DocumentCode :
967702
Title :
A Lagrangian Approach for Multiple Personalized Campaigns
Author :
Kim, Yong-Hyuk ; Yoon, Yourim ; Moon, Byung-Ro
Author_Institution :
Kwangwoon Univ., Seoul
Volume :
20
Issue :
3
fYear :
2008
fDate :
3/1/2008 12:00:00 AM
Firstpage :
383
Lastpage :
396
Abstract :
The multicampaign assignment problem is a campaign model to overcome the multiple-recommendation problem that occurs when conducting several personalized campaigns simultaneously. In this paper, we propose a Lagrangian method for the problem. The original problem space is transformed to another simpler one by introducing Lagrange multipliers, which relax the constraints of the multicampaign assignment problem. When the Lagrangian vector is supplied, we can compute the optimal solution under this new environment in O(NK2) time, where N and K are the numbers of customers and campaigns, respectively. This is a linear-time method when the number of campaigns is constant. However, it is not easy to find a Lagrangian vector in exact accord with the given problem constraints. We thus combine the Lagrangian method with a genetic algorithm to find good near-feasible solutions. We verify the effectiveness of our evolutionary Lagrangian approach in both theoretical and experimental viewpoints. The suggested Lagrangian approach is practically attractive for large-scale real-world problems.
Keywords :
customer relationship management; genetic algorithms; information filters; marketing data processing; Lagrange multipliers; customer relationship management; genetic algorithm; multicampaign assignment problem; multiple personalized campaigns; multiple-recommendation problem; Constraint optimization; Customer satisfaction; Dynamic programming; Genetic algorithms; Heuristic algorithms; Lagrangian functions; Large-scale systems; Moon; Upper bound; Algorithm design and analysis; Algorithms for data and knowledge management; Constrained optimization; Electronic Commerce; Evolutionary computing and genetic algorithms; Marketing;
fLanguage :
English
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1041-4347
Type :
jour
DOI :
10.1109/TKDE.2007.190701
Filename :
4378374
Link To Document :
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