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Comparing Machine Learning Algorithms with or without Feature Extraction for DNA Classification

Other Quantitative Biology 2020-11-03 v1 Artificial Intelligence Machine Learning

Abstract

The classification of DNA sequences is a key research area in bioinformatics as it enables researchers to conduct genomic analysis and detect possible diseases. In this paper, three state-of-the-art algorithms, namely Convolutional Neural Networks, Deep Neural Networks, and N-gram Probabilistic Models, are used for the task of DNA classification. Furthermore, we introduce a novel feature extraction method based on the Levenshtein distance and randomly generated DNA sub-sequences to compute information-rich features from the DNA sequences. We also use an existing feature extraction method based on 3-grams to represent amino acids and combine both feature extraction methods with a multitude of machine learning algorithms. Four different data sets, each concerning viral diseases such as Covid-19, AIDS, Influenza, and Hepatitis C, are used for evaluating the different approaches. The results of the experiments show that all methods obtain high accuracies on the different DNA datasets. Furthermore, the domain-specific 3-gram feature extraction method leads in general to the best results in the experiments, while the newly proposed technique outperforms all other methods on the smallest Covid-19 dataset

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Cite

@article{arxiv.2011.00485,
  title  = {Comparing Machine Learning Algorithms with or without Feature Extraction for DNA Classification},
  author = {Xiangxie Zhang and Ben Beinke and Berlian Al Kindhi and Marco Wiering},
  journal= {arXiv preprint arXiv:2011.00485},
  year   = {2020}
}

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17 pages