2,349 research outputs found

    A Survey on Web Usage Mining

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    Now a day World Wide Web become very popular and interactive for transferring of information. The web is huge, diverse and active and thus increases the scalability, multimedia data and temporal matters. The growth of the web has outcome in a huge amount of information that is now freely offered for user access. The several kinds of data have to be handled and organized in a manner that they can be accessed by several users effectively and efficiently. So the usage of data mining methods and knowledge discovery on the web is now on the spotlight of a boosting number of researchers. Web usage mining is a kind of data mining method that can be useful in recommending the web usage patterns with the help of users2019; session and behavior. Web usage mining includes three process, namely, preprocessing, pattern discovery and pattern analysis. There are different techniques already exists for web usage mining. Those existing techniques have their own advantages and disadvantages. This paper presents a survey on some of the existing web usage mining techniques

    An efficient technique to provide webpage recommendation based on domain knowledge and web usage knowledge

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    Now a day’s use of world wide web is going on increasing to get various kind of related information. By considering this fact, there is a need to provide Web page Recommendation to get a relevant result to the user search. There are different kinds of web recommendations are made like images, video, audio, query and web pages. This paper focus on providing web page recommendation to the web page in website based on domain knowledge and web usage. So it proposes models for web page recommendations. The first model is an Ontological Model for finding domain terms. The second model is semantic network analysis model to find out the relationship between domain terms and WebPages. The third model is Conceptual Prediction Model to find out web usage knowledge from web pages .On this basis, web page recommendation is provided to the web page that gives a more relevant result to user search than any other web pages present in that particular website

    Intelligent Web Recommender System Based on Semantic Enhanced Approach

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    Today’sworld the growth of the Web has created a big challenge for directing the user to the web pages in their areas of interest. This paper has presented a new method for better web page recommendation through semantic enhancement by integrating the domain and Web usage knowledge of a website. There are three different models are used, first model is ontology based model, second model is semantic network model and third model is Conceptual prediction model which is used for automatically generate a semantic network of the semantic Web usage knowledge

    Ontology-style web usage model for semantic Web applications

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    Current semantic recommender systems aim to exploit the website ontologies to produce valuable web recommendations. However, Web usage knowledge for recommendation is presented separately and differently from the domain ontology, this leads to the complexity of using inconsistent knowledge resources. This paper aims to solve this problem by proposing a novel ontology-style model of Web usage to represent the non-taxonomic visiting relationship among the visited pages. The output of this model is an ontology-style document which enables the discovered web usage knowledge to be sharable and machine-understandable in semantic Web applications, such as recommender systems. A case study is presented to show how this model is used in conjunction of the web usage mining and web recommendation. Two real-world datasets are used in the case study. © 2010 IEEE

    Adaptive and Reactive Rich Internet Applications

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    In this thesis we present the client-side approach of Adaptive and Reactive Rich Internet Applications as the main result of our research into how to bring in time adaptivity to Rich Internet Applications. Our approach leverages previous work on adaptive hypermedia, event processing and other research disciplines. We present a holistic framework covering the design-time as well as the runtime aspects of Adaptive and Reactive Rich Internet Applications focusing especially on the run-time aspects

    A Survey on Framework for Improved Web Data Clustering Using Language Processing Technique

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    Now a day, World Wide Web becomes very popular and interactive for transferring of information. It is a massive repository of web pages and links. It provides information about vast area for the internet user. The web is huge, diverse and active and thus increases the scalability, multimedia data & temporal matters. The growth of the web has outcome in a huge amount of information that is now freely offered for user access. Since due to tremendous usage, the log files are growing at a faster rate & the size is becoming huge. Preprocessing plays a vital role in efficient mining process as log data is normally noisy and indistinct. Reconstruction of session and paths are completed by appending missing pages in preprocessing. Additionally, the transactions which illustrate the behavior of users are constructed exactly in preprocessing by calculating the Reference Length of user access by means of byte rate, the clustering task the ability to capture the uncertainty among web user’s navigation performance

    Rule-based User Characteristics Acquisition from Logs with Semantics for Personalized Web-Based Systems

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    Personalization of web-based information systems based on specialized user models has become more important in order to preserve the effectiveness of their use as the amount of available content increases. We describe a user modeling approach based on automated acquisition of user behaviour and its successive rule-based evaluation and transformation into an ontological user model. We stress reusability and flexibility by introducing a novel approach to logging, which preserves the semantics of logged events. The successive analysis is driven by specialized rules, which map usage patterns to knowledge about users, stored in an ontology-based user model. We evaluate our approach via a case study using an enhanced faceted browser, which provides personalized navigation support and recommendation
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