Overview
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Explore a real-world data science project focused on interpretable machine learning in this 21-minute conference talk from MLCon. Learn how to use packages like SHAP to interpret predictions and visualize which features influence algorithm outcomes. Discover the effectiveness of this approach for clients seeking interpretable machine learning solutions. Follow along as the speaker demonstrates the process using a Kickstarter dataset, employing techniques such as CatBoost and feature importance analysis. Gain insights into automated checks, model comparisons, and practical applications of interpretable machine learning in consulting scenarios.
Syllabus
Introduction
About Leverage Solutions
Agenda
Motivation
Project Inspiration
Automated Check
Kickstarter
Data
Cat Boost
Beckers Column
Second Model
Calculation Example
Average Contribution
Feature Value
Conclusion
Taught by
MLCon | Machine Learning Conference