Deciding what to Try Next
Deciding what to Try Next
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Should be expected by now average expert of machine learning
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Know truly what algorithm for each problem
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What to do when the result is largely different from the actual output
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Prioritize small subset of feature, more impotance ones
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lambda(regularization parameters)
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Unfortunately, most common are choosing by instinct, not by science
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Choosing which avenues by these simple method
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These techniques will part the correct way from the rest of the avenues
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Next two videos, evaluate learning algorithm, and next discuss about this technique
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Insight from the test of which promising way to try
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Diagnostic can be time consuming, but still worthed compared to spend many months only to find out that the avenues that we choose is wrong
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Next try few things to improve machine learning system