Computationally Efficient Algorithms for High-Dimensional Robust Estimators
Title | Computationally Efficient Algorithms for High-Dimensional Robust Estimators |
Publication Type | Journal Articles |
Year of Publication | 1994 |
Authors | Mount D, Netanyahu NS |
Journal | CVGIP: Graphical Models and Image Processing |
Volume | 56 |
Issue | 4 |
Pagination | 289 - 303 |
Date Published | 1994/07// |
ISBN Number | 1049-9652 |
Abstract | Given a set of n distinct points in d-dimensional space that are hypothesized to lie on a hyperplane, robust statistical estimators have been recently proposed for the parameters of the model that best fits these points. This paper presents efficient algorithms for computing median-based robust estimators (e.g., the Theil-Sen and repeated median (RM) estimators) in high-dimensional space. We briefly review basic computational geometry techniques that were used to achieve efficient algorithms in the 2-D case. Then generalization of these techniques to higher dimensions is introduced. Geometric observations are followed by a presentation of O(nd − 1 log n) expected time algorithms for the d-dimensional Theil-Sen and RM estimators. Both algorithms are space optimal; i.e., they require O(n) storage, for fixed d. Finally, an extension of the methodology to nonlinear domain(s) is demonstrated. |
URL | http://www.sciencedirect.com/science/article/pii/S1049965284710261 |
DOI | 10.1006/cgip.1994.1026 |