Many supermarkets today do not have a strong forecast of their yearly sales. This is mostly due to the lack of the skills, resources and knowledge to make sales estimation. At best, most supermarket and chain store use adhoc tools and processes to analyze and predict sales for the coming year. The use of traditional statistical method to forecast supermarket sales has met a lot of challenges unaddressed and mostly results in the creation of predictive models that perform poorly. The era of big data coupled with access to massive compute power has made machine learning model the best for sales forecast. In this paper, we investigated the forecasting of sales with three machine learning algorithms and compare their predictive ability. T...
This research is focused on finding an optimal machine learning solution for computation of a sales ...
Data mining is an in-depth study of enormous amounts of data present in an organization or instituti...
Abstract—Machine learning algorithms forecast the current output using historical data as input. For...
Predictive sales analysis based on previous data is crucial for organizations to make educated decis...
Abstract: The amounts of data predicted to increase at an exponential rate in the future. The modifi...
This study intends to investigate several machine learning algorithms for sales forecasting strategi...
Abstract— Machine learning is an area of research focused on comprehending and developing "learning"...
Human beings have always been fascinated by the future. Humans have been inspired to innovate by the...
A comparison of a performance of various machine learning models to predict the sales components is ...
Abstract—The commercial enterprise agencies relies upon on information base and sales traits predict...
Retail companies, as production systems, must use their resources efficiently and make strategic dec...
A thorough comparison of several machine learning methods is provided in this paper, including gradi...
Organizations engaged in business, regardless of the industry in which they operate, must be able to...
Abstract — For an online store to be successful, forecasting current purchases is essential. Owners ...
ABSTRACT By applying RapidMiner workflows has been processed a dataset originated from different da...
This research is focused on finding an optimal machine learning solution for computation of a sales ...
Data mining is an in-depth study of enormous amounts of data present in an organization or instituti...
Abstract—Machine learning algorithms forecast the current output using historical data as input. For...
Predictive sales analysis based on previous data is crucial for organizations to make educated decis...
Abstract: The amounts of data predicted to increase at an exponential rate in the future. The modifi...
This study intends to investigate several machine learning algorithms for sales forecasting strategi...
Abstract— Machine learning is an area of research focused on comprehending and developing "learning"...
Human beings have always been fascinated by the future. Humans have been inspired to innovate by the...
A comparison of a performance of various machine learning models to predict the sales components is ...
Abstract—The commercial enterprise agencies relies upon on information base and sales traits predict...
Retail companies, as production systems, must use their resources efficiently and make strategic dec...
A thorough comparison of several machine learning methods is provided in this paper, including gradi...
Organizations engaged in business, regardless of the industry in which they operate, must be able to...
Abstract — For an online store to be successful, forecasting current purchases is essential. Owners ...
ABSTRACT By applying RapidMiner workflows has been processed a dataset originated from different da...
This research is focused on finding an optimal machine learning solution for computation of a sales ...
Data mining is an in-depth study of enormous amounts of data present in an organization or instituti...
Abstract—Machine learning algorithms forecast the current output using historical data as input. For...