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  <description>Table of contents Table of contents Introduction Author GitHub Linear model with 1 dimensional input Input data: Age Target data: Height Data generation Linear model definition Gradient method Learning Result Point to notice Plane model with 2 dimensional input Data generation Plane model D-dimensio…</description>
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  <published>2019-05-21 11:21:48</published>
  <title>Fundamentals of Regression by Machine Learning</title>
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