The Singular Value Decomposition (SVD) is a mathematical procedure with multiple applications in the geosciences. For instance, it is used in dimensionality reduction and as a support operator for various analytical tasks applicable to spatio-temporal data. Performing SVD analyses on large datasets, however, can be computationally costly, time consuming, and sometimes practically infeasible. However, techniques exist to arrive at the same output, or at a close approximation, which requires far less effort. This article examines several such techniques in relation to the inherent scale of the structure within the data. When the values of a dataset vary slowly, e.g., in a spatial field of temperature over a country, there is autocorrelation a...
One of the observations made in earth data science is the massive increase of data volume (e.g, high...
AbstractOne of the observations made in earth data science is the massive increase of data volume (e...
Big Data Analytics methods take advantage of techniques from the fields of data mining, machine lear...
Many models for spatio-temporal measurements Z(s; t) can be written as a sum of a systematic compone...
Three forms of multivariate analysis, one very classical and the other two relatively new and little...
A common problem in the analysis of space-time data is to compress a large dataset in order to extra...
With the ability to collect and store increasingly large datasets on modern computers comes the need...
The properties of geographical phenomena vary with changes in the scale of measurement. The informat...
An accurate cost model that accounts for dataset size and structure can help optimize geoscience dat...
Big Data Analytics methods take advantage of techniques from the fields of data mining, machine lear...
An accurate cost-model that accounts for dataset size and structure can help optimize geoscience dat...
In spatial statistics, a common method for prediction over a Gaussian random field (GRF) is maximum ...
Over the past three decades, the singular value decomposition has been increasingly used for various...
As stated in literature by several authors, there has been literally big-bang explosion in data acqu...
The singular value decomposition (SVD) is a fundamental matrix decomposition in linear algebra. It i...
One of the observations made in earth data science is the massive increase of data volume (e.g, high...
AbstractOne of the observations made in earth data science is the massive increase of data volume (e...
Big Data Analytics methods take advantage of techniques from the fields of data mining, machine lear...
Many models for spatio-temporal measurements Z(s; t) can be written as a sum of a systematic compone...
Three forms of multivariate analysis, one very classical and the other two relatively new and little...
A common problem in the analysis of space-time data is to compress a large dataset in order to extra...
With the ability to collect and store increasingly large datasets on modern computers comes the need...
The properties of geographical phenomena vary with changes in the scale of measurement. The informat...
An accurate cost model that accounts for dataset size and structure can help optimize geoscience dat...
Big Data Analytics methods take advantage of techniques from the fields of data mining, machine lear...
An accurate cost-model that accounts for dataset size and structure can help optimize geoscience dat...
In spatial statistics, a common method for prediction over a Gaussian random field (GRF) is maximum ...
Over the past three decades, the singular value decomposition has been increasingly used for various...
As stated in literature by several authors, there has been literally big-bang explosion in data acqu...
The singular value decomposition (SVD) is a fundamental matrix decomposition in linear algebra. It i...
One of the observations made in earth data science is the massive increase of data volume (e.g, high...
AbstractOne of the observations made in earth data science is the massive increase of data volume (e...
Big Data Analytics methods take advantage of techniques from the fields of data mining, machine lear...