédaction et placées en évidence de la page d'accueil n'est pas significativement différent du nombre de pages vues pour les dépêches plus « courantes » placés moins en évidence. 


2012 ◽  
Vol 37 (3) ◽  
pp. 1-5 ◽  
Author(s):  
K. Sudheer Reddy ◽  
G. Partha Saradhi Varma ◽  
I. Ramesh Babu

2017 ◽  
Vol 24 ◽  
Author(s):  
Kelsey Cameron

Autostraddle.com is the most popular independently owned Web site for queer women and a central, organizing force in queer female cyberspace. It also grew out of The L Word fandom, though its appearance now occludes the history of fan recapping that laid its groundwork. In this article, I reconnect Autostraddle to The L Word fandom, tracing the gradual accumulation of online fan activity into a stable Web site and queer female social space. In doing so, I revise dominant conceptions of fan productivity as individual-centered and temporally bound, arguing for a more expansive consideration of the large-scale creations fans can build over time. My intervention is twofold: a plea for history where the Web can seem to be an eternally present medium, and an assertion of fandom's inseparability from the larger landscape of queer female life online.


2013 ◽  
Vol 718-720 ◽  
pp. 2074-2079
Author(s):  
Ting Zhong Wang ◽  
Gang Long Fan

Web usage mining is the information about the user data extraction, transformation, analysis and model processing, extracted from the auxiliary business decision of key data. Intelligent site refers to the use of the Web server log for user access patterns and provide personalized service for users. The paper proposes the development and design of intelligent web site based on web usage mining. This paper presents the access interest measure method and the traditional consider only clicks visit interest measure method, recommend less deviation, has better recommendation results.


2021 ◽  
Vol ahead-of-print (ahead-of-print) ◽  
Author(s):  
Husna Sarirah Husin ◽  
James Thom ◽  
Xiuzhen Zhang

Purpose The purpose of the study is to use web serer logs in analyzing the changes of user behavior in reading online news, in terms of desktop and mobile users. Advances in mobile technology and social media have paved the way for online news consumption to evolve. There is an absence of research into the changes of user behavior in terms of desktop versus mobile users, particularly by analyzing the server logs. Design/methodology/approach In this paper, the authors investigate the evolution of user behavior using logs from the Malaysian newspaper Berita Harian Online in April 2012 and April 2017. Web usage mining techniques were used for pre-processing the logs and identifying user sessions. A Markov model is used to analyze navigation flows, and association rule mining is used to analyze user behavior within sessions. Findings It was found that page accesses have increased tremendously, particularly from Android phones, and about half of the requests in 2017 are referred from Facebook. Navigation flow between the main page, articles and section pages has changed from 2012 to 2017; while most users started navigation with the main page in 2012, readers often started with an article in 2017. Based on association rules, National and Sports are the most frequent section pages in 2012 and 2017 for desktop and mobile. However, based on the lift and conviction, these two sections are not read together in the same session as frequently as might be expected. Other less popular items have higher probability of being read together in a session. Research limitations/implications The localized data set is from Berita Harian Online; although unique to this particular newspaper, the findings and the methodology for investigating user behavior can be applied to other online news. On another note, the data set could be extended to be more than a month. Although initially data for the year 2012 was collected, unfortunately only the data for April 2012 is complete. Other months have missing days. Therefore, to make an impartial comparison for the evolution of user behavior in five years, the Web server logs for April 2017 were used. Originality/value The user behavior in 2012 and 2017 was compared using association rules and Markov flow. Different from existing studies analyzing online newspaper Web server logs, this paper uniquely investigates changes in user behavior as a result of mobile phones becoming a mainstream technology for accessing the Web.


2013 ◽  
Vol 12 (01) ◽  
pp. 1350006 ◽  
Author(s):  
M. Koutb ◽  
H. Kelash ◽  
M. Abu Al-Khair

Each year the number of consumers and the variety of their interests increase. As a result, providers are seeking ways to infer the customer's interests and to adapt their websites to make the content of interest more easily accessible. Assume that past navigation behaviour as an indicator of the user's interests. Then, the records of this behaviour, kept in the web-server logs, can be mined to extract the user's interests. On this principal, recommendations can be generated, to help old and new website's visitors to find the information about their interest faster.


