Publication Type : Journal Article
Publisher : Elsevier
Source : Informatics in Medicine Unlocked Volume 16, 2019, 100188
Url : https://www.sciencedirect.com/science/article/pii/S2352914819300632
Campus : Amaravati
School : School of Engineering
Department : Computer Science and Engineering
Year : 2019
Abstract : As the size of somatic genomes in biomedical repositories increases, it is essential to predict cancer related document sets using the machine learning models. Most of the traditional gene-based somatic cancer mining models are independent of somatic gene ranking and feature extraction due to high computational cost and memory for large datasets. A wide range of feature selection and feature extraction strategies are existing, and they are by and large generally utilized in various areas. Every one of these strategies plans to expel repetitive and irrelevant features from the trained datasets with the goal that the arrangement of new document data will be increasingly accurate. Data extraction is the activity of providing relevant data according to an information need from a collection of large resources of data
Cite this Research Publication : Thulasi Bikku , Radhika Paturi, " A novel somatic cancer gene-based biomedical document feature ranking and clustering model", Informatics in Medicine Unlocked Volume 16, 2019, 100188