Publication: Price Optimisation and Management
Type:
Article
Date
2021-12-09
Journal Title
Journal ISSN
Volume Title
Publisher
2021 3rd International Conference on Advancements in Computing (ICAC), SLIIT
Abstract
One of the most crucial decisions a company makes
is its pricing strategy. When it comes to pricing, a company must
consider the present, as well as the future and the past pricing. It
enables a company to make sound judgments. In the process of
marketing products, price is the only factor that creates income;
everything else is a cost. Guessing at product pricing is a little like
throwing darts blindfolded; some will hit something, but it probably
will not be the dartboard. Large-scale enterprises throughout
the world still depend on Excel sheets with numerous manpower
or expensive pricing solutions. Expensive pricing systems are
difficult to implement for Medium and Large Sized Enterprises in
countries like Sri Lanka. Our goal in this research is to propose
an affordable, efficient, easy-to-use and secure solution which can
be implemented in Medium and Large Sized Enterprises in Sri
Lanka. Manufacturing cost, shipping cost, competitor analysis,
customer behaviour are taken as the root factors when deciding
the price. The proposed solution includes Machine Learning
components which is fed with historical data of these four factors
to predict the manufacturing cost, shipping cost, competitor price
and customer behavioural factors on a given date and as well
as an optimisation component which enables the opportunities
to minimise the cost and maximise the profit. The four Machine
Learning components are implemented using LSTM, ARIMA,
Facebook Prophet and a clustering model. The optimisation
model is implemented using linear programming optimise these
four components. A user-friendly web application is implemented
using MEAN stack with micro service architecture to access this.
Description
Keywords
Price optimisation and management, Machine Learning, Optimisation
