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XGBOOST and CV #3

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jejen3180 opened this issue Jan 16, 2021 · 2 comments
Open

XGBOOST and CV #3

jejen3180 opened this issue Jan 16, 2021 · 2 comments

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@jejen3180
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I tested your dataset with xgboost and cross validation, the result is accuracy of 100% and Actually, the average accuracy of all the experiments was k-fold 5 score.mean 99,31%

@jejen3180 jejen3180 changed the title Test model XGBOOST and CV XGBOOST and CV Jan 16, 2021
@IvanLetteri
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Well done, good work jejen3180. We known about excellent results about xgboost and I say you that also different decision trees perform well, better than neural networks (see https://ieeexplore.ieee.org/document/8802421).

We work on deep neural network doing research about NN-learning steps so that was the reason which induce to use NN.

@jejen3180
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if you are willing, I would like to use your dataset for my research ( I use XGBoost), can you give me some input, please..?

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