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Self-Organizing Maps for Imputation of Missing Data in Incomplete Data Matrices

Folguera, Laura et al · Elsevier Science Bv · 2015

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The problem of incomplete data matrices is repeatedly found in large databases; posing a significant obstacle for an effective treatment of data. This paper examines a self-organizing-map (SOM) based method of data imputation under the concept of distance object per one weight; to predict physicochemical parameters of water samples in a data set where concentrations of different analytes were missed. The method was evaluated according to two different possibilities: (a) including vectors of samples with and without missing data in the training data set and (b) pre-training a SOM for a data set with no missing values and then making imputations for a second data set (prediction set) of samples with missing values. Evaluations were made using a surface water data set of 270 samples from Reconquista River; in Buenos Aires Province; Argentina; by artificially setting a range of 17% to 39% of the data to missing. Results were compared to imputations made through professional criteria. SOMs gave reasonable estimates; with no statistically significant differences from estimates made through professional criteria; proving thus to be a suitable time-saving imputation method.
Fil: Laura Folguera. Universidad Nacional de San Martín. Instituto de Investigación e Ingeniería Ambiental; Buenos Aires. Argentina.
Fil: Jure Zupan. National Institute of Chemistry; Ljubljana. Slovenia.

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APA 7

Folguera, L. E. A. (2015). Self-Organizing Maps for Imputation of Missing Data in Incomplete Data Matrices. https://ri.unsam.edu.ar/handle/123456789/1009

MLA

Folguera, Laura et al. "Self-Organizing Maps for Imputation of Missing Data in Incomplete Data Matrices." 2015. https://ri.unsam.edu.ar/handle/123456789/1009.

Chicago

Folguera, Laura et al. 2015. "Self-Organizing Maps for Imputation of Missing Data in Incomplete Data Matrices.". https://ri.unsam.edu.ar/handle/123456789/1009.

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Folguera, L. E. A. 2015, Self-Organizing Maps for Imputation of Missing Data in Incomplete Data Matrices, Elsevier Science Bv, available at: https://ri.unsam.edu.ar/handle/123456789/1009 [Accessed 24 Jun. 2026].

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Título
Self-Organizing Maps for Imputation of Missing Data in Incomplete Data Matrices
Autor / colaboradores
Folguera, Laura et al
Editorial
Elsevier Science Bv
Año de publicación
2015
ISSN
0169-7439
ISSN
0169-7439
Idioma
eng

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