ORCID

Abstract

PurposePrior Big Data and fraud research emphasises technical detection or generic analytics, offering limited empirical insight into how Big Data is operationalised as practices and controls in e-retail fraud prevention. This study examines how e-retail firms translate analytics capabilities into fraud prevention practices and controls.Design/methodology/approachThe study draws on 32 semi-structured interviews across 18 e-retail organisations and applies abductive thematic analysis to examine how Big Data resources are translated into fraud prevention practices and controls.FindingsFindings reveal that Big Data enables fraud prevention not merely through detection technologies, but through two empirically derived transformation practices: (1) Localised Exploitation, which translates complex analytics into simplified, role-specific reporting routines; and (2) Personalised Care Practice, which develops and cross-references business-unit-specific fraud risk profiles to identify emerging threats. These practices generate data-driven fraud controls by strengthening technical safeguards, refining formal policies, streamlining fraud reporting and reinforcing behavioural controls through analytics-informed training. Their effectiveness, however, is constrained by regulatory complexity, limited inter-organisational knowledge sharing and reliance on outsourced analytics providers.Originality/valueThis study makes three key empirical contributions. First, it moves beyond conceptual Big Data research by showing how analytics capabilities are enacted as organisational practices in e-retail fraud prevention. Second, it advances theory by integrating the Practice-Based View and the Balanced Control Paradigm into an empirically grounded Integrated Big Data-Enabled Fraud Prevention (IBDEFP) model. Third, it provides actionable insights into designing analytics, controls and human engagement to strengthen adaptive fraud management in volatile digital environments.

Publication Date

2026-04-17

Publication Title

Journal of Enterprise Information Management

ISSN

1741-0398

Acceptance Date

2026-02-23

Deposit Date

2026-04-16

Keywords

Big data, Cyber Fraud Prevention Management, E-Retail

First Page

1

Last Page

31

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