|
|
E-LIS. E-prints in Library and Information Science >
List of countries by continent >
EUROPE >
France >
Conference Paper >
Rossi, F. Visualization methods for metric studies, 2006. In International Workshop on Webometrics, Informetrics and Scientometrics & Seventh COLLNET Meeting,Nancy (France),May 10 - 12, 2006.(Unpublished) [Conference Paper].
See the references list of this item
Citable URI:
http://hdl.handle.net/10760/7436
Files in This Item:
| File |
Description |
Size | Format | Visibility |
| 64a.pdf | | 235.21 kB | Adobe PDF | View/Open
|
|
References
- S. K. Card, J. D. Mackinlay, and B. Shneiderman, editors. Readings in Information Visualization: Using Vision to Think, Morgan Kaufmann, San Francisco, 1999.
- C. G. Healey, K. S. Booth, and J.T. Enns. Visualizing real-time multivariate data using preattentive processing. ACM Transactions on Modeling and Computer Simulation, 5(3):190-221, July 1995.
- J.-D. Fekete and C. Plaisant. Interactive information visualization of a million items. In Proceedings of IEEE Symposium on Information Visualization 2002 (InfoVis 2002), pages 117-124, Boston (USA), 2002.
- J. D. Mackinlay. Automating the design of graphical presentations of relational information. ACM Transactions on Graphics, 5(2):110-141, April 1986.
- P. E. Hoffman. Table Visualizations: A Formal Model and Its Applications. PhD thesis, University of Massachusetts at Lowell, 1999.
- C. J. C. Burges. Geometric methods for feature extraction and dimensional reduction. In L. Rokach and O. Maimon, editors, Data Mining and Knowledge Discovery Handbook: A Complete Guide for Practitioners and Researchers. Kluwer Academic Publishers, 2005.
- G. Salton, C. Yang, and A. Wong. A vector space model for automatic indexing. Communications of the ACM, 18(11):613-620, 1975.
- H. D. White, and K. W. McCain. Visualization of literatures. In M. E. Williams, editor, Annual Review of Information Science and Technology, 32:99-168. Medford, NJ: Information Today, 1997.
- K. Börner, C. Chen, and K. Boyack. Visualizing Knowledge Domains. In B. Cronin, editor, Annual Review of Information Science & Technology, 37:179-255. Medford, NJ: Information Today, 2003.
- J.-D. Fekete, G. Grinstein, and C., Plaisant. IEEE InfoVis 2004 Contest, the history of InfoVis, http://www.cs.umd.edu/hcil/iv04contest/, 2004.
- J.-D. Fekete and C. Plaisant. Les leçons tirées des deux compétitions de visualisation d'information. In Proceedings of IHM2004, pages 7-12, Namur, Belgium, September 2004.
- W. S. Torgerson. Multidimensional scaling: I. theory and method. Psychometrika, 17:401-419, 1952.
- J. B. Kruskal. Multidimensional scaling by optimizing goodness of fit to a nonmetric hypothesis. Psychometrika, 29:1--27, 1964.
- J. B. Kruskal. Nonmetric multidimensional scaling: a numerical method. Psychometrika, 29:115--129, 1964.
- J. W. Sammon. A nonlinear mapping for data structure analysis. IEEE Transactions on Computer, C-18(5):401-409, May 1969.
- P. Demartines and J. Hérault. Curvilinear component analysis: a self-organizing neural network for nonlinear mapping of data sets. IEEE Transactions on Neural Networks, 8(1):148--154, 1997.
- A. Morrison, G., Ross, and M. Chalmers. Multidimensional Scaling through Sampling, Springs and Interpolation, Information Visualization 2(1): 68-77, March 2003.
- A. Morrison, and M. Chalmers. A Pivot-Based Routine for Improved Parent-Finding in Hybrid MDS,
- Information Visualization 3(2):109-112, 2004.
- M. M. Bronstein, A. M. Bronstein, R. Kimmel, and I. Yavneh, Multigrid multidimensional scaling, Numerical Linear Algebra with Applications, 13(2-3):149-171, 2006.
- J. Laub, and K.-R. Müller. Feature Discovery in Non-Metric Pairwise Data, Journal of Machine Learning Research, 5:801-818, July 2004.
- G. S. Davidson, B. Hendrickson, D. K. Johnson, C. E. Meyers, and B. N. Wylie. Knowledge Mining With VxInsight: Discovery Through Interaction, Journal of Intelligent Information Systems, 11:259-285, 1998.
- G. S. Davidson, B. N. Wylie, and K. W. Boyack. Cluster stability and the use of noise in interpretation of clustering. Proc. IEEE Information Visualization, pages 23-30, 2001.
- C. Faloutsos and K.-I. Lin. FastMap: A fast algorithm for indexing, data-mining and visualization of traditional and multimedia datasets. In Proceedings ACM SIGMOD'95, pages 163-174, 1995.
