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Insights into Domain Names and Product Categories of e-Commerce Websites: A Case Study of the UAE

In: Business Analytics and Decision Making in Practice

Author

Listed:
  • Rachidatou Ingrid Traoret

    (United Arab Emirates University)

  • Salama AlDhaheri

    (United Arab Emirates University)

  • Fatima AlAmeemi

    (United Arab Emirates University)

  • Gurdal Ertek

    (United Arab Emirates University)

Abstract

Understanding e-commerce markets and online consumer behavior is critical for e-commerce retailers in the United Arab Emirates (UAE) and across the world. This study conducted a comprehensive analysis of unique e-commerce data to reveal patterns in domain names, product categories, and associations with other attributes. Using data analytics techniques, the initial dataset was cleaned and augmented to conduct the analysis. Key findings reveal ‘.com’ and ‘.ae’ as dominant domain extensions, numeric patterns in domain names, and ‘apparel’ as the most prevalent product category. An in-depth association mining analysis identifies and lists frequent categories and category combinations. This study provides actionable insights into the naming and category planning of e-commerce retailers in the UAE. Multidimensional analysis establishes an analysis and planning framework for evidence-based e-commerce research that can guide the two critical strategic decisions of domain name and category selection, which are among the important strategic decisions when an e-commerce business is first established. Most importantly, while providing insights for UAE e-commerce markets specifically, the methodology can be applied to any country or region.

Suggested Citation

  • Rachidatou Ingrid Traoret & Salama AlDhaheri & Fatima AlAmeemi & Gurdal Ertek, 2024. "Insights into Domain Names and Product Categories of e-Commerce Websites: A Case Study of the UAE," Lecture Notes in Operations Research, in: Ali Emrouznejad & Panagiotis D. Zervopoulos & Ilhan Ozturk & Dima Jamali & John Rice (ed.), Business Analytics and Decision Making in Practice, chapter 0, pages 229-241, Springer.
  • Handle: RePEc:spr:lnopch:978-3-031-61589-4_19
    DOI: 10.1007/978-3-031-61589-4_19
    as

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