Customer response models have gained popularity due to their ability to significantly improve the likelihood of targeting the customers most likely to buy a product or a service. These models are built using databases of previous customers’ buying decisions. However, a smaller number of customers in these databases often bought the product or service than those who did not do so, resulting in unbalanced datasets. This problem is especially significant for online marketing campaigns when the class imbalance emerges due to many website sessions. Unbalanced datasets pose a specific challenge in data-mining modelling due to the inability of most of the algorithms to capture the characteristics of the classes that are unrepresented in the datase...
In database marketing, data mining has been used extensively to find the optimal customer targets so...
Many marketing problems require accurately predicting the outcome of a process or the future state o...
Data imbalance refers to a phenomena when one of the classes is much better represented in the datas...
Identifying customers who are more likely to respond to a product offering is an important issue in...
Identifying customers who are more likely to respond to a product offering is an important issue in...
Support Vector Machine (SVM) employs Structural Risk minimization (SRM) principle to generalize bett...
Support Vector Machine (SVM) employs Structural Risk minimization (SRM) principle to generalize bett...
[Abstract]: Various machine learning methods have made a rapid transition to response modeling in se...
Class imbalance is a major problem in machine learning. It occurs when the number of instances in th...
Response modeling, which predicts whether each customer will respond or how much each customer will ...
Direct marketing is an effort made by the Bank to increase sales of its products and services, but t...
Response modeling has become a key factor to direct marketing. In general, there are two stages in r...
The case involves the detection and qualification of the most relevant predictors for repeat-purchas...
The case involves the detection and qualification of the most relevant predictors for repeat-purchas...
textabstractMarketing problems often involve inary classification of customers into ``buyers'' versu...
In database marketing, data mining has been used extensively to find the optimal customer targets so...
Many marketing problems require accurately predicting the outcome of a process or the future state o...
Data imbalance refers to a phenomena when one of the classes is much better represented in the datas...
Identifying customers who are more likely to respond to a product offering is an important issue in...
Identifying customers who are more likely to respond to a product offering is an important issue in...
Support Vector Machine (SVM) employs Structural Risk minimization (SRM) principle to generalize bett...
Support Vector Machine (SVM) employs Structural Risk minimization (SRM) principle to generalize bett...
[Abstract]: Various machine learning methods have made a rapid transition to response modeling in se...
Class imbalance is a major problem in machine learning. It occurs when the number of instances in th...
Response modeling, which predicts whether each customer will respond or how much each customer will ...
Direct marketing is an effort made by the Bank to increase sales of its products and services, but t...
Response modeling has become a key factor to direct marketing. In general, there are two stages in r...
The case involves the detection and qualification of the most relevant predictors for repeat-purchas...
The case involves the detection and qualification of the most relevant predictors for repeat-purchas...
textabstractMarketing problems often involve inary classification of customers into ``buyers'' versu...
In database marketing, data mining has been used extensively to find the optimal customer targets so...
Many marketing problems require accurately predicting the outcome of a process or the future state o...
Data imbalance refers to a phenomena when one of the classes is much better represented in the datas...