IBM Final Project Machine Learning Save

Final project of IBM's course https://www.coursera.org/learn/machine-learning-with-python on coursera

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IBM-final-project-Machine-Learning

Final project of IBM's course https://www.coursera.org/learn/machine-learning-with-python on coursera

A simple comparison between KNN,SVM,Decision Tree and Logistic Regression models on a given data set of loans records. final results:

Algorithm Jaccard F1-score LogLoss
KNN 0.7407 0.7144 NA
Decision Tree 0.7592 0.7618 NA
SVM 0.7592 0.6959 NA
LogisticRegression 0.7777 0.7089 0.4947

Please read the note book for information about the data and implementation of classifiers used.

Please note that results may be improved by engineering new features or using different hyper parameters ,I have tried just to create a simple prediction only for demonstrating use of different classifiers from scikit learn library .

Open Source Agenda is not affiliated with "IBM Final Project Machine Learning" Project. README Source: Moeinh77/IBM-final-project-Machine-Learning

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