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American Scientific Publishing Group

verified Journal

Fusion: Practice and Applications

ISSN
Online: 2692-4048 Print: 2770-0070
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Continuous publication

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Open access · Articles freely available online · APC applies after acceptance

Fusion: Practice and Applications
Full Length Article

Volume 1Issue 2PP: 49-65 • 2020

Diabetes prediction system using ml & dl techniques

Nandini Gupta 1* ,
Shubhangi Malik 1 ,
Hardik Chawla 1 ,
Surinder Kaur 1
1Bharati Vidyapeeth’s College of Engineering, GGSIPU, Delhi, INDIA
* Corresponding Author.
Received: January 02, 2020 Accepted: March 19, 2020

Abstract

Diabetes nowadays is a familiar and long-term disease. If a prediction is made early, better treatment can be provided. The preprocessing data approach is extremely useful in predicting the disease at an early stage. "Many tools are used in determining significant characteristics such as selection, Prediction, and association rule mining for diabetes. The principal component analysis method was used to select significant attributes. Our judgments denote a strong association of diabetes with body mass indicator (BMI) and glucose degree. The study implemented logistic regression, decision trees, and ANN techniques to process Pima Indian diabetes datasets and predict whether people at risk have diabetes. It was analyzed that random forest had the best accuracy of 80.52 %. Out of 500 negative records & 268 positive records, our model correctly analyzed 403 records & 216 records, respectively.

Keywords

Body Mass Indicator Artificial Neural Network Logistic Regression Random Forest

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Gupta, Nandini, Malik, Shubhangi, Chawla, Hardik, Kaur, Surinder. "Diabetes prediction system using ml & dl techniques." Fusion: Practice and Applications, vol. Volume 1, no. Issue 2, 2020, pp. 49-65. DOI: https://doi.org/10.54216/FPA.010201
Gupta, N., Malik, S., Chawla, H., Kaur, S. (2020). Diabetes prediction system using ml & dl techniques. Fusion: Practice and Applications, Volume 1(Issue 2), 49-65. DOI: https://doi.org/10.54216/FPA.010201
Gupta, Nandini, Malik, Shubhangi, Chawla, Hardik, Kaur, Surinder. "Diabetes prediction system using ml & dl techniques." Fusion: Practice and Applications Volume 1, no. Issue 2 (2020): 49-65. DOI: https://doi.org/10.54216/FPA.010201
Gupta, N., Malik, S., Chawla, H., Kaur, S. (2020) 'Diabetes prediction system using ml & dl techniques', Fusion: Practice and Applications, Volume 1(Issue 2), pp. 49-65. DOI: https://doi.org/10.54216/FPA.010201
Gupta N, Malik S, Chawla H, Kaur S. Diabetes prediction system using ml & dl techniques. Fusion: Practice and Applications. 2020;Volume 1(Issue 2):49-65. DOI: https://doi.org/10.54216/FPA.010201
N. Gupta, S. Malik, H. Chawla, S. Kaur, "Diabetes prediction system using ml & dl techniques," Fusion: Practice and Applications, vol. Volume 1, no. Issue 2, pp. 49-65, 2020. DOI: https://doi.org/10.54216/FPA.010201
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