In this article, we describe an implementation of a space-filling location-selection algorithm. The objective is to select a subset from a list of locations so that the spatial coverage of the locations by the selected subset is optimized according to a geometric criterion. Such an algorithm designed for geographical site selection is useful for determining a grid of points that “covers” a data matrix as needed in various nonparametric estimation procedures.
ClevelandW. S.1979. Robust locally weighted regression and smoothing scatterplots. Journal of the American Statistical Association74: 829–836.
2.
CoxD. D., CoxL. H., and EnsorK. B.1997. Spatial sampling and the environment: Some issues and directions. Environmental and Ecological Statistics4: 219–233.
3.
FanJ., and GijbelsI.1996. Local Polynomial Modelling and Its Applications.New York: Chapman & Hall/CRC.
GelfandA. E., BanerjeeS., and FinleyA. O.2012. Spatial design for knot selection in knot-based dimension reduction models. In Spatio-Temporal Design: Advances in Efficient Data Acquisition, ed. MateuJ., and MüllerW. G., 142–169. Chichester, UK: Wiley.
6.
JannB.2005. moremata: Stata module (Mata) to provide various functions. Statistical Software Components S455001, Department of Economics, Boston College.http://ideas.repec.org/c/boc/bocode/s455001.html.
7.
JohnsonM. E., MooreL. M., and YlvisakerD.1990. Minimax and maximin distance designs. Journal of Statistical Planning and Inference26: 131–148.
8.
KimJ.-I., LawsonA. B., McDermottS., and AelionC. M.2010. Bayesian spatial modeling of disease risk in relation to multivariate environmental risk fields. Statistics in Medicine29: 142–157.
9.
NychkaD., and SaltzmanN.1998. Design of air-quality monitoring networks. In Case Studies in Environmental Statistics (Lecture Notes in Statistics 132), ed. NychkaD., PiegorschW., and CoxL., 51–76. New York: Springer.
10.
RoyleJ. A., and NychkaD.1998. An algorithm for the construction of spatial coverage designs with implementation in SPLUS. Computers and Geosciences24: 479–488.
11.
RuppertD., WandM. P., and CarrollR. J.2003. Semiparametric Regression.Cambridge: Cambridge University Press.