- J. C. Platt. FastMap, MetricMap, and Landmark MDS are all Nystörm algorithms. In Proceedings of the 10th International Workshop on Artificial Intelligence and Statistics, pages 261-268, 2005.
- J. Venna and S. Kaski. Neighborhood preservation in nonlinear projection methods: An experimental study. In Proceedings of ICANN 2001, pages 485-491, Berlin, 2001.
- S. Kaski, J. Nikkila, M. Oja, J. Venna, P. Toronen, and E. Castren. Trustworthiness and metrics in visualizing similarity of gene expression. BMC Bioinformatics:4, 2003.
- M. Aupetit. Visualizing distortion in continuous projection techniques. In Proceedings of XIIth European Symposium on Artificial Neural Networks (ESANN 2004), pages 465-470, Bruges (Belgium), April 2004.
- R. C. T. Lee, J. R. Slagle, and H. Blum. A triangulation method for the sequential mapping of points from N-Space to Two-Space. IEEE Transactions on Computer (26):288-292, 1977.
- T. Kohonen. Self-Organizing Maps, volume~30 of Springer Series in Information Sciences. Springer, third edition, 2001.
- S. A. Morris, C. DeYong, Z. Wu, S. Salman, and D. Yemenu. DIVA: a visualization system for exploring document databases for technology forecasting. Computers & Industrial Engineering 43:841-862, 2002.
- X. Lin, H. D. White, and J. Buzydlowski. Real-time author co-citation mapping for online searching. International Journal of Information Processing & Management, 39(5):689-706, 2003.
- C. Ambroise and G. Govaert. Analyzing dissimilarity matrices via Kohonen maps. In Proceedings of 5th Conference of the IFCS 1996, volume 2, pages 96-99, Kobe (Japan), 1996.
- T. Kohonen and P. J. Somervuo. Self-organizing maps of symbol strings. Neurocomputing, 21:19-30, 1998.
- T. Graepel and K. Obermayer. A stochastic self-organizing map for proximity data. Neural Computation, 11(1):139-155, 1999.
- A. El Golli, B. Conan-Guez, and F. Rossi. A self organizing map for dissimilarity data. In Proceedings of IFCS 2004, pages 61-68, Chicago, Illinois (USA), 2004.
- B. Conan-Guez, F. Rossi, and A. El Golli. Fast algorithm and implementation of dissimilarity self-organizing maps. Neural Networks, to be published in 2006.
- S. Deerwester, S. T. Dumais, G. W. Furnas, T. K. Landauer, and R. A. Harshman. Indexing by latent semantic analysis, Journal of the American Society for Information Science, 41(6):391-407, 1990.
- X. Lin, D. Soergel, and G. Marchionini. A self-organizing semantic map for information retrieval. Proceedings of the Fourteenth Annual International ACM/SIGIR Conference on Research and Development in Information Retrieval, pages 262-269, 1991.
- T. Kohonen, S. Kaski, K. Lagus, J. Salöjarvi, J. Honkela, V. Paatero, and A. Saarela. Self organization of a massive text document collection. IEEE Transactions on Neural Networks, 11(3):574-585, May 2000.
- J. Vesanto. SOM-based data visualization methods. Intelligent Data Analysis, 3(2):111--126, 1999.
- J. Vesanto. Data Exploration Process Based on the Self-Organizing Map. PhD thesis, Helsinki University of Technology, Espoo (Finland), May 2002.
- J. Himberg. From Insights to Innovations: Data Mining, Visualization, and User Interfaces. PhD thesis, Helsinki University of Technology, Espoo (Finland), November 2004.
- H. Chen, C. Schuffels, and R. Orwig. Internet Categorization and Search: A Self-Organizing Approach. Journal of Visual Communication and Image Representation, Special Issue on Digital Libraries, 7(1):88-102, 1996.
- D. Roussinov, and H. Chen. A Scalable Self-Organizing Map Algorithm for Textual Classification: A Neural Network Approach to Automatic Thesaurus Generation. Communication and Cognition in Artificial Intelligence Journal (CC-AI), 15(1-2):81-111, 1998.
- T. Ong, H. Chen, W. Sung, and B. Zhu. Newsmap: a knowledge map for online news. Decision Support Systems, 39:583-597, 2005.
- R. T. Freeman, and H. Yin. Tree view self-organization of web content. Neurocomputing, 63:415-446, 2005.
- J.-C. Lamirel. Application d'une approche symbolico-connexionniste pour la conception d'un système documentaire hautement interactif, Thèse de l'Université de Nancy 1 Henri Poincaré, 1995.
- X. Polanco, C. Francois, and J. C. Lamirel. Using artificial neural networks for mapping of science and technology: A multi-self-organizing-maps approach. Scientometrics, 51(1): 267-292, 2001.
