Predicting customer satisfaction based on online reviews and hybrid ensemble genetic programming algorithms
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gp-bibliography.bib Revision:1.8051
- @Article{CHAN:2020:EAAI,
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author = "Kit Yan Chan and C. K. Kwong and Gul E. Kremer",
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title = "Predicting customer satisfaction based on online
reviews and hybrid ensemble genetic programming
algorithms",
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journal = "Engineering Applications of Artificial Intelligence",
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volume = "95",
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pages = "103902",
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year = "2020",
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ISSN = "0952-1976",
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DOI = "doi:10.1016/j.engappai.2020.103902",
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URL = "http://www.sciencedirect.com/science/article/pii/S0952197620302396",
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keywords = "genetic algorithms, genetic programming, New product
development, Social media, Online customer reviews,
Machine learning, Committee member selection",
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abstract = "Determination of the design attribute settings of a
new product is essential for maximizing customer
satisfaction. A model is necessary to illustrate the
relation between the design attributes and dimensions
of customer satisfaction such as product performance,
affection and quality. The model is commonly developed
based on customer survey data collected from
questionnaires or interviews which require a long
deployment time; hence the developed model cannot
completely reflect the current marketplace. In this
paper, a framework is proposed based on online reviews
in which past and current customer opinions are
included to develop the model. The proposed framework
overcomes the limitation of the aforementioned
approaches in which the developed models are not
up-to-date. Indeed, the proposed framework develops
models based on machine learning technologies, namely
genetic programming, which has better generalization
capabilities than classical approaches, and has higher
transparency capabilities than implicit modelling
approaches. To further enhance the prediction
capability, committee member selection is proposed. The
proposed selection method improves the currently used
selection method which trains several models and only
selects the best one. The proposed selection method
generates a hybrid model which integrates the
predictions of the generated models. Each prediction is
weighted by how likely the prediction is agreed by
others. The proposed framework is implemented on
electric hair dryer design of which online reviews in
amazon.com are used. Experimental results show that
models with more accurate prediction capabilities can
be generated by the proposed framework",
- }
Genetic Programming entries for
Kit Yan Chan
Che Kit Kwong
Gul E Kremer
Citations