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create a machine learning model to predict, if a kickstarter project is going to be successful or not based on chosen features.

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FirasHabri/Kickstarter_classification

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Kickstarter_classification

create a machine learning model to predict, if a kickstarter project is going to be successful or not based on chosen features.

Overview :

This notebook is to find out, if there are any features, which influence the Kickstarter project to succeed or fail. That is why we are going to focus only data which has state 'successful' or 'failed'.

Content:

  • Loading Modules
  • Loading the data set you can see it at "https://www.kaggle.com/kemical/kickstarter-projects"
  • Data exploration
  • Data preparation
  • Model Selection
  • Principal Component Analysis (PCA) "used for feature selection and dimensionality reduction"
  • Model evaluation

Results:

Model Score
Multilayer Perceptron 68.6
KNN 67.7
GradientBoostingClassifier 67.3
BaggingClassifier 66.4
Logistic Regression 64.3
Bagging PCA 64.3
AdaBoostClassifier 63.7
Linear Support Vector Machine 63.3
Random Forest 62.4
Radial Kernel SVMDecision Tree 60.8
Radial Kernel SVM with PCA 52.9
Linear Support Vector Machine with PCA 52.4

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create a machine learning model to predict, if a kickstarter project is going to be successful or not based on chosen features.

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