Multi-way data analysis is a multivariate data analysis technique having a wide application in some fields. Nevertheless, the development of classification tools for this type of representation is incipient yet. In this paper we study the dissimilarity representation for the classification of three-way data, as dissimilarities allow the representation of multi-dimensional objects in a natural way. As an example, the classification of seismic volcanic events is used. It is shown that in this application classification based on 2D spectrograms, dissimilarities perform better than on 1D spectral features
The analysis and classification of seismic patterns, which are typically registered as digital signa...
Missing values can occur frequently in many real world situations. Such is the case of multi-way dat...
Abstract. Missing values can occur frequently in many real world sit-uations. Such is the case of mu...
The dissimilarity representation has demonstrated advantages in the solution of classification probl...
Abstract. The dissimilarity representation has demonstrated advan-tages in the solution of classific...
Representation of objects by multi-dimensional data arrays has become very common for many research ...
Automatic classification of seismic signals has been typically carried out on feature-based represen...
Multi-way data Classification Dissimilarity representation a b s t r a c t Representation of objects...
Automatic classification of seismic signals has been typically carried out on feature-based represen...
For many pattern recognition applications, objects are represented by high-dimensional feature vecto...
The authors are to be congratulated for a systematic in-vestigation of the accurate and non subjecti...
Keywords-volcano eruptions; combining classifier; spectrum; spectrogram; Abstract—Seismic events in ...
Classification of seismic signals at Colombian volcanoes has been carried out manually by visual ins...
Abstract. The representation of objects by multi-dimensional arrays is widely applied in many resear...
Abstract. The analysis and classification of seismic patterns, which are typically registered as dig...
The analysis and classification of seismic patterns, which are typically registered as digital signa...
Missing values can occur frequently in many real world situations. Such is the case of multi-way dat...
Abstract. Missing values can occur frequently in many real world sit-uations. Such is the case of mu...
The dissimilarity representation has demonstrated advantages in the solution of classification probl...
Abstract. The dissimilarity representation has demonstrated advan-tages in the solution of classific...
Representation of objects by multi-dimensional data arrays has become very common for many research ...
Automatic classification of seismic signals has been typically carried out on feature-based represen...
Multi-way data Classification Dissimilarity representation a b s t r a c t Representation of objects...
Automatic classification of seismic signals has been typically carried out on feature-based represen...
For many pattern recognition applications, objects are represented by high-dimensional feature vecto...
The authors are to be congratulated for a systematic in-vestigation of the accurate and non subjecti...
Keywords-volcano eruptions; combining classifier; spectrum; spectrogram; Abstract—Seismic events in ...
Classification of seismic signals at Colombian volcanoes has been carried out manually by visual ins...
Abstract. The representation of objects by multi-dimensional arrays is widely applied in many resear...
Abstract. The analysis and classification of seismic patterns, which are typically registered as dig...
The analysis and classification of seismic patterns, which are typically registered as digital signa...
Missing values can occur frequently in many real world situations. Such is the case of multi-way dat...
Abstract. Missing values can occur frequently in many real world sit-uations. Such is the case of mu...