For decades, Out-of-Stock (OOS) events have been a problem for retailers and manufacturers. In grocery retailing, an OOS event is used to characterize the condition in which customers do not find a certain commodity while attempting to buy it. This paper focuses on addressing this problem from a manufacturer’s perspective, conducting a case study in a retail packaged foods manufacturing company located in Latin America. We developed two machine learning based systems to detect OOS events automatically. The first is based on a single Random Forest classifier with balanced data, and the second is an ensemble of six different classification algorithms. We used transactional data from the manufacturer information system and physical audits. The...
Food sales prediction means how to obtain future results of sales of companies. The purpose of this ...
understanding the purchasing patterns of various consumers (Dependent variable) In relation to vario...
This study intends to investigate several machine learning algorithms for sales forecasting strategi...
An out-of-stock (OOS) event is referred as one of the biggest supply-chain management problem concer...
During the recent years of slow economic growth, companies have found it increasingly important to d...
The year 2020 marked an unprecedented worldwide growth in e-commerce driven mainly by the COVID- 19 ...
On-shelf availability (OSA) is key in the Consumer Packaged Goods (CPG) industry. In this project, o...
Retail companies, as production systems, must use their resources efficiently and make strategic dec...
Abstract — For an online store to be successful, forecasting current purchases is essential. Owners ...
The problem of products missing from the shelf is a major one in the grocery retail sector, as it le...
Thesis (S.M.)--Massachusetts Institute of Technology, Computation for Design and Optimization Progra...
Prediction using machine learning algorithms is not well adapted in many parts of the business decis...
Many supermarkets today do not have a strong forecast of their yearly sales. This is mostly due to t...
Abstract— Machine learning is an area of research focused on comprehending and developing "learning"...
Cahier de recherche du Groupe HECBoth retailers and manufacturers see in-store out-of-stock events (...
Food sales prediction means how to obtain future results of sales of companies. The purpose of this ...
understanding the purchasing patterns of various consumers (Dependent variable) In relation to vario...
This study intends to investigate several machine learning algorithms for sales forecasting strategi...
An out-of-stock (OOS) event is referred as one of the biggest supply-chain management problem concer...
During the recent years of slow economic growth, companies have found it increasingly important to d...
The year 2020 marked an unprecedented worldwide growth in e-commerce driven mainly by the COVID- 19 ...
On-shelf availability (OSA) is key in the Consumer Packaged Goods (CPG) industry. In this project, o...
Retail companies, as production systems, must use their resources efficiently and make strategic dec...
Abstract — For an online store to be successful, forecasting current purchases is essential. Owners ...
The problem of products missing from the shelf is a major one in the grocery retail sector, as it le...
Thesis (S.M.)--Massachusetts Institute of Technology, Computation for Design and Optimization Progra...
Prediction using machine learning algorithms is not well adapted in many parts of the business decis...
Many supermarkets today do not have a strong forecast of their yearly sales. This is mostly due to t...
Abstract— Machine learning is an area of research focused on comprehending and developing "learning"...
Cahier de recherche du Groupe HECBoth retailers and manufacturers see in-store out-of-stock events (...
Food sales prediction means how to obtain future results of sales of companies. The purpose of this ...
understanding the purchasing patterns of various consumers (Dependent variable) In relation to vario...
This study intends to investigate several machine learning algorithms for sales forecasting strategi...