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Measuring consumer perceptions of home-delivery convenience – the case of cargo bikes
[Mesurer les perceptions des consommateurs sur la commodité de la livraison à domicile - le cas des vélos cargo]

Author

Listed:
  • Jean-Eric Pelet

    (LARGEPA - Laboratoire de recherche en sciences de gestion Panthéon-Assas - Université Paris-Panthéon-Assas)

  • Basma Taieb

    (PULV - Pôle Universitaire Léonard de Vinci)

  • Rami Alkhudary

    (LARGEPA - Laboratoire de recherche en sciences de gestion Panthéon-Assas - Université Paris-Panthéon-Assas)

Abstract

Purpose Despite the increasing use of home delivery (HD) in e-commerce, no studies have explicitly examined consumer perceptions of the convenience of the last-mile delivery of goods by cargo bike (CB). Therefore, this study aims to identify the dimensions of HD convenience and to develop a reliable and valid measurement tool, namely the Home-Delivery Convenience via Cargo Bike (HDCCB) scale. Design/methodology/approach The methodology of this scale development study is premised on a review of the existing literature, which identifies differences in consumer perceptions of the convenience of services. The authors conducted semi-structured interviews with 10 online consumers and validated the content with 3 experts on marketing in the retail and services sectors in order to develop the items for the scale. Thereafter, the authors identified the main dimensions through an exploratory factor analysis that the authors applied to an online survey with 116 respondents. Finally, the scale was validated through a confirmatory factor analysis of an online survey with 300 respondents. Findings Following the original work of Brown (1990), the authors define consumer perceptions of HD convenience as a multidimensional construct and measure each facet of its four dimensions, which are time, use, execution and acquisition. E-retailers and last-mile logistics providers could use the authors' proposed measurement tool to assess consumer perceptions of the convenience of HD. That assessment could generate a competitive advantage. Originality/value This study is original as the study deepens the existing understanding of consumer perceptions of the convenience of HD by CB in last-mile logistics. This study also develops a multidimensional measure that is based on an empirical study.

Suggested Citation

  • Jean-Eric Pelet & Basma Taieb & Rami Alkhudary, 2023. "Measuring consumer perceptions of home-delivery convenience – the case of cargo bikes [Mesurer les perceptions des consommateurs sur la commodité de la livraison à domicile - le cas des vélos cargo," Post-Print hal-04100575, HAL.
  • Handle: RePEc:hal:journl:hal-04100575
    DOI: 10.1108/IJRDM-11-2022-0483
    Note: View the original document on HAL open archive server: https://hal.science/hal-04100575
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    References listed on IDEAS

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