[PYTHON] Kaggle Kernel Method Summary [Image]

Click here for the previous article Kaggle Kernel Summary [Table Time Series Data]

In this article, I'd like to know something like a standard for each data type in the Kaggle competition, including myself! I will write for people like. Also, I think it would be good if it could be a hint when accuracy does not come out regardless of the competition.

alt

This time, we will look at various kernels, not limited to competitions. When it comes to visualization in the case of images, --Visualization of CNN layer by layer --Visualization of image contribution --Visualization (display) of the dataset image itself

Is it like that? (If there is anything else, please let me know in the comments) Compared to other data types, it seems that the width is narrow, so this time we will focus on the method.

Introduction to CNN Keras - 0.997 (top 6%)

Ordinary CNN, model architecture seems to be exquisite

EDA and LSTM-CNN

I am using LSTM-CNN

CNN Architectures : VGG, ResNet, Inception + TL

Transfer Learning is combined using VGG16, VGG19, InceptionNet, Resnet, XceptionNet, etc.

How to choose CNN Architecture MNIST

I'm trying different architectures

Summary

I would like to update it from time to time. Wish you a good year! alt

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