Smooth maps from clumpy data
Abstract
We study an estimator for smoothing irregularly sampled data into a smooth map. The estimator has been widely used in astronomy, owing to its low level of noise; it involves a weight function -- or smoothing kernel -- w(\theta). We show that this estimator is not unbiased, in the sense that the expectation value of the smoothed map is not the underlying process convolved with , but a convolution with a modified kernel w_eff(\theta). We show how to calculate w_eff for a given kernel w and investigate its properties. In particular, it is found that (1) w_eff is normalized, (2) has a shape `similar' to the original kernel w, (3) converges to w in the limit of high number density of data points, and (4) reduces to a top-hat filter in the limit of very small number density of data points. Hence, although the estimator is biased, the bias is well understood analytically, and since w_eff has all the desired properties of a smoothing kernel, the estimator is in fact very useful. We present explicit examples for several filter functions which are commonly used, and provide a series expression valid in the limit of large density of data points.
Cite
@article{arxiv.astro-ph/0104132,
title = {Smooth maps from clumpy data},
author = {Marco Lombardi and Peter Schneider},
journal= {arXiv preprint arXiv:astro-ph/0104132},
year = {2009}
}
Comments
11 pages, submitted to A&A