Amazon SageMaker Solution for explaining credit decisions.
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Updated
May 11, 2023 - Python
Amazon SageMaker Solution for explaining credit decisions.
A Classification Problem which predicts if a loan will get approved or not.
This repo contains my loan approval prediction project in Python.
[Project repo] Improving business with a credit risk model
Loan Application Prediction through machine learning moldes : Logistic Regression, Random Forest, DecisionTree,
Python Data Analytics, Machine Learning & Natural Language Processing
In this Notebook , We are going to solve the Loan Approval Prediction.This is a Classification problem in which we need to classify whether the loan will be approved or not.
Should you get a loan? Will you pay on time?
What's up This project was mainly training my self on training ML models 🤖 and also to train on doing EDA 📜 to get the acceptance of the loan.
Loan eligibility prediction with Logistic Regression
Business Intelligence( BI) & Tableau
In this project, I analyzed the prosper load data, studied the trends and concluded that monthly income, loan amount and borrower's rate significantly affect the prosper rating and a good predictors of delinquency.
Loan eligibility prediction in Lasiandra Finance Inc. (LFI) using SAS studio.
I’d be walking us through Loan prediction using some selected Machine Learning Algorithms.
In this data science project, we will predict borrowers chance of defaulting on loans by building a default prediction model.
Loan Prediction using machine learning
Machine Learning
This a practice project for Classification model with different models like Logistic Regression, Decision Tree Classifier, Random Forest Classifier and Xgboost Classifier. At the end, Logistic Regression gave the best result.
Minimization of risk and maximization of profit on behalf of the bank
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