107509

Adaptive Approach for Intelligent Web to Enhance Business Intelligence Applications

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Last updated: 04 Jan 2025

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Abstract

The World Wide Web (WWW) has grown quickly in the past two decades from a small research community to the biggest and most popular infrastructure for communication, information dissemination, search, social interaction and commerce. The continuous growth in size and use of the WWW creates a need for methods to process these wicked volumes of data. Web Intelligence (WI), as a research direction, has a broad agenda to deal with the issues that arise around the WWW phenomenon. WI corresponds to research and development to explore the fundamental roles, artificial intelligence and advanced information technology on the web-empowered systems, services, and activities. In this context, WI is concerning of mining in web data and user behaviors. This creates a demand for using mining technologies to search large volume of data for gaining hidden knowledge. This hidden knowledge helps in gaining competitive advantages, better customers' relationships, and even fraud detection. Achieving the intelligence to the web enhances Business Intelligence (BI) for the enterprises. Web Usage Mining (WUM) and Web Opinion Mining (WOM) are considered a leading mining approaches in mining the user behavior and reviews.  Most of previous studies depended in building intelligent web on mining and analyzing user's profiles or opinions separately. This becomes not fair enough and cause of limitations. This limitations could be narrowed if both of user preferences and opinions are considered in building recommendations. The paper proposes a framework for achieving the intelligence via using WUM and WOM. The proposed framework would contribute in solving the problem. The paper also surveys the background of using the intelligent web as an approach to enhance the Business Intelligence (BI) applications

DOI

10.21608/fcihib.2019.107509

Keywords

Web Intelligence (WI), Business Intelligence (BI), Recommender System (RS), Web Opinion Mining (WOM), Web Usage Mining (WUM)

Authors

First Name

Yehia

Last Name

Helmy

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First Name

Ayman

Last Name

E. Khedr

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First Name

Sherif

Last Name

Koleif

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First Name

Eman

Last Name

Mohammed Haggag

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Volume

1

Article Issue

1

Related Issue

16264

Issue Date

2019-01-01

Receive Date

2019-01-19

Publish Date

2019-01-19

Page Start

20

Page End

28

Print ISSN

2537-0901

Online ISSN

2535-1397

Link

https://fcihib.journals.ekb.eg/article_107509.html

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https://fcihib.journals.ekb.eg/service?article_code=107509

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2

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المقالة الأصلية

Type Code

1,411

Publication Type

Journal

Publication Title

النشرة المعلوماتية في الحاسبات والمعلومات

Publication Link

https://fcihib.journals.ekb.eg/

MainTitle

Adaptive Approach for Intelligent Web to Enhance Business Intelligence Applications

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Article

Created At

23 Jan 2023