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BizSeeker: A hybrid semantic recommendation system for personalized government‐to‐business e‐services

Jie Lu (University of Technology Sydney, Sydney, Australia)
Qusai Shambour (University of Technology Sydney, Sydney, Australia)
Yisi Xu (University of Technology Sydney, Sydney, Australia)
Qing Lin (University of Technology Sydney, Sydney, Australia)
Guangquan Zhang (University of Technology Sydney, Sydney, Australia)

Internet Research

ISSN: 1066-2243

Article publication date: 8 June 2010

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Abstract

Purpose

The purpose of this paper is to develop a hybrid semantic recommendation system to provide personalized government to business (G2B) e‐services, in particular, business partner recommendation e‐services for Australian small to medium enterprises (SMEs).

Design/methodology/approach

The study first proposes a product semantic relevance model. It then develops a hybrid semantic recommendation approach which combines item‐based collaborative filtering (CF) similarity and item‐based semantic similarity techniques. This hybrid approach is implemented into an intelligent business‐partner‐locator recommendation‐system prototype called BizSeeker.

Findings

The hybrid semantic recommendation approach can help overcome the limitations of existing recommendation techniques. The recommendation system prototype, BizSeeker, can recommend relevant business partners to individual business users (e.g. exporters), which therefore will reduce the time, cost and risk of businesses involved in entering local and international markets.

Practical implications

The study would be of great value in e‐government personalization research. It would facilitate the transformation of the current G2B e‐services into a new stage wherein the e‐government agencies offer personalized e‐services to business users. The study would help government policy decision‐makers to increase the adoption of e‐government services.

Originality/value

Providing personalized e‐services by e‐government can be seen as an evolution of the intentions‐based approach and will be one of the next directions of government e‐services. This paper develops a new recommender approach and systems to improve personalization of government e‐services.

Keywords

Citation

Lu, J., Shambour, Q., Xu, Y., Lin, Q. and Zhang, G. (2010), "BizSeeker: A hybrid semantic recommendation system for personalized government‐to‐business e‐services", Internet Research, Vol. 20 No. 3, pp. 342-365. https://doi.org/10.1108/10662241011050740

Publisher

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Emerald Group Publishing Limited

Copyright © 2010, Emerald Group Publishing Limited

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