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Data Notes: Homer Simpson and Heart Disease

Data Notes for February 28th

Heart disease, presidential candidates, and cartoons: Enjoy these new, intriguing, and overlooked datasets and kernels

 

1. 💔 What Causes Heart Disease? Explaining the Model (Link)

2. 📊 Genomic Visualization via Dimensionality Reduction (Link)

3. 🍩 The Simpsons DCGAN Image Generator (Link)

4. 💣 The Rise and Fall of PUBG - Steam Reviews Analysis (Link)

5. 🍗 Natural Language Processing (NLP) for Yelp Reviews (Link)

6. 📸 Introduction to Image Augmentation using Fastai (Link)

7. 💵 Google Trends for 2020 Democratic Candidates (Link)

8. 🇺🇸 Dataset: Every State of the Union Address Since 1970 (Link)

9. ⛑ Dataset: Google Safe Browsing Transparency Report (Link)

10. 📡 Dataset: Satellite Pose Estimation Challenge (Link)

 

Technique of the week

Are class activation maps (and other methods) helpful when interpreting CNNs?  Explain how and why and be chosen as Kaggle’s Kernel Author of the Month!

 

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