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iterations: 92800 training error: 0.1062990283478449
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iterations: 93000 training error: 0.08644788393496373
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iterations: 93200 training error: 0.10847332304362142
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iterations: 94000 training error: 0.08994663497520405
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iterations: 95000 training error: 0.08834172023945473
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iterations: 95700 training error: 0.10084694567317597
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iterations: 96000 training error: 0.09950823656020504
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iterations: 96300 training error: 0.09664632534607377
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iterations: 96600 training error: 0.08583946019717216
iterations: 96700 training error: 0.08460925632536989
iterations: 96800 training error: 0.09920379619355013
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iterations: 97000 training error: 0.09466096197088211
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iterations: 99900 training error: 0.09645578687024589
{ error: 0.08529678957222735, iterations: 100000 }
train time: 272674ms
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Avarage error: 0.17607104287752537
