Interpreting patch calibration error rates #49
tgestabrook
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Your discount factor varies between 0.45-0.55, I would suggest to spread it out more. Compactness range seems to be less important than mean, so I typically vary mean and keep range static to keep the number of calibration combinations lower. For example, you could use:
I usually run the calibration twice, first with larger range of values to get a general idea (e.g. the example above) and then look at which values perform better and run a more detailed calibration (e.g., mean=0.1,0.2,0.3). |
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Hello, I have a question about the patch calibration component of GRASS_FUTURES that I have not been able to find answers for in the documentation:
How should the area_error and compactness_error values be interpreted? For one of the cities I am modeling, area error is very high while compactness error is very low for all parameter combinations. It seems like that should help me diagnose some issue with my setup but I am unsure exactly what.
Any help is greatly appreciated.
calib2022_7.csv
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