

ANALYSIS OF DATAMINING ALGORITHMS FOR DIABETES PREDICTION LEVELS
Abstract
Diabetes an illness that can cause a worldwide wellbeing issue concurring to the universal diabetes league. By 2035 382 million individuals around the world will have diabetes and this number will twofold to 592 million. The body changes over nourishment into sugar or glucose and at this time our pancreas has to discharge affront which is critical for the release of glucose into cells sort 1 and 2. Diabetes are the foremost common maladies gestational diabetes and other maladies that happen amid pregnancy. Machine learning may be a modern wonder within the writing where machine learning learns from involvement the point of the extend is to combine the comes about of different strategies with machine learning to make a predictive work impact of early diabetes such as k-z closest neighbor. Calculated relapse back vector machine and irregular timberland utilizing choice trees each calculation calculates the precision of the demonstrate and after that employments the demonstrate with higher individuals from the show to foresee diabetes catchphrase machine learning diabetes choice tree k-nearest neighbor calculated relapse bolster vector machine exactness.
References
Bekele, A., "Machine learning techniques to predict daily rainfall amount," Journal of Big Data, vol. 9, no. 3, pp. 45–67, 2022.
Mosavi, A., and Toth, B., "Rainfall prediction system using machine learning fusion for smart cities," Sensors, vol. 22, no. 9,
pp. 3504–3515, 2022.
Adaryani, M., "A hybrid model using XGBoost and ensemble methods for rainfall prediction," Meteorological Algorithms and Applications, vol. 14, no. 1, pp. 89–102, 2021.
Rahman, K., and Singh, P., "Improving rainfall prediction accuracy using LSTM networks," Climatic Modelling Review, vol. 15, no. 8, pp. 345–360, 2022.
Balamurugan, G., and Manojkumar, S., "Comparison of
machine learning and traditional models for rainfall prediction," International Journal of Scientific and Technology Research, vol. 9, no. 6, pp. 442–450, 2020.
Nguyen, T., Kim, Y., and Lee, H., "Neural network and fuzzy logic hybrid models for rainfall forecasting," Computational
Intelligence in Environmental Modelling, vol. 11, no. 7, pp. 312–328, 2021.
Wu, J., Zhang, L., and Chen, Q., "Integrating K-means clustering and machine learning classifiers for precipitation
prediction," Advances in Meteorological Techniques, vol. 8, no. 4,
pp. 456–470, 2021.
Chen, J., and Wei, X., "Rainfall prediction using hybrid decision trees and neural networks," Sustainable Meteorological Practices, vol. 13, no. 2, pp. 210–225, 2020.
Singh, A., and Das, R., "Comparison of SVM and ANN for predicting rainfall in complex terrains," Journal of Meteorological Research, vol. 15, no. 5, pp. 260–278, 2021.
Wu, Y., and Zhao, L., "Applications of deep learning in short-term rainfall forecasting," Applied Weather Prediction Models, vol. 18, no. 3, pp. 325–340, 2022.
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