Direct marketing forecasting models have focused on estimating the response probabilities of consumer purchases and neglected the profitability of customers. This study proposes a method of constrained optimization using genetic algorithm to maximize the profitability at the top deciles of a customer list. We apply this method to a direct marketing dataset using tenfold cross-validation. The results from this method compare favorably with the unconstrained model and that of the DMAX model. The method of constrained optimization has distinctive advantages in augmenting the profitability of direct marketing campaigns. We explore the implications for targeted marketing problems and for assisting management decision-making and augmenting profit...
With the advent of one-to-one marketing media, e.g.targeted direct mail or internet marketing, the o...
Abstract. Creating a new product which dominates all its competitors is one of the main ob-jectives ...
Many real-world search and optimization problems involve inequality and/or equality constraints and ...
To maximize sales or profit given a fixed budget, direct marketing targets a preset top percentage o...
Aims to show the potential benefits associated with the application of genetic algorithms (GAs) to t...
In this paper we show how three relatively unknown optimization techniques could be used to solve im...
This paper presents an optimization model for the selection of sets of clients that will receive an ...
This paper develops an optimization model that captures the annual planning of product-targeting cam...
Optimization methods are widely used in marketing, and in certain tourism applications, but appear t...
We consider a firm that markets, procures, and delivers a good with a single selling season in a num...
Customer knowledge is one of the main issues in customer relationship management (CRM). It is vital...
With the advent of one-to-one marketing media, e.g. targeted direct mail or internet marketing, the ...
Abstract. This paper develops an optimization model that captures the annual planning of product-tar...
This paper presents a new approach of genetic algorithm (GA) to solve the constrained optimization p...
A directed searching optimization algorithm (DSO) is proposed to solve constrained optimization prob...
With the advent of one-to-one marketing media, e.g.targeted direct mail or internet marketing, the o...
Abstract. Creating a new product which dominates all its competitors is one of the main ob-jectives ...
Many real-world search and optimization problems involve inequality and/or equality constraints and ...
To maximize sales or profit given a fixed budget, direct marketing targets a preset top percentage o...
Aims to show the potential benefits associated with the application of genetic algorithms (GAs) to t...
In this paper we show how three relatively unknown optimization techniques could be used to solve im...
This paper presents an optimization model for the selection of sets of clients that will receive an ...
This paper develops an optimization model that captures the annual planning of product-targeting cam...
Optimization methods are widely used in marketing, and in certain tourism applications, but appear t...
We consider a firm that markets, procures, and delivers a good with a single selling season in a num...
Customer knowledge is one of the main issues in customer relationship management (CRM). It is vital...
With the advent of one-to-one marketing media, e.g. targeted direct mail or internet marketing, the ...
Abstract. This paper develops an optimization model that captures the annual planning of product-tar...
This paper presents a new approach of genetic algorithm (GA) to solve the constrained optimization p...
A directed searching optimization algorithm (DSO) is proposed to solve constrained optimization prob...
With the advent of one-to-one marketing media, e.g.targeted direct mail or internet marketing, the o...
Abstract. Creating a new product which dominates all its competitors is one of the main ob-jectives ...
Many real-world search and optimization problems involve inequality and/or equality constraints and ...