A two-stage predictive machine learning engine that forecasts the on-time performance of flights for 15 different airports in the USA based on data collected in 2016 and 2017.
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Updated
Jan 10, 2024 - Jupyter Notebook
A two-stage predictive machine learning engine that forecasts the on-time performance of flights for 15 different airports in the USA based on data collected in 2016 and 2017.
This is an optional model development project on a real dataset related to predicting the different progressive levels of Alzheimer’s disease (AD) with MRI data.
We'll use Python to build and evaluate several machine learning models to predict credit risk. Being able to predict credit risk with machine learning algorithms can help banks and financial institutions predict anomalies, reduce risk cases, monitor portfolios, and provide recommendations on what to do in cases of fraud.
使用比赛方提供的脱敏数据,进行客户信贷流失预测。
This project develops an activity recognition model for a mobile fitness app using statistical analysis and machine learning. By processing smartphone sensor data, it extracts features to train models that accurately recognize user activities.
This repository is associated with interpretable/explainable ML model for liquefaction potential assessment of soils. This model is developed using XGBoost and SHAP.
The goal is to create a model predicting the grade of an essay
SMOTE code ( used from imblearn) along with classification report and confusion matrix usage. Also, created our own dataset using make_classifcation() function of python.
Predicts if a patient will show up at a scheduled appointment based on certain features.
Data analysis, visualization and prediction for the prevention of heart disease using ML models
Testing 6 different machine learning models to determine which is best at predicting credit risk.
Multi-class Classification - License Status Prediction
Credit risk is an inherently unbalanced classification problem, as good loans easily outnumber risky loans. Therefore, we needed to employ different techniques to train and evaluate models with unbalanced classes. Jill asks us to use imbalanced-learn and scikit-learn libraries to build and evaluate models using resampling
Future Ready Talent Project Submission.Using Azure ML Studio to predict the income of individuals, based on their age, race, education, residence city, etc. Used the adult census dataset
This project focuses on building a fraud detection model for credit card transactions using a dataset containing transactions made by European cardholders in September 2013. We are working with a highly unbalanced dataset and the challenge lies in effectively detecting fraudulent transactions while minimizing false positives.
Chapter 12: Data Preparation for Fraud Analytics
Using the imbalanced-learn and Scikit-learn libraries to build and evaluate machine learning models.
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