A Multi-objective Meta-Analytic Method for Customer Churn Prediction
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InCollection{Haque2019,
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author = "Mohammad Nazmul Haque and Natalie Jane {de Vries} and
Pablo Moscato",
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title = "A Multi-objective Meta-Analytic Method for Customer
Churn Prediction",
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booktitle = "Business and Consumer Analytics: New Ideas",
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publisher = "Springer International Publishing",
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year = "2019",
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editor = "Pablo Moscato and Natalie Jane {de Vries}",
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chapter = "20",
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pages = "781--813",
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keywords = "genetic algorithms, genetic programming, Churn,
Customer churn prediction, Ensemble of classifiers,
Ensemble learning, Multi-objective ensemble, NSGA-II
algorithm, Symbolic regression",
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isbn13 = "978-3-030-06222-4",
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DOI = "doi:10.1007/978-3-030-06222-4_20",
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abstract = "The term metaheuristic was introduced in 1986 as a way
to label a higher-level procedure designed to guide a
lower-level heuristic or algorithm to find solutions
for tasks posed as mathematical optimization problems.
Analogously, the term meta-analytics can be used to
refer to a higher-level procedure that guides ad hoc
data analysis techniques. Heuristics that guide
ensemble learning of heterogeneous classifier systems
would be one of those procedures that can be referred
to as meta-analytics. In general, researchers use
single-objective approaches for ensemble learning. In
this contribution we investigate the use of a
multi-objective evolutionary algorithm and we apply it
to the problem of Customer churn prediction Prediction
customer churn customer churn prediction. We compare
the results with those of a symbolic regression-based
approach. Each has its own merits. While the
multi-objective approach excels at prediction, it lacks
in interpretability for business insights. Oppositely,
the symbolic regression-based approach has lower
Accuracy accuracy but can give business analysts some
actionable tools. Depending on the nature of the
business scenario, we recommend that both be employed
together to maximise our understanding of consumer
behaviour. High-quality individualised prediction based
on multi-objective optimization can help a company to
direct a message to a particular individual, while the
results of a global symbolic regression-based approach
may help large marketing campaigns or big changes in
policies, cost structures and/or product offerings.",
- }
Genetic Programming entries for
Mohammad Nazmul Haque
Natalie Jane de Vries
Pablo Moscato
Citations