Title
Approximating the Distribution of the Median and other Robust Estimators on Uncertain Data.
Abstract
Robust estimators, like the median of a point set, are important for data analysis in the presence of outliers. We study robust estimators for locationally uncertain points with discrete distributions. That is, each point in a data set has a discrete probability distribution describing its location. The probabilistic nature of uncertain data makes it challenging to compute such estimators, since the true value of the estimator is now described by a distribution rather than a single point. We show how to construct and estimate the distribution of the median of a point set. Building the approximate support of the distribution takes near-linear time, and assigning probability to that support takes quadratic time. We also develop a general approximation technique for distributions of robust estimators with respect to ranges with bounded VC dimension. This includes the geometric median for high dimensions and the Siegel estimator for linear regression.
Year
Venue
Field
2018
Symposium on Computational Geometry
Discrete mathematics,Applied mathematics,VC dimension,Outlier,Uncertain data,Probability distribution,Mathematics,Geometric median,Bounded function,Estimator,Linear regression
DocType
Citations 
PageRank 
Conference
0
0.34
References 
Authors
12
3
Name
Order
Citations
PageRank
Kevin Buchin152152.55
Jeff M. Phillips253649.83
Pingfan Tang301.69