Sample reduction strategies for protein secondary structure prediction

Basit öğe kaydını göster

dc.contributor.author Mostafa Sabzekar
dc.contributor.author Hasan Erbay
dc.contributor.author Zafer Aydın
dc.contributor.author Sema Atasever
dc.contributor.author Atasever, Sema
dc.date.accessioned 2021-07-16T13:09:17Z
dc.date.available 2021-07-16T13:09:17Z
dc.date.issued 2019-10-18
dc.identifier.citation Atasever, S.; Aydın, Z.; Erbay, H.; Sabzekar, M. Sample Reduction Strategies for Protein Secondary Structure Prediction. Appl. Sci. 2019, 9, 4429. https://doi.org/10.3390/app9204429 tr_TR
dc.identifier.uri http://hdl.handle.net/20.500.11787/3814
dc.description.abstract Predicting the secondary structure from protein sequence plays a crucial role in estimating the 3D structure, which has applications in drug design and in understanding the function of proteins. As new genes and proteins are discovered, the large size of the protein databases and datasets that can be used for training prediction models grows considerably. A two-stage hybrid classifier, which employs dynamic Bayesian networks and a support vector machine (SVM) has been shown to provide state-of-the-art prediction accuracy for protein secondary structure prediction. However, SVM is not efficient for large datasets due to the quadratic optimization involved in model training. In this paper, two techniques are implemented on CB513 benchmark for reducing the number of samples in the train set of the SVM. The first method randomly selects a fraction of data samples from the train set using a stratified selection strategy. This approach can remove approximately 50% of the data samples from the train set and reduce the model training time by 73.38% on average without decreasing the prediction accuracy significantly. The second method clusters the data samples by a hierarchical clustering algorithm and replaces the train set samples with nearest neighbors of the cluster centers in order to improve the training time. To cluster the feature vectors, the hierarchical clustering method is implemented, for which the number of clusters and the number of nearest neighbors are optimized as hyper-parameters by computing the prediction accuracy on validation sets. It is found that clustering can reduce the size of the train set by 26% without reducing the prediction accuracy. Among the clustering techniques Ward’s method provided the best accuracy on test data. tr_TR
dc.language.iso eng tr_TR
dc.publisher MDPI tr_TR
dc.relation.isversionof https://doi.org/10.3390/app9204429 tr_TR
dc.rights info:eu-repo/semantics/openAccess tr_TR
dc.subject Protein secondary structure prediction tr_TR
dc.subject Support vector machine tr_TR
dc.subject Bayesian network tr_TR
dc.subject Stratified sampling tr_TR
dc.subject Hierarchical clustering tr_TR
dc.title Sample reduction strategies for protein secondary structure prediction tr_TR
dc.type article tr_TR
dc.relation.journal Applied Sciences tr_TR
dc.contributor.department Nevşehir Hacı Bektaş Veli Üniversitesi, Mühendislik Mimarlık Fakültesi, Bilgisayar Mühendisliği Bölümü tr_TR
dc.contributor.authorID 0000-0002-2295-7917 tr_TR
dc.contributor.authorID 40206 tr_TR
dc.identifier.volume 9 tr_TR
dc.identifier.issue 20 tr_TR


Bu öğenin dosyaları

Bu öğe aşağıdaki koleksiyon(lar)da görünmektedir.

Basit öğe kaydını göster