Targeted marketing has grown in popularity in recent years, as well as recognizing when a consumer will desire a commodity may be extremely important to a business. Predicting this demand, however, is a complex procedure. Businesses, promoters/marketers, and sellers are using machine learning approaches to execute buyer prediction. This study focuses on when a customer would buy fast-moving retail merchandise by evaluating a customer’s purchase history at partner vendors. The projections should be used to customize special discounts for customers who are about to make a purchase. In addition, buying behavior is a set of consumption habits that can be analyzed to help in predicting the needs of specific target audience. Knowing consumption h...
In our day-to-day life, everyone settles on choices on whether to purchase an item or not. In a coup...
This thesis investigates the application of computational statistics and Machine Learning in consume...
Abstract—Machine learning algorithms forecast the current output using historical data as input. For...
Every day consumers make decisions on whether or not to buy a product. In some cases the decision is...
The deployment of self-learning computer algorithms that can automatically enhance their performance...
This thesis was commissioned by an accounting firm company which sells consultancy services for thei...
Abstract — For an online store to be successful, forecasting current purchases is essential. Owners ...
Targeted marketing has become more popular over the last few years, and knowing when a customer will...
In this report, we plan to use commonly available datasets from Kaggle (PATEL, 2021), which is basic...
Under the data-driven environment, market competition is increasingly fierce. Enterprises begin to p...
Under the data-driven environment, market competition is increasingly fierce. Enterprises begin to p...
Consumers are the most important asset of any organization. The commercial activity of an organizati...
AbstractPricing in the online world is highly transparent & can be a primary driver for online purch...
Major industries today are dealing with large amount of data even small shops are no oblivion for th...
This research comprises two essays on the development and application of machine learning models for...
In our day-to-day life, everyone settles on choices on whether to purchase an item or not. In a coup...
This thesis investigates the application of computational statistics and Machine Learning in consume...
Abstract—Machine learning algorithms forecast the current output using historical data as input. For...
Every day consumers make decisions on whether or not to buy a product. In some cases the decision is...
The deployment of self-learning computer algorithms that can automatically enhance their performance...
This thesis was commissioned by an accounting firm company which sells consultancy services for thei...
Abstract — For an online store to be successful, forecasting current purchases is essential. Owners ...
Targeted marketing has become more popular over the last few years, and knowing when a customer will...
In this report, we plan to use commonly available datasets from Kaggle (PATEL, 2021), which is basic...
Under the data-driven environment, market competition is increasingly fierce. Enterprises begin to p...
Under the data-driven environment, market competition is increasingly fierce. Enterprises begin to p...
Consumers are the most important asset of any organization. The commercial activity of an organizati...
AbstractPricing in the online world is highly transparent & can be a primary driver for online purch...
Major industries today are dealing with large amount of data even small shops are no oblivion for th...
This research comprises two essays on the development and application of machine learning models for...
In our day-to-day life, everyone settles on choices on whether to purchase an item or not. In a coup...
This thesis investigates the application of computational statistics and Machine Learning in consume...
Abstract—Machine learning algorithms forecast the current output using historical data as input. For...