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iterations: 87700 training error: 0.09120561519287611
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iterations: 92400 training error: 0.09011283117048607
iterations: 92500 training error: 0.09008868146218592
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iterations: 92800 training error: 0.0900162635558559
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iterations: 93000 training error: 0.08996804878711173
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iterations: 93200 training error: 0.0899199225408217
iterations: 93300 training error: 0.08989590323298158
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iterations: 93600 training error: 0.08982407438202113
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iterations: 94100 training error: 0.08970541138988217
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iterations: 95000 training error: 0.0894970091592181
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iterations: 95700 training error: 0.08934173765643699
iterations: 95800 training error: 0.08932016941340798
iterations: 95900 training error: 0.08929876983630476
iterations: 96000 training error: 0.08927754351879627
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iterations: 97800 training error: 0.08892815348748682
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iterations: 99900 training error: 0.08859000078134752
{ error: 0.08857527872062057, iterations: 100000 }
train time: 608962ms
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Avarage error: 0.17585509339500632
