Skip to content

takehiro177/calibration-prediction-handson

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

12 Commits
 
 
 
 
 
 
 
 

Repository files navigation

calibration-prediction-handson

Unlock the Full Potential of Business with Cutting-Edge ML Techniques!

Discover how to master calibration and make a real-world impact with our latest article, “Unlocking Business Potential with ML.” Dive deep into the transformative power of machine learning and apply advanced strategies for unparalleled precision and reliability.

💡 Stand Out in Data Science 💡

Beyond Prediction: Harness ML to maximize data value and drive business growth. Tips and Pitfalls: Avoid common mistakes and excel in data science. Key Topics: Mastering Small Data: Leverage small datasets for big insights. Imbalanced Data: Why SMOTE fails and better alternatives. Calibration: Transform model predictions into reliable probabilities.

📈 Boost ROI with Advanced ML Strategies 📈

Tailored Data Science: Propel business forward with innovative ML approaches. Maximizing Gains, Minimizing Risks: Make informed decisions to amplify rewards and reduce uncertainties. Insurance Claims Case Study: Calibration in Fraud Detection: Ensure predictive models are reliable for risk management. Strategic Claim Selection: Prioritize claims based on calibrated probabilities for optimal ROI. Dataset Insights: Insurance Claims Dataset: Analyze customer demographics, policy details, financial footprints, and incident insights.

💡 Advanced Techniques:

Nested Hold-out Cross Validation: Ensure robust model validation for small datasets. Focal Loss: Address class imbalance more effectively than SMOTE. Optimizing Calibration: Enhance model accuracy and reliability with calibrated probabilities.

📈 Enhancing Strategic Outcomes:

Prioritizing Insights: Focus on claims with high expected losses for better ROI. Strategic Claim Selection: Use calibrated probabilities to guide investigations.

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published