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iterations: 84700 training error: 0.06476258956393224
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iterations: 90000 training error: 0.09379562905130326
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iterations: 91000 training error: 0.06818311749881285
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iterations: 91900 training error: 0.06986247634571992
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iterations: 92500 training error: 0.06563244300731959
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iterations: 92700 training error: 0.06596298775316878
iterations: 92800 training error: 0.06630233280681762
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iterations: 93000 training error: 0.06791920248679148
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iterations: 95000 training error: 0.0633504028192556
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iterations: 95500 training error: 0.06338281951799804
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iterations: 96300 training error: 0.06468254255371404
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iterations: 99300 training error: 0.05835070420117857
iterations: 99400 training error: 0.05226416966449994
{ error: 0.04937584179507901, iterations: 99468 }
train time: 592076ms
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Avarage error: 0.1417815744858901
