Evaluating the potential of agent-based modelling to capture consumer grocery retail store choice behaviours
Authored by Alison Heppenstall, Charlotte Sturley, Andy Newing
Date Published: 2018
DOI: 10.1080/09593969.2017.1397046
Sponsors:
No sponsors listed
Platforms:
NetLogo
Model Documentation:
Other Narrative
Model Code URLs:
https://alisonheppenstall.co.uk/2017/01/18/prototype-abm-of-consumer-behaviour/
Abstract
Evolving consumer behaviours with regards to store and channel choice,
shopping frequency, shopping mission and spending heighten the need for
robust spatial modelling tools for use within retail analytics. In this
paper, we report on collaboration with a major UK grocery retailer to
assess the feasibility of modelling consumer store choice behaviours at
the level of the individual consumer. We benefit from very rare access
to our collaborating retailers' customer data which we use to develop a
proof-of-concept agent-based model (ABM). Utilising our collaborating
retailers' loyalty card database, we extract key consumer behaviours in
relation to shopping frequency, mission, store choice and spending. We
build these observed behaviours into our ABM, based on a simplified
urban environment, calibrated and validated against observed consumer
data. Our ABM is able to capture key spatiotemporal drivers of consumer
store choice behaviour at the individual level. Our findings could
afford new opportunities for spatial modelling within the retail sector,
enabling the complexity of consumer behaviours to be captured and
simulated within a novel modelling framework. We reflect on further
model development required for use in a commercial context for
location-based decision-making.
Tags
Agent-based modelling
Simulation
Dynamics
Entropy
Urban
Framework
Grocery retail
Consumer behaviour
Spatial
interaction model
Store choice