An analysis of earthquakes clustering based on a second-order diagnostic approach

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Abstract

A diagnostic method for space–time point process is here introduced and applied to seismic data of a fixed area of Japan. Nonparametric methods are used to estimate the intensity function of a particular space–time point process and on the basis of the proposed diagnostic method, second-order features of data are analyzed: this approach seems to be useful to interpret space–time variations of the observed seismic activity and to focus on its clustering features.
Lingua originaleEnglish
Titolo della pubblicazione ospiteData analysis and classification
Pagine309-317
Numero di pagine9
Stato di pubblicazionePublished - 2010

Serie di pubblicazioni

NomeSTUDIES IN CLASSIFICATION, DATA ANALYSIS, AND KNOWLEDGE ORGANIZATION

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earthquake
seismic data
method
analysis
seismic activity

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Adelfio, G. (2010). An analysis of earthquakes clustering based on a second-order diagnostic approach. In Data analysis and classification (pagg. 309-317). (STUDIES IN CLASSIFICATION, DATA ANALYSIS, AND KNOWLEDGE ORGANIZATION).

An analysis of earthquakes clustering based on a second-order diagnostic approach. / Adelfio, Giada.

Data analysis and classification. 2010. pag. 309-317 (STUDIES IN CLASSIFICATION, DATA ANALYSIS, AND KNOWLEDGE ORGANIZATION).

Risultato della ricerca: Chapter

Adelfio, G 2010, An analysis of earthquakes clustering based on a second-order diagnostic approach. in Data analysis and classification. STUDIES IN CLASSIFICATION, DATA ANALYSIS, AND KNOWLEDGE ORGANIZATION, pagg. 309-317.
Adelfio G. An analysis of earthquakes clustering based on a second-order diagnostic approach. In Data analysis and classification. 2010. pag. 309-317. (STUDIES IN CLASSIFICATION, DATA ANALYSIS, AND KNOWLEDGE ORGANIZATION).
Adelfio, Giada. / An analysis of earthquakes clustering based on a second-order diagnostic approach. Data analysis and classification. 2010. pagg. 309-317 (STUDIES IN CLASSIFICATION, DATA ANALYSIS, AND KNOWLEDGE ORGANIZATION).
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