Data analysis and classification of counterfeit and genuine banknotes
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Updated
Mar 28, 2020 - Jupyter Notebook
Data analysis and classification of counterfeit and genuine banknotes
CSE 575 Statistical Machine Learning
CLASSIFICATION USING K-NEAREST NEIGHBORS (KNN) ALGORITHM. This project is for classifying banknotes using the KNN algorithm.
Deployment of ML Model using Fast API. To run the API use `uvicorn app:app --reload`
Comparison of numerous supervised machine learning classifier models (Logistic Regression, K-Nearest Neighbors, Support Vector Machines and Decision Trees) predicting if a banknote is genuine or not based on the dataset from OpenML containing wavelet analysis results for genuine and forged banknotes. (Python 3)
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