چکیده
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In order to get a better understanding of G Protein-Coupled Receptors (GPCRs) biological
function, a precise classification of this kind of receptors in the databases is a real need. To
improve the classification accuracy, machine learning algorithms are encountered the major
challenge such as the extraction of valuable features. In this paper, we introduce
AttentionFam method, which utilizes a novel deep learning architecture to overcome the
challenges of prevailing approaches, which are domain specific and computationally
intensive. The AttentionFam employs advantages of attention mechanism and representation
learning to represent implicitly the features of both the aligned and unaligned GPCR protein
sequences. Therefore, feature extraction was carried out from raw protein sequences and thus
no sequence alignment methods such as MSA are needed. To evaluate the proposed approach,
an extensive set of experiments conducted. The results showed that our proposed method
achieved the good accuracy of 97.40%, compared to the state-of-the-art approaches. In
addition, it showed better performance in terms of time consumption and less memory for the
same data analysis.
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