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Independent component analysis and clustering for pollution data
by
Chattopadhyay, Asis Kumar
, Biswas, Atanu
, Mondal, Saptarshi
in
Accuracy
/ Algorithms
/ Biomedical and Life Sciences
/ Chemistry and Earth Sciences
/ Classification
/ cluster analysis
/ Clustering
/ Computer Science
/ Datasets
/ Ecology
/ Environmental statistics
/ Experiments
/ Health Sciences
/ Iowa
/ Life Sciences
/ Math. Appl. in Environmental Science
/ Medicine
/ Normal distribution
/ Physics
/ Pollution
/ Pollution abatement
/ Pollution levels
/ Principal component analysis
/ Principal components analysis
/ Radiation
/ Random variables
/ Soil moisture
/ soil water
/ Statistics
/ Statistics for Engineering
/ Statistics for Life Sciences
/ Studies
/ Texts
/ Theoretical Ecology/Statistics
/ Variables
2015
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Independent component analysis and clustering for pollution data
by
Chattopadhyay, Asis Kumar
, Biswas, Atanu
, Mondal, Saptarshi
in
Accuracy
/ Algorithms
/ Biomedical and Life Sciences
/ Chemistry and Earth Sciences
/ Classification
/ cluster analysis
/ Clustering
/ Computer Science
/ Datasets
/ Ecology
/ Environmental statistics
/ Experiments
/ Health Sciences
/ Iowa
/ Life Sciences
/ Math. Appl. in Environmental Science
/ Medicine
/ Normal distribution
/ Physics
/ Pollution
/ Pollution abatement
/ Pollution levels
/ Principal component analysis
/ Principal components analysis
/ Radiation
/ Random variables
/ Soil moisture
/ soil water
/ Statistics
/ Statistics for Engineering
/ Statistics for Life Sciences
/ Studies
/ Texts
/ Theoretical Ecology/Statistics
/ Variables
2015
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Independent component analysis and clustering for pollution data
by
Chattopadhyay, Asis Kumar
, Biswas, Atanu
, Mondal, Saptarshi
in
Accuracy
/ Algorithms
/ Biomedical and Life Sciences
/ Chemistry and Earth Sciences
/ Classification
/ cluster analysis
/ Clustering
/ Computer Science
/ Datasets
/ Ecology
/ Environmental statistics
/ Experiments
/ Health Sciences
/ Iowa
/ Life Sciences
/ Math. Appl. in Environmental Science
/ Medicine
/ Normal distribution
/ Physics
/ Pollution
/ Pollution abatement
/ Pollution levels
/ Principal component analysis
/ Principal components analysis
/ Radiation
/ Random variables
/ Soil moisture
/ soil water
/ Statistics
/ Statistics for Engineering
/ Statistics for Life Sciences
/ Studies
/ Texts
/ Theoretical Ecology/Statistics
/ Variables
2015
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Independent component analysis and clustering for pollution data
Journal Article
Independent component analysis and clustering for pollution data
2015
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Overview
Independent component analysis (ICA) is closely related to principal component analysis (PCA). Whereas ICA finds a set of source variables that are mutually independent, PCA finds a set of variables that are mutually uncorrelated. Here we consider an objective classification of different regions in central Iowa, USA, in order to study the pollution level. The study was part of the Soil Moisture Experiment 2002. Components responsible for significant variation have been obtained through both PCA and ICA, and the classification has been done by [Formula: see text]-Means clustering. Result shows that the nature of clustering is significantly improved by the ICA.
Publisher
Springer-Verlag,Springer US,Springer Nature B.V
Subject
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