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27 lines
960 B
27 lines
960 B
6 years ago
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# Machine Learning Sample
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Some machine learnings example for my activity on freeday XD
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Built in with Scikit-learn library
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# 6 Algorithms Used on This Project
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1. KNN
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2. Logistic Linear
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3. Decission Tree Classifier
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4. SVM
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5. Gaussian NB
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6. Linear Discrimination Analysis
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# 2 Evaluate Models For The Datasets
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1. K Fold CV ( K Fold Cross Validation )
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2. LOOCV ( Leave One Out Cross Validation )
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# How it choose it's own best algorithm
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There are 2 evaluate models in this project. Each models produce an array that filled up with 6 models and it's accuracy score. So it'll look for the best one and pick it up as the algorithm to use.
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# Next Step?
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1. Glass Classification Section
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2. Image Classification with default datasets from scikit-learn itself
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3. Maybe fixed the method of choosing the best algorithm, because sometimes there are 2 algorithms that had same score. So it may use both of them and show it's result.
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# Author
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Robby Muhammad Nst
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OrionStark
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