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This is my implementation of a stacked regressor using optimized SVM and random Forest using Optuna.The actual inputs of the combined regressor is a latent representation of 220 inputs compressed into 5 ,extracted using an auto-encoder implemented under Keras

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RayanAAY-ops/Regression-stacked-SVM_RandomForest

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Regression-stacked-SVM_RandomForest

This is my implementation of a stacked regressor using optimized SVM and random Forest using Optuna.The actual inputs of the combined regressor is a latent representation of 59 numerical inputs compressed into 5 ,extracted using an auto-encoder implemented under Keras

My goal was to focus more on the model and the fine tuning of the hyper-parameters ,instead of the data itself and all the visualisation/preprocessing behind .

I actually scored 0.15,(top 20%) with a very simple auto-encoder architecture and a lazy data preprocessing .

With a deeper one ,the result would probably be better. (DM me if you achieve better with a more complex architecture).

STEPS OF EXECUTIONS

  1. pip install -r requirements.txt && mkdir sample

  2. python3 preprocessing.py

  3. python3 AE_train.py

  4. python3 main.py

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This is my implementation of a stacked regressor using optimized SVM and random Forest using Optuna.The actual inputs of the combined regressor is a latent representation of 220 inputs compressed into 5 ,extracted using an auto-encoder implemented under Keras

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