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iterations: 85000 training error: 0.0680768591167078
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iterations: 87700 training error: 0.06771235354216762
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iterations: 90000 training error: 0.06624630585072581
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iterations: 91000 training error: 0.06596331051581857
iterations: 91100 training error: 0.06590670216202128
iterations: 91200 training error: 0.06584364196701234
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iterations: 91500 training error: 0.06563782504904751
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iterations: 92100 training error: 0.06537800319430202
iterations: 92200 training error: 0.06535242162655712
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iterations: 92400 training error: 0.06530597307669839
iterations: 92500 training error: 0.06528301086951296
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iterations: 92800 training error: 0.0665149761807863
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iterations: 93000 training error: 0.06636237484006054
iterations: 93100 training error: 0.06442765247665995
iterations: 93200 training error: 0.060615247657050765
iterations: 93300 training error: 0.06296053542511565
iterations: 93400 training error: 0.06385237615708841
iterations: 93500 training error: 0.0668648554649169
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iterations: 93800 training error: 0.05621840944030501
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iterations: 94000 training error: 0.06335606836590914
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iterations: 94200 training error: 0.05851181887336749
iterations: 94300 training error: 0.05750028716389491
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iterations: 95000 training error: 0.06014727972534642
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iterations: 95700 training error: 0.08739679033462774
iterations: 95800 training error: 0.058769180817796286
iterations: 95900 training error: 0.1130168295983041
iterations: 96000 training error: 0.10144303294390275
iterations: 96100 training error: 0.09575156974700351
iterations: 96200 training error: 0.09474919032050422
iterations: 96300 training error: 0.09419815929479382
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iterations: 96500 training error: 0.09367253622859438
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iterations: 97000 training error: 0.09271275541964476
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iterations: 97700 training error: 0.0747388167773731
iterations: 97800 training error: 0.07399269391435508
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iterations: 99700 training error: 0.06305616579330137
iterations: 99800 training error: 0.06312904345178913
iterations: 99900 training error: 0.06328829756128015
{ error: 0.06336606113542335, iterations: 100000 }
train time: 1102577ms
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Avarage error: 0.1795029531961818
