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Algorithms for a Class of Isotonic Regression Problems

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Abstract.

The isotonic regression problem has applications in statistics, operations research, and image processing. In this paper a general framework for the isotonic regression algorithm is proposed. Under this framework, we discuss the isotonic regression problem in the case where the directed graph specifying the order restriction is a directed tree with n vertices. A new algorithm is presented for this case, which can be regarded as a generalization of the PAV algorithm of Ayer et al. Using a simple tree structure such as the binomial heap, the algorithm can be implemented in O(n log n) time, improving the previously best known O(n 2 ) time algorithm. We also present linear time algorithms for special cases where the directed graph is a path or a star.

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Received September 2, 1997; revised January 2, 1998, and February 16, 1998.

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Pardalos, P., Xue, G. Algorithms for a Class of Isotonic Regression Problems . Algorithmica 23, 211–222 (1999). https://doi.org/10.1007/PL00009258

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  • DOI: https://doi.org/10.1007/PL00009258

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