Demand estimation and bundle price optimization : a data-driven approach
The bundling of multi-products at a fixed price has become a popular marketing strategy and attracted many researchers’ attention. This dissertation investigates the bundle pricing problem with discrete choice models. Two demand estimation methods, Random-Coefficients Logit Model and Marginal Dis...
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sg-ntu-dr.10356-771612023-02-28T23:16:51Z Demand estimation and bundle price optimization : a data-driven approach Lin, Ziwen Yan Zhenzhen School of Physical and Mathematical Sciences DRNTU::Science::Mathematics The bundling of multi-products at a fixed price has become a popular marketing strategy and attracted many researchers’ attention. This dissertation investigates the bundle pricing problem with discrete choice models. Two demand estimation methods, Random-Coefficients Logit Model and Marginal Distribution Model, are carefully studied and implemented into a real data set in the fast food industry to exhibit their prediction ability. To solve the bundle pricing problem, we employ a framework called “Marginal Estimations + Price Optimization” developed by Yan et al., which is based on Marginal Distribution Model. The bundle price optimization is demonstrated by implementing this framework into the aforementioned data set. Besides, a demand forecasting method based on choice models is proposed and used to predict the market shares of new bundles in the context of bundle design. Bachelor of Science in Mathematical Sciences 2019-05-14T08:50:27Z 2019-05-14T08:50:27Z 2019 Final Year Project (FYP) http://hdl.handle.net/10356/77161 en 41 p. application/pdf |
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DRNTU::Science::Mathematics Lin, Ziwen Demand estimation and bundle price optimization : a data-driven approach |
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The bundling of multi-products at a fixed price has become a popular marketing strategy and
attracted many researchers’ attention. This dissertation investigates the bundle pricing problem
with discrete choice models. Two demand estimation methods, Random-Coefficients Logit Model
and Marginal Distribution Model, are carefully studied and implemented into a real data set in
the fast food industry to exhibit their prediction ability. To solve the bundle pricing problem, we
employ a framework called “Marginal Estimations + Price Optimization” developed by Yan et al., which is based on Marginal Distribution Model. The bundle price optimization is demonstrated
by implementing this framework into the aforementioned data set. Besides, a demand forecasting
method based on choice models is proposed and used to predict the market shares of new bundles
in the context of bundle design. |
author2 |
Yan Zhenzhen |
author_facet |
Yan Zhenzhen Lin, Ziwen |
format |
Final Year Project |
author |
Lin, Ziwen |
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Lin, Ziwen |
title |
Demand estimation and bundle price optimization : a data-driven approach |
title_short |
Demand estimation and bundle price optimization : a data-driven approach |
title_full |
Demand estimation and bundle price optimization : a data-driven approach |
title_fullStr |
Demand estimation and bundle price optimization : a data-driven approach |
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Demand estimation and bundle price optimization : a data-driven approach |
title_sort |
demand estimation and bundle price optimization : a data-driven approach |
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2019 |
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http://hdl.handle.net/10356/77161 |
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1759856802336342016 |