This map shows the geographic impact of Edwin Diday's research. It shows the number of citations coming from papers published by authors working in each country. You can also color the map by specialization and compare the number of citations received by Edwin Diday with the expected number of citations based on a country's size and research output (numbers larger than one mean the country cites Edwin Diday more than expected).
This network shows the impact of papers produced by Edwin Diday. Nodes represent research fields, and links connect fields that are likely to share authors. Colored nodes show fields that tend to cite the papers produced by Edwin Diday. The network helps show where Edwin Diday may publish in the future.
Co-authorship network of co-authors of Edwin Diday
This figure shows the co-authorship network connecting the top 25 collaborators of Edwin Diday.
A scholar is included among the top collaborators of Edwin Diday based on the total number of
citations received by their joint publications. Widths of edges
represent the number of papers authors have co-authored together.
Node borders
signify the number of papers an author published with Edwin Diday. Edwin Diday is excluded from
the visualization to improve readability, since they are connected to all nodes in the network.
All Works
20 of 20 papers shown
1.
Billard, Lynne & Edwin Diday. (2019). Clustering Methodology for Symbolic Data. Base Institutionnelle de Recherche de l'université Paris-Dauphine (BIRD) (University Paris-Dauphine).8 indexed citations
2.
Cury, Alexandre, Christian Crémona, & Edwin Diday. (2014). A methodology based on symbolic data analysis for structural damage assessment. Base Institutionnelle de Recherche de l'université Paris-Dauphine (BIRD) (University Paris-Dauphine).
Diday, Edwin. (2011). A Generalisation of the Mixture Decomposition Problem in the Symbolic Data Analysis Framework. Base Institutionnelle de Recherche de l'université Paris-Dauphine (BIRD) (University Paris-Dauphine).4 indexed citations
6.
Billard, Lynne & Edwin Diday. (2011). Symbolic Data Analysis: Definition and Examples. Base Institutionnelle de Recherche de l'université Paris-Dauphine (BIRD) (University Paris-Dauphine).5 indexed citations
Billard, Lynne & Edwin Diday. (2007). Symbolic Data Analysis: Conceptual Statistics and Data Mining (Wiley Series in Computational Statistics). John Wiley & Sons, Inc. eBooks.62 indexed citations
Groenen, Patrick J. F., et al.. (2005). SymScal: symbolic multidimensional scaling of interval dissimilarities. RePub (Erasmus University Rotterdam).4 indexed citations
Vrac, Mathieu, A. Chédin, & Edwin Diday. (2004). Décomposition de mélange de distributions et application à des données climatiques. French digital mathematics library (Numdam). 52(1). 67–96.2 indexed citations
Diday, Edwin, et al.. (1997). Extension de l'analyse en composantes principales à des données de type intervalle. French digital mathematics library (Numdam). 45(3). 5–24.90 indexed citations
15.
Bertrand, P. & Edwin Diday. (1990). Une généralisation des arbres hiérarchiques: les représentations pyramidales. French digital mathematics library (Numdam). 38(3). 53–78.2 indexed citations
16.
Diday, Edwin, et al.. (1989). Data analysis, learning symbolic and numeric knowledge : proceedings of the conference on Data Analysis, Learning Symbolic and Numeric Knowledge, Antibes, September 11-14, 1989.7 indexed citations
17.
Diday, Edwin. (1983). Croisements, ordres et ultramétriques. French digital mathematics library (Numdam). 83(83). 31–54.5 indexed citations
18.
Diday, Edwin. (1982). Inversions en classification hiérarchique : application à la construction adaptative d'indices d'agrégation. French digital mathematics library (Numdam). 31(1). 45–62.3 indexed citations
19.
Diday, Edwin, et al.. (1974). The Dynamic Clusters Method in Pattern Recognition.. IFIP Congress. 691–697.16 indexed citations
20.
Diday, Edwin. (1971). Une nouvelle méthode en classification automatique et reconnaissance des formes la méthode des nuées dynamiques. French digital mathematics library (Numdam). 19(2). 19–33.88 indexed citations
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