While business-to-customer (B2C) companies, in the telecom sector for instance, have been making use of customer churn prediction for many years, churn prediction in the business-to-business (B2B) domain receives much less attention in existing literature. Nevertheless, B2B-specific characteristics, such as a lower number of customers with much higher transactional values, indicate the importance of identifying potentially churning customers. To achieve this, we implemented a prediction model for customer churn within a B2B software product and derived a model based on the results. For one, we present an approach that enables the mapping of customer- and end-user-data based on “customer phases” which allows the prediction model to take all ...
This paper presents a comparative study on machine learning methods as they are applied to product a...
The aim of this paper is to identify the most suitable model for churn prediction based on three dif...
Abstract Data mining techniques were used to investigate the use of knowledge extraction in predicti...
The purpose of this paper is to enhance current practices in business-to-business (B2B) customer chu...
It is now widely accepted that firms should direct more effort into retaining existing customers tha...
The rapid growth of technological infrastructure has changed the way companies do business. Subscrip...
This work focuses on one of the central topics in customer relationship management (CRM): transfer o...
Telecommunication organizations are confronting in expanding client administration weight as they la...
As markets become increasingly saturated, astute companies acknowledge that their business strategie...
In today’s increasingly saturated and highly competitive markets, customers have become more demandi...
The identification of retainable online non-contractual customers is pertinent for the operations an...
This master thesis investigates if customer churn can be predicted at the Swedish CRM-system provide...
One of the most valuable assets of any company is its customer; hence it is vital for a company to f...
Customer churn is one of the most important metrics for a growing business to evaluate. It is a busi...
The rapid growth of the market in every sector is leading to a bigger subscriber base for service pr...
This paper presents a comparative study on machine learning methods as they are applied to product a...
The aim of this paper is to identify the most suitable model for churn prediction based on three dif...
Abstract Data mining techniques were used to investigate the use of knowledge extraction in predicti...
The purpose of this paper is to enhance current practices in business-to-business (B2B) customer chu...
It is now widely accepted that firms should direct more effort into retaining existing customers tha...
The rapid growth of technological infrastructure has changed the way companies do business. Subscrip...
This work focuses on one of the central topics in customer relationship management (CRM): transfer o...
Telecommunication organizations are confronting in expanding client administration weight as they la...
As markets become increasingly saturated, astute companies acknowledge that their business strategie...
In today’s increasingly saturated and highly competitive markets, customers have become more demandi...
The identification of retainable online non-contractual customers is pertinent for the operations an...
This master thesis investigates if customer churn can be predicted at the Swedish CRM-system provide...
One of the most valuable assets of any company is its customer; hence it is vital for a company to f...
Customer churn is one of the most important metrics for a growing business to evaluate. It is a busi...
The rapid growth of the market in every sector is leading to a bigger subscriber base for service pr...
This paper presents a comparative study on machine learning methods as they are applied to product a...
The aim of this paper is to identify the most suitable model for churn prediction based on three dif...
Abstract Data mining techniques were used to investigate the use of knowledge extraction in predicti...