Master in Business Analytics Thesis Defense: Afşin Sancaktaroğlu

A DATA-DRIVEN APPROACH TO REDUCE FOOD WASTE FOR A CONSUMER GOODS COMPANY

 

 

Afşin Sancaktaroğlu

 

Master in Business Analytics Thesis Defense

 

Date: June 29th, 2021, Tuesday @ 2 pm

 

Zoom link: https://sabanciuniv.zoom.us/j/6437648483

 

Keywords: food waste, newsvendor, perishable inventory, machine learning, quantile regression

 

Abstract:

Today, the prevention of food waste has become a very significant issue for a sus[1]tainable future. In this study, an inventory planning process that will minimize both inventories and lost sales costs and indirectly food waste was studied by analyzing the sales data of a perishable product whose demand is random. The newsvendor problem has been adopted because it is a widely used perishable inventory manage[1]ment problem where the demand is uncertain. The traditional newsvendor problem is implemented on the assumption that the demand distribution is known. How[1]ever, in reality the true demand distribution is unknown. Therefore, a data-driven and integrated solution method is used in our study by using machine learning models and quantile regression methods that do not require demand distribution knowledge. In the study where we use traditional demand forecasting methods and sequential demand estimation and optimization for comparison, we find that both the integrated demand estimation and optimization methods and machine learning methods perform better than their counterparts.