Work place: Chitkara University Institute of Engineering & Technology, Chitkara University, Punjab, India
E-mail: leema.nelson@gmail.com
Website:
Research Interests: Deep Learning
Biography
Dr. Leema Nelson is an Associate Professor in Research at Chitkara University Research and Innovation Network (CURIN), specializing in advanced research. She has completed her M.E Computer Science and Engineering (specialization in Knowledge Engineering) and Ph.D. in Computer Science and Engineering from College of Engineering Guindy, Anna University Chennai in 2018. She has seven years of research and eleven years of teaching experience at various engineering colleges. She has received college first-rank award for her graduate study. She selected one of the 25 doctoral candidates from all over India for practical-oriented training for new researchers in India in 2023 by the University of Cologne, Germany. She has six patent grants and ten published patents. Moreover, she has published 87 journals/international conferences, including SCI and Scopus Indexed. She has held multiple roles at various conferences, including serving as a Session Chair and Advisory Board Member. Her current research interests are concentrated in the fields of Machine Learning, Deep Learning, and Federated Learning.
By Shikha Prasher Leema Nelson Manal Gafar
DOI: https://doi.org/10.5815/ijitcs.2025.01.06, Pub. Date: 8 Feb. 2025
Polycystic Ovary Syndrome (PCOS) is a common endocrine disorder that affects women of reproductive age, leading to hormonal imbalances and ovarian dysfunction. Early detection and intervention are vital for effective management and prevention of complications. This study compares PCOS prediction using the XGBoost machine learning model against four traditional models: Logistic Regression (LR), Support Vector Machine (SVM), Decision Trees (DT), and Random Forests (RF). LR and SVM achieve accuracies of 95% and 96%, respectively, demonstrating strong predictive capabilities. In contrast, DT had a lower accuracy (82%), indicating limitations in PCOS data complexity. RF showed competitive performance with 96% accuracy, underscoring its effectiveness in ensemble learning. XGBoost achieves 98% accuracy with its parameter configuration. The scale pos weight parameter adjusts the positive class weight in imbalanced datasets, addressing under representation by assigning more weight to the minority class, and thereby improving the training focus. The gradient boosting framework incrementally builds models to address complex feature interactions and dependencies, enhancing the accuracy and stability in predicting intricate PCOS dataset. This analysis highlights the importance of advanced machine learning models such as XGBoost for accurate and reliable PCOS predictions. This research advances PCOS prediction, demonstrates the potential of machine learning in healthcare, and clarifies the strengths and limitations of different algorithms with complex medical datasets.
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