Isotonic Regression under Lipschitz Constraint

Type: Article

Publication Date: 2009-01-06

Citations: 10

DOI: https://doi.org/10.1007/s10957-008-9477-0

Abstract

The pool adjacent violators (PAV) algorithm is an efficient technique for the class of isotonic regression problems with complete ordering. The algorithm yields a stepwise isotonic estimate which approximates the function and assigns maximum likelihood to the data. However, if one has reasons to believe that the data were generated by a continuous function, a smoother estimate may provide a better approximation to that function. In this paper, we consider the formulation which assumes that the data were generated by a continuous monotonic function obeying the Lipschitz condition. We propose a new algorithm, the Lipschitz pool adjacent violators (LPAV) algorithm, which approximates that function; we prove the convergence of the algorithm and examine its complexity.

Locations

  • PubMed Central - View
  • RePEc: Research Papers in Economics - View
  • PubMed - View
  • Journal of Optimization Theory and Applications - View - PDF

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