The aim of this paper is comparison of multivariate statistical analysis and machine learning methods based on the model used for the measurement of current and forecasting of the future customer profitability. Modern customer profitability analysis shows that customer-company relationship is burdened, beside costs of product, with many other different costs generated by business activities. Such costs generated by logistics, post-sale support, customer administration, sale, marketing etc. are allocated in customer’s base in non-linear way. Allocation can vary significantly from customer to customer, making the reason why each different customer’s monetary unit of revenue does not participate in profit in the same way. The research model us...
The ability to forecast customers’ future purchases, lifetime value, and churn are fundamental tasks...
This article explores the application of machine learning algorithms and big data analytics in predi...
Many supermarkets today do not have a strong forecast of their yearly sales. This is mostly due to t...
Abstract — It's critical for businesses to forecast their present revenue. By using prediction, busi...
Human beings have always been fascinated by the future. Humans have been inspired to innovate by the...
Retail companies, as production systems, must use their resources efficiently and make strategic dec...
Predictive sales analysis based on previous data is crucial for organizations to make educated decis...
PURPOSE: The aim of the article is to develop a system for analyzing processes and data from variou...
This thesis was commissioned by an accounting firm company which sells consultancy services for thei...
Context: The context of this research is to forecast the sales of truck componentsusing machine lear...
Abstract — For an online store to be successful, forecasting current purchases is essential. Owners ...
A comparison of a performance of various machine learning models to predict the sales components is ...
In this paper a comparative study is presented on dynamic prediction of customer profitability over ...
This study explores the application of machine learning techniques for business development, focusin...
The ability to forecast customers’ future purchases, lifetime value, and churn are fundamental tasks...
The ability to forecast customers’ future purchases, lifetime value, and churn are fundamental tasks...
This article explores the application of machine learning algorithms and big data analytics in predi...
Many supermarkets today do not have a strong forecast of their yearly sales. This is mostly due to t...
Abstract — It's critical for businesses to forecast their present revenue. By using prediction, busi...
Human beings have always been fascinated by the future. Humans have been inspired to innovate by the...
Retail companies, as production systems, must use their resources efficiently and make strategic dec...
Predictive sales analysis based on previous data is crucial for organizations to make educated decis...
PURPOSE: The aim of the article is to develop a system for analyzing processes and data from variou...
This thesis was commissioned by an accounting firm company which sells consultancy services for thei...
Context: The context of this research is to forecast the sales of truck componentsusing machine lear...
Abstract — For an online store to be successful, forecasting current purchases is essential. Owners ...
A comparison of a performance of various machine learning models to predict the sales components is ...
In this paper a comparative study is presented on dynamic prediction of customer profitability over ...
This study explores the application of machine learning techniques for business development, focusin...
The ability to forecast customers’ future purchases, lifetime value, and churn are fundamental tasks...
The ability to forecast customers’ future purchases, lifetime value, and churn are fundamental tasks...
This article explores the application of machine learning algorithms and big data analytics in predi...
Many supermarkets today do not have a strong forecast of their yearly sales. This is mostly due to t...