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StatQuest Check it out talking about Machine-learning. Yeah StatQuest Check it out Talking about cross-validation StatQuest Hello, Im Josh stormer and welcome to StatQuest today were going to talk about cross validation and its gonna be clearly explained Okay, lets start with some data We want to use the variables chest pain good blood circulation Etc To predict if someone has heart disease Then when a new patient shows up we can measure these variables and Predict if they have heart disease or not However, first we have to decide which machine learning method would be best we could use logistic regression or K nearest neighbors Or support vector machines and Many more machine learning methods. How do we decide which one to use? Cross-validation allows us to compare different machine learning methods and get a sense of how well they will work in practice Imagine that this blue column represented all of the data that we have collected about people with and without heart disease We