International Journal on Science and Technology

E-ISSN: 2229-7677     Impact Factor: 9.88

A Widely Indexed Open Access Peer Reviewed Multidisciplinary Bi-monthly Scholarly International Journal

Call for Paper Volume 17 Issue 1 January-March 2026 Submit your research before last 3 days of March to publish your research paper in the issue of January-March.

Advanced Active Learning for Data-Efficient Fetal Health Classification Using XGBoost

Author(s) ms Repalle Snehalatha
Country India
Abstract Ensuring safe pregnancy and reducing maternal and infant mortality rates
require early prediction of fetal health. The application of machine learning
algorithms in monitoring fetal health helps to improve the chances of timely
intervention and better outcomes in the event of any possible health issues in
fetuses. Existing studies offered to help this issue, typically by training models
using a significant portion of the dataset, ranging mainly above 70%. The only
existing active learning method in this field employs around 41% training
samples to achieve 98% accuracy. This work presents a novel active learning
technique to identify the most informative data samples to train a model,
leading to high accuracy with a limited number of training samples. It employs
a novel query function built upon uncertainty and diversity criteria which are
derived based on properties of XGBoost classifier and distance from each other.
For deriving uncertainty criterion the soft probabilities obtained for the
unlabeled samples are used, while the distance among the uncertain samples
in feature space is utilized for deriving diversity criterion. The proposed
approach shows superior performance compared to all state-of-the-art
methods. Through analysis and experimentation, the proposed solution
achieves an accuracy greater than 99% using less than 20% of the dataset for
training. This shows its efficacy and potential in the monitoring of fetal health.
Keywords cardiotocograph, XGBoost, generalizability, fetal health, optimization.
Field Computer Applications
Published In Volume 17, Issue 1, January-March 2026
Published On 2026-03-27

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