A QoS-sensitive model for e-commerce customer behavior

Author:

Ghavamipoor Hoda,Hashemi Golpayegani S. Alireza,Shahpasand Maryam

Abstract

Purpose In this paper, a Quality of Service-sensitive customer behavior model graph (QoS-CBMG) is proposed for use in service quality adaptation in e-commerce systems. Success in achieving customer satisfaction and maximizing profit in e-commerce is highly dependent on the QoS provided. However, providing high-level QoS for all customers in all Web sessions is often deemed costly and inefficient. Therefore, a QoS-sensitive model for formulating QoS-aware offers to customers is required. The paper aims to respond to this necessity. Design/methodology/approach Process mining is adopted as the knowledge extraction technique for developing a QoS-CBMG. If it is assumed that user navigation on a website is a process, then clickstreams during one user’s navigations can be considered process steps. Findings The application of both QoS-CBMG (the new model) and CBMG (the classic version) to the same real data set demonstrated that the proposed method outperforms CBMG due to its reduction of average absolute error in the measurement scale. This finding also verifies the assumption that customer behavior is sensitive to the level of QoS. Research limitations/implications From a theoretical viewpoint, the obtained QoS-CBMG facilitates the adaption in e-commerce systems, which leads to conduct the user to the desired behavior by tuning QoS levels in different Web sessions in a dynamic manner. This implication is due to the fact that QoS-CBMG can predict the upcoming clickstream of the customer at different QoS levels. Practical implications Using the proposed model for the adaptation of service quality in e-commerce websites not only results in the efficient management of the provider’s resources but also encourages customer purchases from the website and increases profitability. It is noteworthy that with the advent of cloud computing, e-commerce websites are enabled to provide various levels of QoS for their customers by supplying their basic services (e.g. infrastructure, platform) through cloud platforms. Originality/value According to the best of our knowledge, no previous model has taken into account the QoS dimension for customer behavior modeling. The main contribution of this paper is to propose a CBMG that is sensitive to the QoS provided to customers during their navigation to formulate QoS-aware offers to them.

Publisher

Emerald

Subject

Marketing

Reference43 articles.

1. Aalst, W.M., Weijters, A.J.M.M. and Maruster, L. (2002), “Workflow mining: which processes can be rediscovered”. BETA Working Paper Series, WP 74, Eindhoven University of Technology, Eindhoven.

2. Business process mining: an industrial application;Information Systems,2007

3. Promoting where, when and what? An analysis of web logs by integrating data mining and social network techniques to guide ecommerce business promotions;Social Network Analysis and Mining,2011

4. Capacity planning an essential tool for managing web services;IT Professional,2002

5. An empirical investigation of decision-making satisfaction in web-based decision support systems;Decision Support Systems,2004

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