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Diabetes prediction using different machine learning approaches

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Diabetes prediction using different machine learning approaches

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Diabetes prediction using different machine learning approaches
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#PythonProjects #IEEEProejcts #JavaProejcts
Diabetes prediction using different machine learning approaches
Cloud Technologies providing Complete Solution for all
Academic Projects Final Year/Semester Student Projects
For More Details,
Contact:
Mobile:- +91 8121953811,
whatsapp:- +91 8522991105,
Email ID: cloudtechnologiesprojects@gmail.com

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Diabetes prediction using different machine learning approaches

  1. 1. Abstract The diabetes is one of lethal diseases in the world. It is additional a inventor of various varieties of disorders foe example: coronary failure, blindness, urinary organ diseases etc. In such case the patient is required to visit a diagnostic center, to get their reports after consultation. Due to every time they have to invest their time and currency. But with the growth of Machine Learning methods we have got the flexibility to search out an answer to the current issue, we have got advanced system mistreatment information processing that has the ability to forecast whether the patient has polygenic illness or not. Furthermore, forecasting the sickness initially ends up in providing the patients before it begins vital. Information withdrawal has the flexibility to remove unseen data from a large quantity of diabetes associated information. The aim of this analysis is to develop a system which might predict the diabetic risk level of a patient with a better accuracy. Model development is based on categorization methods as Decision Tree, ANN, Naive Bayes and SVM algorithms. Algorithms:  Decision Tree  Neural Networks  Naive Bayes  SVM algorithms Existing System: The prior diabetes isn't therefore great than the traditional worth. Diabetes is appreciations to either the exocrine gland not manufacturing plentiful hypoglycemic agent not responding properly to the hypoglycemic agent created. Various information mining algorithms presents different decision support systems for assisting health specialists. The effectiveness of the decision support system is recognized by its accuracy. Therefore, the objective is to build a decision support system to predict and diagnose a certain disease with extreme amount of precision. The AI consists of ML which is its subfield that resolves the real world difficulties by "providing learning capability to workstation without supplementary program writing.
  2. 2. Proposed System: The proposed system focuses using algorithms combinations shown above in the block diagram. The base classification algorithms are: Decision tree, Support Vector Machine, Naive Bayes and ANN for accuracy authentication. Fig 1. Block diagram of diabetes prediction system The dataset contains seven sixty eight instances and nine features. The dataset features are:  Total number of times pregnant  Glucose/sugar level  Diastolic Blood Pressure  Body Mass Index (BMI)
  3. 3.  Skin fold thickness in mm  Insulin value in 2 hour  Hereditary factor- Pedigree function  Age of patient in years Percentage split option is provided for training and testing. SYSTEM CONFIGURATION: Hardware requirements: Processer : Any Update Processer Ram : Min 4 GB Hard Disk : Min 100 GB Software requirements: Operating System : Windows family Technology : Python 3.6 IDE : PyCharm

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