IB9EO-15 Pricing Analytics
Introductory description
The module shall provide the conceptual understanding, practical skills and experience in using programming tools for the students to model and analyse demand, and to use the outcomes to optimise pricing or product availability decisions in an automated fashion.
Module aims
The module shall provide the conceptual understanding, practical skills and experience in using programming tools for the students to model and analyse demand, and to use the outcomes to optimise pricing or product availability decisions in an automated fashion. Pricing Analytics focuses on how a company should set and update pricing and product availability decisions across its various selling channels in order to maximise its profitability in an automated fashion. In other words, we are concerned with algorithms making real-time pricing decisions, rather than strategic pricing. The emphasis is on teaching advanced statistical and optimisation concepts and techniques that are highly relevant in practice. These concepts and techniques are taught in R with the aim of enabling students to be able to develop pricing solution prototypes for real-world problems.
Outline syllabus
This is an indicative module outline only to give an indication of the sort of topics that may be covered. Actual sessions held may differ.
The module makes heavy use of case studies and applied programming exercises in R to study the following topics:
Price differentiation, fences, fairness and acceptance.
Estimation of popular demand models.
Unconstraining of sales data.
Conjoint analysis.
Discrete choice model estimation.
Machine learning models in pricing.
Capacity control models (linear programming, dynamic programming, decomposition techniques).
Dynamic pricing: promotions, markdowns.
B2B customized pricing.
Learning outcomes
By the end of the module, students should be able to:
- Understand key concepts including the impact of constrained capacity, opportunity costs, customer response, demand uncertainty.
- Evaluate the critical differences among different types of opportunity and the approaches needed to address them.
Indicative reading list
Bodea, T. and Ferguson, M. Segmentation, Revenue Management, and Pricing Analytics. Routledge 2014.
Subject specific skills
Estimate various demand models in R.
Solve relevant price or capacity control optimisation models in R.
Be able to compare the performance of different decision policies in simulation studies.
Transferable skills
Numeracy and problem solving: model demand and formulate and solve price or capacity control decisions as constrained optimisation problems.
Study time
Type | Required |
---|---|
Lectures | 9 sessions of 2 hours (18%) |
Seminars | 9 sessions of 1 hour (9%) |
Private study | 74 hours (73%) |
Total | 101 hours |
Private study description
Private study to include preparation for lectures and seminars
Costs
No further costs have been identified for this module.
You do not need to pass all assessment components to pass the module.
Assessment group D1
Weighting | Study time | Eligible for self-certification | |
---|---|---|---|
Assessment component |
|||
Group assignment | 30% | 15 hours | No |
Group assignment (typically involving significant quantitative modelling) |
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Reassessment component is the same |
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Assessment component |
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Written Examination | 70% | 34 hours | No |
Reassessment component is the same |
Feedback on assessment
Automated feedback via my.wbs' questions and feedback feature. Feedback via my.wbs for each group assignment. Standard WBS exam feedback
Pre-requisites
MMORSE students don't require pre-requisites - covered in core modules in previous years
Courses
This module is Option list C for:
- Year 4 of USTA-G300 Undergraduate Master of Mathematics,Operational Research,Statistics and Economics