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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.
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Can we say there is High Bias if we have high training error due to small training data size?
If for a very small dataset we have a high training error, can we say that we are underfitting or have a high bias because of the low amount of training data?
Or do we use these terms (underfitting a …
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How to handle problem of different random seeds giving drastically different test scores in ...
For a rigorous empirical analysis, I am training a model with three different seeds - 0, 1 and 2. In each case, I found that the model obtained through early stopping (lowest validation loss) had an F …