Credit Risk Analysis with Machine Learning
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Updated
May 2, 2023 - Jupyter Notebook
Credit Risk Analysis with Machine Learning
4 Boosting Algorithms You Should Know – GBM, XGBoost, LightGBM & CatBoost
This project detects AI-generated text using an ensemble of classifiers: Multinomial Naive Bayes, Logistic Regression, LightGBM, and CatBoost. It includes robust data preprocessing, model development, and evaluation, ensuring accurate identification of AI-generated content from a diverse text dataset.
Goal Using the data collected from existing customers, build a model that will help the marketing team identify potential customers who are relatively more likely to subscribe term deposit and thus increase their hit ratio
predicting a continuous target (regression) based on number of anonymous features columns given in the data.
Repository contains Vehicle Loan Default Prediction of L&T which involved EDA, Statistical Analysis and Model Building
All Possible Machine Learning algorithms implementation in jupyter notebook with csv file.
Analytics Vidhya AmExpert ML Competition
Deploying Flight Price Prediction via Microsoft Azure
Data Storm 1.0 - Business Problem - Team Fixzels
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