A Path Algorithm for Constrained Estimation
Hua Zhou, Kenneth Lange

TL;DR
This paper introduces a new path following algorithm for constrained quadratic programming that efficiently traces the solution as the penalty parameter varies, improving understanding and solving of constrained least squares problems.
Contribution
It presents an exact penalty-based path algorithm for quadratic programming, enabling efficient exploration of solutions across varying constraint levels.
Findings
The method effectively traces the entire solution path.
It can be implemented using the regression sweep operator.
Examples demonstrate the mechanics and advantages of the approach.
Abstract
Many least squares problems involve affine equality and inequality constraints. Although there are variety of methods for solving such problems, most statisticians find constrained estimation challenging. The current paper proposes a new path following algorithm for quadratic programming based on exact penalization. Similar penalties arise in regularization in model selection. Classical penalty methods solve a sequence of unconstrained problems that put greater and greater stress on meeting the constraints. In the limit as the penalty constant tends to , one recovers the constrained solution. In the exact penalty method, squared penalties are replaced by absolute value penalties, and the solution is recovered for a finite value of the penalty constant. The exact path following method starts at the unconstrained solution and follows the solution path as the penalty constant…
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