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Tame Your Data—Constrained Spline Regression
Harald Biller
The Wolfram System's recent advances in disciplined convex programming are applied to a multi-objective optimization problem: find a cubic spline function with small data distance and curvature. We add positivity, monotonicity and convexity constraints, which we express as norm cone constraints.
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Channels: Technology Conference
1311 videos match your search.
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