Can’t see the forest for the trees? An intro to Random Forest ML in R


Details
Heard of Random Forests and aren’t sure where to start? Or have you always wanted to apply machine learning to a problem but are worried about the ‘black box’ nature of the models? This talk will introduce one of the most interpretable and accessible machine learning algorithms, Random Forests. Beginning with a straightforward description of the model’s structure, this talk will then cover everything you need to start running your own Random Forest models in R: from data preparation, variable selection, and types of Random Forest models – to plotting and interpreting outputs and accuracy measures. By the end of the session, you’ll be branching out into machine learning with confidence!

Can’t see the forest for the trees? An intro to Random Forest ML in R