Abstract
Purpose
The purpose of this study is to present a systematic literature review of academic peer-reviewed articles in English published between 2005 and 2021. The articles were reviewed based on the following features: research topic, conceptual and theoretical characterization, artificial intelligence (AI) methods and techniques.
Design/methodology/approach
This study examines the extent to which AI features within academic research in retail industry and aims to consolidate existing knowledge, analyse the development on this topic, clarify key trends and highlight gaps in the scientific literature concerning the role of AI in retail.
Findings
The findings of this study indicate an increase in AI literature within the field of retailing in the past five years. However, this research field is fairly fragmented in scope and limited in methodologies, and it has several gaps. On the basis of a structured topic allocation, a total of eight priority topics were identified and highlighted that (1) optimizing the retail value chain and (2) improving customer expectations with the help of AI are key topics in published research in this field.
Research limitations/implications
This study is based on academic peer-reviewed articles published before July 2021; hence, scientific outputs published after the moment of writing have not been included.
Originality/value
This study contributes to the in-depth and systematic exploration of the extent to which retail scholars are aware of and working on AI. To the best of the author’s knowledge, this study is the first systematic literature review within retailing research dealing with AI technology.
Subject
Business and International Management,Management of Technology and Innovation
Reference161 articles.
1. Accenture (2020), “COVID-19: consumers change how they shop, work and live”, available at: www.accenture.com/us-en/insights/retail/coronavirus-consumer-behavior-research (accessed 6 July 2021).
2. AI-based chatbots in customer service and their effects on user compliance;Electronic Markets,2021
3. Assessing factors affecting intention to adopt ai and ml: the case of the Jordanian retail industry;MENDEL,2020
4. A genetic algorithm for supermarket location problem;Assembly Automation,2015
5. An adaptive decision support system for last mile logistics in e-commerce: a study on online grocery shopping;International Journal of Decision Support System Technology,2013
Cited by
6 articles.
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