LibAUC: A Deep Learning Library for X-Risk Optimization
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Updated
Sep 2, 2024 - Python
Content-Length: 308593 | pFad | http://github.com/topics/auroc
A2LibAUC: A Deep Learning Library for X-Risk Optimization
Top1 Solution on OGB Challenge (Graph Property Prediction on HIV dataset)
Introduction to Machine Learning with Python
This repository hosts a cutting-edge deep learning model developed to predict 6-month incident heart failure utilizing electronic health records (EHRs). Heart failure is a multifaceted medical condition characterized by its significant impact on patients' well-being and healthcare systems.
Hi all! My project aims to predict customer conversion for an insurance company. The main objective of the project is to develop an accurate and efficient model that can aid the insurance company in improving its sales conversion rate and reducing marketing costs.
Classification prediction model
Developed a Logistic Regression model to detect anemia in patients by analyzing and refining data sets for improved accuracy.
Cross-validation, knn classif, knn régression, svm à noyau, Ridge à noyau
Predicted rider retention for a taxi service and identified most significant factors that contributed to it. Achieved an 80% accuracy with a catboost model, which was chosen for its interpretability.
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