A 2-tuple Fuzzy Linguistic RFM Model and Its Implementation
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Materia
RFM model Fuzzy linguistic model 2-tuple linguistic model IBM SPSS Modeler
Date
2015Referencia bibliográfica
Carrasco, R. A., Francisca Blasco, M., & Herrera-Viedma, E. (2015). A 2-tuple fuzzy linguistic RFM model and its implementation. 3rd International Conference on Information Technology and Quantitative Management, Itqm 2015, 55, 1340-1347. [doi: 10.1016/j.procs.2015.07.118]
Résumé
RFM is a model used to analyze the behavior of customer by means of three variables: Recency, Frequency and Monetary.
The scores of these variables are expressed by an integer number, typically, in the range 1..5. The fuzzy linguistic approach
is a tool intended for modeling qualitative information in a problem. In this paper, we propose to manage these RFM scores
using the 2–tuple model which is a fuzzy linguistic model of information representation that carries out processes of
“computing with words” without the loss of information. The proposed model permits us an easy linguistic interpretability
and let us obtain a more precise representation of the RFM scores. Therefore, by interpreting these linguistic scores, decision
makers can effectively identify valuable customers and consequently develop more effective marketing strategy. Additionally,
we present an IBM SPSS Modeler implementation of this model. As a particular case study, we show an application example
in order to select the customer of a loyalty campaign.
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