Which Hyperparameters to tune? #527
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ourownstory
ourownstory
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Which hyperparameters should I leave on auto and which should I tune, if any? |
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Answered by
ourownstory
Jan 28, 2022
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It depends. What are you forecasting and what are the data's characteristics? Without knowing about that, here are some quick pointers:
Hyperparameters should be tuned if hidden layers (NN used):
Further, if you have a panel dataset - you can train one global model with shared weights across all or train one model per time-series. |
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ourownstory
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It depends. What are you forecasting and what are the data's characteristics?
Without knowing about that, here are some quick pointers:
-- Y/N and N lags
-- Hidden layers: Y/N and N layers
Hyperparameters should be tuned if hidden layers (NN used):
Further, if you have a panel dataset - you can train one global model with shared weights across all or train one model per time-series.