Object structure
Title:

The use of cluster analysis in the classification of similarities in variables associated with agricultural greenhouse gases emissions in OECD countries

Creator:

Kolasa-Więcek, Alicja

Publisher:

Instytut Rozwoju Wsi i Rolnictwa Polskiej Akademii Nauk

Place of publishing:

Warszawa

Date issued/created:

2013

Type of object:

Journal/Article

Subject and Keywords:

cluster analysis ; k-means method ; Ward’s method ; greenhouse gases ; agriculture emissions

Abstract:

The aim of the research was to group members of the Organization for Economic Co-operation and Development (OECD) into homogeneous subsets for similarities of agricultural variables affecting greenhouse gas emissions. Cluster analysis, which is a tool for exploratory data analysis, was used. This method is based on grouping of elements in a relatively homogeneous class. The most popular non-hierarchical clustering method is k-means. The method is based on an initial a priori assumption of input data set to a predetermined number of classes. In order to verify if the number of clusters was assumed properly, results were compared with another method of cluster analysis – a hierarchical method. Ward’s method of classifying on the basis of minimizing the interclass variance was used. Countries qualified for each cluster derived using k-means were identical to those obtained using Ward’s method. Analysis of the results lead to the conclusion that the geographical location of the countries was key to its inclusion in a cluster this was shown clearly in cluster 1 (Finland, Iceland, Norway, Sweden, Canada), cluster 2 (Austria, Czech Republic, Poland, Slovakia, Switzerland) and cluster 4 (Australia, New Zealand). Group 3 is a 15-element set of countries in predominantly highly industrialized regions.

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Relation:

Wieś i Rolnictwo

Issue:

1 (158)

Start page:

59

End page:

66

Resource type:

Text

Resource Identifier:

doi:10.53098/wir.2013.1.158/03 ; 0137-1673 (print); 2657-5213 (on-line)

Source:

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Language:

en

Language of abstract:

eng

Rights:

Creative Commons Attribution BY 4.0 license

Terms of use:

Copyright-protected material. [CC BY 4.0] May be used within the scope specified in Creative Commons Attribution BY 4.0 license, full text available at:

Digitizing institution:

Institute of Rural and Agricultural Development of the Polish Academy of Sciences

Original in:

Library of the Institute of Rural and Agriculture Development of the PAS

Projects co-financed by:

"Development of scientific journals" program - Ministry of Science and Higher Education (project number RCN/SP/0473/2021/1)

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