2011 ◽  
Vol 271-273 ◽  
pp. 775-779
Author(s):  
Lei Zhou ◽  
Jing Fen Du ◽  
Yu Qiang Sun ◽  
Yu Wan Gu

How to speed up Web Server is one important problem to increase the speed of accessing information and knowledge effectively. Through analyzing the structure and content of the website, using User Browse Trend (referred to as UBT) algorithm, predicting the webpage most likely to be visited in next step by users, combining webpage pre-delivery technology, the web sever acceleration technique is implemented.


Author(s):  
Jon T.S. Quah ◽  
Winnie C.H. Leow ◽  
K. L. Yong

This project experiments with the designing of a Web site that has the self-adaptive feature of generating and adapting the site contents dynamically to match visitors’ tastes based on their activities on the site. No explicit inputs are required from visitors. Instead a visitor’s clickstream on the site will be implicitly monitored, logged, and analyzed. Based on the information gathered, the Web site would then generate Web contents that contain items that have certain relatedness to items that were previously browsed by the visitor. The relatedness rules will have multidimensional aspects in order to produce cross-mapping between items. The Internet has become a place where a vast amount of information can be deposited and also retrieved by hundreds of millions of people scattered around the globe. With such an ability to reach out to this large pool of people, we have seen the expulsion of companies plunging into conducting business over the Internet (e-commerce). This has made the competition for consumers’ dollars fiercely stiff. It is now insufficient to just place information of products onto the Internet and expect customers to browse through the Web pages. Instead, e-commerce Web site designing is undergoing a significant revolution. It has become an important strategy to design Web sites that are able to generate contents that are matched to the customer’s taste or preference. In fact a survey done in 1998 (GVU, 1998) shows that around 23% of online shoppers actually reported a dissatisfying experience with Web sites that are confusing or disorganized. Personalization features on the Web would likely reverse this dissatisfaction and increase the likelihood of attracting and retaining visitors. Having personalization or an adaptive site can bring the following benefits: 1. Attract and maintain visitors with adaptive contents that are tailored to their taste. 2. Target Web contents correspondingly to their respective audience, thus reducing information that is of no interest to the audience. 3. Advertise and promote products through marketing campaigns targeting the correct audience. 4. Enable the site to intelligently direct information to a selective or respective audience. Currently, most Web personalization or adaptive features employ data mining or collaborative filtering techniques (Herlocker, Konstan, Borchers, & Riedl, 1999; Mobasher, Cooley, & Srivastava, 1999; Mobasher, Jain, Han, & Srivastava, 1997; Spiliopoulou, Faulstich, & Winkler, 1999) which often use past historical (static) data (e.g., previous purchases or server logs). The deployment of data mining often involves significant resources (large storage space and computing power) and complicated rules or algorithms. A vast amount of data is required in order to be able to form recommendations that made sense and are meaningful in general (Claypool et al., 1999; Basu, Hirsh, & Cohen, 1998). While the main idea of Web personalization is to increase the ‘stickiness’ of a portal, with the proven presumption that the number of times a shopper returns to a shop has a direct relationship to the likelihood of resulting in business transactions, the method of achieving the goal varies. The methods range from user clustering and time framed navigation sessions analysis (Kim et al., 2005; Wang & Shao, 2004), analyzing relationship between customers and products (Wang, Chuang, Hsu, & Keh, 2004), performing collaborative filtering and data mining on transaction data (Cho & Kim, 2002, 2004; Uchyigit & Clark, 2002; Jung, Jung, & Lee, 2003), deploying statistical methods for finding relationships (Kim & Yum, 2005), and performing recommendations bases on similarity with known user groups (Yu, Liu, & Li, 2005), to tracking shopping behavior over time as well as over the taxonomy of products. Our implementation works on the premise that each user has his own preferences and needs, and these interests drift over time (Cho, Cho, & Kim, 2005). Therefore, besides identifying users’ needs, the system should also be sensitive to changes in tastes. Finally, a truly useful system should not only be recommending items in which a user had shown interest, but also related items that may be of relevance to the user (e.g., buying a pet => recommend some suitable pet foods for the pet, as well as suggesting some accessories that may be useful, such as fur brush, nail clipper, etc.). In this aspect, we borrow the concept of ‘category management’ use in the retailing industry to perform classification as well as linking the categories using shared characteristics. These linkages provide the bridge for cross-category recommendations.


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