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Types of runs I need (May need some other people to help me run these):
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Optimization runs
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Non-error
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Search over combinations of selection methods and genetic operators
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Fix Sigma at 10%.
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Do this for 10 runs for each
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Re-run the best run for 100 tests to see if the results agree with 10 test results
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This will be the main talking point
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Save the plot for the best combination (proxy and metric)
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Error
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Re-run the best run for 100 tests with 3 different error amounts (0.1, 0.2, 0.3)
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We will compare these results to the non-error run to talk about how errors may affect consistency/speed.
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Save an example plot of an error test for each error (both metric and proxy score)
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Population
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Re-run the best run for 100 tests with 3 different population sizes (100, 500, 1000)
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We will compare these results to the non-error run to talk about how population size affects consistency/speed.
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Save an example plot of a population test for each size (just proxy score)
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Demonstration runs (single runs, fitness score, no error population 100)
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Crossover only
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Mutation only
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Reproduction only
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Injection only
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