Can Genetic Programming Perform Explainable Machine Learning for Bioinformatics?
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- @InProceedings{Hu:2019:GPTP,
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author = "Ting Hu",
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title = "Can Genetic Programming Perform Explainable Machine
Learning for Bioinformatics?",
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booktitle = "Genetic Programming Theory and Practice XVII",
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year = "2019",
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editor = "Wolfgang Banzhaf and Erik Goodman and
Leigh Sheneman and Leonardo Trujillo and Bill Worzel",
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pages = "63--77",
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address = "East Lansing, MI, USA",
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month = "16-19 " # may,
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publisher = "Springer",
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keywords = "genetic algorithms, genetic programming",
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isbn13 = "978-3-030-39957-3",
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DOI = "doi:10.1007/978-3-030-39958-0_4",
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abstract = "Although proven powerful in making predictions and
finding patterns, machine learning algorithms often
struggle to provide explanations and translational
knowledge when applied to many problems, especially in
biomedical sciences. This is often resulted by the
highly complex structure employed by machine learning
algorithms to represent and model the relationship of
the predictors and the response. The prediction
accuracy is increased at the cost of having a black-box
model that is not amenable for interpretation. Genetic
programming may provide a potential solution to
explainable machine learning for bioinformatics where
learned knowledge and patterns can be translated to
clinical actions. In this study, we employed an LGP
algorithm for a bioinformatics classification problem.
We developed feature selection analysis methods and
aimed at explaining which features are influential in
the prediction, and whether such an influence is
through individual effects or synergistic effects of
combining with other features.",
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notes = "Part of \cite{Banzhaf:2019:GPTP}, published after the
workshop",
- }
Genetic Programming entries for
Ting Hu
Citations