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Machine learning algorithms build a model of the training data. The term "machine learning" is vaguely defined; it includes what is also called statistical learning, reinforcement learning, unsupervised learning, etc. ALWAYS ADD A MORE SPECIFIC TAG.
3
votes
1
answer
871
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Effects of selection bias in training data introduced by previous model outputs
I am developing a random forest for a binary classification problem where the trained data is heavily skewed towards one class (90% is class A and 10% is class B). The model scores data points based o …
1
vote
0
answers
74
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Devising an acceptance sampling plan for False Negative Rate
I need to evaluate a binary classifier that classifies inputs in positives and negatives. Since all predicted positives (PP) are assessed, I have complete data on the true positives (TP) and the false …