Publication: Data-driven Business Intelligence Platform for Smart Retail Stores
Type:
Article
Date
2021-12-09
Journal Title
Journal ISSN
Volume Title
Publisher
2021 3rd International Conference on Advancements in Computing (ICAC), SLIIT
Abstract
The following research paper presents the design
and development of a data-driven decision support platform for
the effective management of contemporary retail stores in Sri
Lanka. This research has four core components, as a solution to
the identified shortcomings. These components are Customer
Relationship Management (CRM), Supplier Relationship
Management (SRM), Price and Demand estimation, and Branch
and Employee Performance Monitoring and Rating. The
developed system has features such as product replenishment
levels, decrease capital movement, reduced material wastage,
better item assortment, provide supplier service efficiency,
improve employee and branch-level efficiency, and elevated
client delivery.
This decision support system used Machine Learning (ML)
technologies such as LSTM (Long short-term memory) and
ARIMA (Autoregressive integrated moving average) models,
Regression, Classification, and Associate Rule Mining
Algorithms as key technologies. Data were obtained from
websites such as Kaggle and other free platforms for the analysis
of datasets. The resulting platform was able to perform with an
accuracy of over 90% for all four core components with the
tested data sets. The system presented would be particularly
beneficial for the top management in retail stores to make
effective and efficient decisions based on predictions and
analyzes provided by the system.
Description
Keywords
Business Intelligence, Retail store management Sri Lanka, Machine Learning, Smart retail-store, Data-driven
