Load the titanic data set from the dropdown.Sample the data by 70:30 ratio. 70% of the original data set will be the training data set and the remaining 30% the test data.Choose a classifier of your choice. Try Naive Bayes, Random Forest or any other.Inspect the accuracy of the model on the test data set by using the 'Test on test data' option.gAN9cQAoWBIAAABjb250cm9sQXJlYVZpc2libGVxAYhYDAAAAHJlY2VudF9wYXRoc3ECXXEDKGNv
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