| Literature DB >> 35693692 |
Yan Zheng1, Yi Ou1, Alexander Lex2, Jeff M Phillips2.
Abstract
The size of large, geo-located datasets has reached scales where visualization of all data points is inefficient. Random sampling is a method to reduce the size of a dataset, yet it can introduce unwanted errors. We describe a method for subsampling of spatial data suitable for creating kernel density estimates from very large data and demonstrate that it results in less error than random sampling. We also introduce a method to ensure that thresholding of low values based on sampled data does not omit any regions above the desired threshold when working with sampled data. We demonstrate the effectiveness of our approach using both, artificial and real-world large geospatial datasets.Entities:
Keywords: Spatial data visualization; big data; coresets; sampling
Year: 2019 PMID: 35693692 PMCID: PMC9187053 DOI: 10.1109/tbdata.2019.2913655
Source DB: PubMed Journal: IEEE Trans Big Data ISSN: 2332-7790