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<p>of noise in the desired output values (the supervisory <a href="page.php?w=target_variable">target variable</a>s). If the desired output values are often incorrect (because of human error or sensor errors), then the learning algorithm should not attempt to find a function that exactly matches the training examples. Attempting to fit the data too carefully leads to <a href="page.php?w=overfitting">overfitting</a>. You can overfit even when there are no measurement errors (stochastic noise) if the function you are trying to learn is too complex</p><p>
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