textabstractIn this paper various ensemble learning methods from machine learning and statistics are considered and applied to the customer choice modeling problem. The application of ensemble learning usually improves the prediction quality of flexible models like decision trees and thus leads to improved predictions. We give experimental results for two real-life marketing datasets using decision trees, ensemble versions of decision trees and the logistic regression model, which is a standard approach for this problem. The ensemble models are found to improve upon individual decision trees and outperform logistic regression. Next, an additive decomposition of the prediction error of a model, the bias/variance decomposition, is consider...
This article attempts to improve the performance of classification algorithms used in the bank custo...
Ensemble methods are popular learning methods that usually increase the predictive accuracy of a cla...
Recent expansions of technology led to growth and availability of different types of data. This, thu...
This thesis aims to provide a method for customer relationship management prediction to beat the in-...
Customer churn prediction is one of the most, important elements tents of a company's Customer Relat...
The aim of this thesis is to explore, understand and apply statistical learning methods based on dec...
The percentage of a company's total customer base that decides to switch service providers is referr...
Part 12: Applications of Machine Learning in Production ManagementInternational audiencePromotions a...
Customer clustering is an unsupervised machinelearning approach that groups diverse customers based ...
This study proposes a novel recommender system that uses data mining and multi-model ensemble techni...
AbstractPredicting customer defection is an important subject for companies producing cloud based so...
Abstract: We aim to build machine learning prediction models from current 2G and 3G customers and id...
Decision trees are among the most effective and interpretable classification algorithms while ensemb...
Abstract. Ensemble methods are able to improve the predictive performance of many base classifiers. ...
Ensemble methods are supervised learning algorithms that provide highly accurate solutions by train...
This article attempts to improve the performance of classification algorithms used in the bank custo...
Ensemble methods are popular learning methods that usually increase the predictive accuracy of a cla...
Recent expansions of technology led to growth and availability of different types of data. This, thu...
This thesis aims to provide a method for customer relationship management prediction to beat the in-...
Customer churn prediction is one of the most, important elements tents of a company's Customer Relat...
The aim of this thesis is to explore, understand and apply statistical learning methods based on dec...
The percentage of a company's total customer base that decides to switch service providers is referr...
Part 12: Applications of Machine Learning in Production ManagementInternational audiencePromotions a...
Customer clustering is an unsupervised machinelearning approach that groups diverse customers based ...
This study proposes a novel recommender system that uses data mining and multi-model ensemble techni...
AbstractPredicting customer defection is an important subject for companies producing cloud based so...
Abstract: We aim to build machine learning prediction models from current 2G and 3G customers and id...
Decision trees are among the most effective and interpretable classification algorithms while ensemb...
Abstract. Ensemble methods are able to improve the predictive performance of many base classifiers. ...
Ensemble methods are supervised learning algorithms that provide highly accurate solutions by train...
This article attempts to improve the performance of classification algorithms used in the bank custo...
Ensemble methods are popular learning methods that usually increase the predictive accuracy of a cla...
Recent expansions of technology led to growth and availability of different types of data. This, thu...