Product pricing is an always present issue and there are a number of different traditional pricing strategies that can be applied depending on the situation. With an increasing amount of available data, as well as new improved methods to take advantage of this information, companies are presented with the opportunity to become more data driven in their decision making. The aim of this this thesis is to examine the possibilities of using statistical machine learning methods, more specifically neural networks, to predict what effect price changes have on sales numbers, and to identify what features are of importance when making these predictions. This would allow us to use a more data driven pricing strategy. The work is done in collaboration...
Retail companies, as production systems, must use their resources efficiently and make strategic dec...
Att förutspå aktiepriser är något som undersökts i hundra- tals år och kan användas som grund...
This paper discusses the possibilities of predicting changes in stock pricing at a high frequency ap...
Product pricing is an always present issue and there are a number of different traditional pricing s...
Companies in the spare part industry can implement a variety of different pricing techniques, which ...
Idag finns mängder av företag i olika branscher, stora som små, som vill förutsäga sin försäljning. ...
Thesis (MEng)--Stellenbosch University, 2022.ENGLISH ABSTRACT: Retailers face numerous challenges du...
The growth of e-commerce has been evident over the past years and for companies like Klarna that pro...
Econometric and predictive modeling techniques are two popular forecasting techniques. Both ofthese ...
The primary purpose of this thesis is to predict whether or not a customer will make a purchase from...
The accurate prediction of the price of products can be highlybeneficial for the procurers both busi...
This paper explores the viability of creating an artificial neural network for stock forecasting usi...
In recent years more companies have invested in electronic commerce as a result of more customers us...
The ability to predict sales of products in different stores as accurately as possible is critical t...
Supply chain management and logistics are two sectors currently experiencing a transformation thanks...
Retail companies, as production systems, must use their resources efficiently and make strategic dec...
Att förutspå aktiepriser är något som undersökts i hundra- tals år och kan användas som grund...
This paper discusses the possibilities of predicting changes in stock pricing at a high frequency ap...
Product pricing is an always present issue and there are a number of different traditional pricing s...
Companies in the spare part industry can implement a variety of different pricing techniques, which ...
Idag finns mängder av företag i olika branscher, stora som små, som vill förutsäga sin försäljning. ...
Thesis (MEng)--Stellenbosch University, 2022.ENGLISH ABSTRACT: Retailers face numerous challenges du...
The growth of e-commerce has been evident over the past years and for companies like Klarna that pro...
Econometric and predictive modeling techniques are two popular forecasting techniques. Both ofthese ...
The primary purpose of this thesis is to predict whether or not a customer will make a purchase from...
The accurate prediction of the price of products can be highlybeneficial for the procurers both busi...
This paper explores the viability of creating an artificial neural network for stock forecasting usi...
In recent years more companies have invested in electronic commerce as a result of more customers us...
The ability to predict sales of products in different stores as accurately as possible is critical t...
Supply chain management and logistics are two sectors currently experiencing a transformation thanks...
Retail companies, as production systems, must use their resources efficiently and make strategic dec...
Att förutspå aktiepriser är något som undersökts i hundra- tals år och kan användas som grund...
This paper discusses the possibilities of predicting changes in stock pricing at a high frequency ap...