Pilli. Lalitha Kumari

Work place: Department of CSE, Malla Reddy Institute of Technology, Secunderabad, Telangana, India

E-mail: lalithakumari4@gmail.com

Website:

Research Interests: Computational Science and Engineering, Software Engineering, Computer systems and computational processes, Computational Learning Theory, Computer Architecture and Organization, Data Mining, Data Structures and Algorithms

Biography

Dr. Pilli. Lalitha Kumari is working as a Professor in the Computer Science and Engineering Department at Visakha Institute of Engineering & Technology, Narava, Visakhapatnam. She has been published more than 20 International Journals and Conferences. She is a member of various academic societies. She has demonstrated herself as an extraordinary research scholar during her doctoral-level studies – disciplined and dedicated. As an unwaveringly dedicated researcher, she has published research papers in various reputed International Journals indexed with Web of Science, SCOPUS, ACM Digital library, and flagship International Conferences like IEEE. She takes a multidisciplinary approach that encompasses the fields of Data Mining, Data Engineering, Machine Learning, Computational Intelligence, Software Engineering, Computer Networks, and Digital Image Processing. She has also published Five National and International Patents in Data Mining, Machine Learning, and Cloud Computing.

Author Articles
A Novel Hierarchical Document Clustering Framework on Large TREC Biomedical Documents

By Pilli. Lalitha Kumari M. Jeeva Ch. Satyanarayana

DOI: https://doi.org/10.5815/ijitcs.2022.03.02, Pub. Date: 8 Jun. 2022

The growth of microblogging sites such as Biomedical, biomedical, defect, or bug databases makes it difficult for web users to share and express their context identification of sequential key phrases and their categories on text clustering applications. In the traditional document classification and clustering models, the features associated with TREC texts are more complex to analyze. Finding relevant feature-based key phrase patterns in the large collection of unstructured documents is becoming increasingly difficult, as the repository's size increases. The purpose of this study is to develop and implement a new hierarchical document clustering framework on a large TREC data repository. A document feature selection and clustered model are used to identify and extract MeSH related documents from TREC biomedical clinical benchmark datasets. Efficiencies of the proposed model are indicated in terms of computational memory, accuracy, and error rate, as demonstrated by experimental results.

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