Marios Michailidis: How to become a Kaggle #1: An introduction to model stacking
Ever wondered how Kaggle masters combine hundreds of different machine learning models to win modelling competitions? Ever wondered how to become ranked #1 on Kaggle? StackNet has helped me do that! StackNet is an open-source, scalable and automated meta-modelling framework that combines various supervised models to improve performance. Written in Java, this library automates many of the laborious aspects of building stacking models, so that you can focus on the important parts and move higher up the Kaggle leaderbo ards. I will explain some of the considerations for running StackNet and show how I have used it to win Kaggle competitions and generate value for dunnhumby.
Видео Marios Michailidis: How to become a Kaggle #1: An introduction to model stacking канала Data Science Festival
Видео Marios Michailidis: How to become a Kaggle #1: An introduction to model stacking канала Data Science Festival
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