- 49. J. Lamping, R. Rao, and P. Pirolli. A focus+context technique based on hyperbolic geometry for visualizing large hierarchies. In Proceedings of the ACM Conference on Human Factors in Computing Systems, CHI, pages 401-408, 1995.
- H. Ritter. Self-organizing maps in non-euclidean spaces. In E. Oja and S. Kaski, editors, Kohonen Maps, pages 97-108. Elsevier, Amsterdam, 1999.
- J. Ontrup and H. Ritter. A hierarchically growing hyperbolic self-organizing map for rapid structuring of large data sets. In Proceedings of the 5th Workshop on Self-Organizing Maps, Paris (France), 2005.
- C. Yang, H. Chen and K. Hong. Visualization of large category map for Internet browsing. Decision Support Systems, 35(1):89-102, April 2003.
- A. Skupin, and B. P. Buttenfield. Spatial Metaphors for Visualizing Very Large Data Archives. Proceedings GIS/LIS’96. Bethesda: American Society for Photogrammetry and Remote Sensing, pages 607-617, 1996.
- A. Skupin. From Metaphor to Method: Cartographic Perspectives on Information Visualization. In: Roth, S.F., and Keim, D.A. (Eds.) Proceedings IEEE Symposium on Information Visualization (InfoVis 2000), Salt Lake City, Utah, pages 91-97, 2000.
- A. Skupin. A Cartographic Approach to Visualizing Conference Abstracts. IEEE Computer Graphics and Applications, 22(1):50-58, 2002.
- A. Skupin, and S. I. Fabrikant. Spatialization Methods: A Cartographic Research Agenda for Non-Geographic Information Visualization. Cartography and Geographic Information Science, 30(2):99-119, 2003.
- C. M. Bishop. Latent variable models. In M. I. Jordan editor, Learning in Graphical Models, pp. 371–403. MIT Press, 1999.
- J. B. Tenenbaum, V. de Silva, and J. C. Langford. A global geometric framework for nonlinear dimensionality reduction. Science, 290(22):2319-2323, December 2000.
- J. A. Lee, A. Lendasse, and M. Verleysen. Nonlinear projection with curvilinear distances: Isomap versus curvilinear distance analysis. Neurocomputing, 57:49-76, March 2004.
- S. T. Roweis and L. K. Saul. Nonlinear dimensionality reduction by locally linear embedding. Science, 290(22):2323-2326, December 2000.
- L. K. Saul, K. Q. Weinberger, F. Sha, J. Ham, and D. D. Lee. Spectral methods for dimensionality reduction. In B. Schlkopf, O. Chapelle, and A. Zien, editors, Semisupervised Learning. MIT Press, Cambridge, MA, 2006.
- M. E. Tipping and C. M. Bishop. Probabilistic principal component analysis. Journal of the Royal Statistical Society, Series B, 61(3):611-622, 1999.
- M. E. Tipping and C. M. Bishop. Mixtures of probabilistic principal component analyzers. Neural Computation, 11(2):443-482, 1999.
- C. M. Bishop and M. E. Tipping. A hierarchical latent variable model for data visualization. IEEE Transactions on Pattern Analysis and Machine Intelligence, 20(3):281-293, 1998.
- C. M. Bishop, M. Svensén, and C. K. I. Williams. GTM: The generative topographic mapping. Neural Computation, 10(1):215-34, 1998.
- P. Tino and I. Nabney. Hierarchical GTM: Constructing localized non-linear projection manifolds in a principled way. IEEE Transactions on Pattern Analysis and Machine Intelligence, 24(5):639-656, 2002.
- C. M. Bishop, M. Svensén, and C. K. I. Williams. Developments of the generative topographic mapping. Neurocomputing, 21:203-224, 1998.
- A. Kabán and M. Girolami. Combined Latent Class and Trait Model for the Analysis and Visualisation of Discrete Data. IEEE Transactions on Pattern Analysis and Machine Intelligence, 23(8):859-872, 2001.
- I. Nabney, Y. Sun, P. Tino, and A Kabán. Semisupervised Learning of Hierarchical Latent Trait Models for Data Visualization. IEEE Transactions on Knowledge and Data Engineering, 17(3), 2005.
- A. Kabán and M. Girolami. A Dynamic Probabilistic Model to Visualize Topic Evolution in Text Streams. Journal of Intelligent Information Systems, special issue on Automated Text Categorization, 18(2/3):107-125, 2002.
- P. Tino, A. Kabán, and Y. Sun. A Generative Probabilistic Approach to Visualizing Sets of Symbolic Sequences. Proceedings of the Tenth ACM SIGKDD International Conference on Knowledge Discovery and Data Mining - (KDD04), August 22-25, Seattle, Washington, USA, pages 701-706, 2004.
- M. E. J. Newman. The structure and function of complex networks. SIAM Review, 45:167-256, 2003.
- E. Garfield, I. H. Sher, and R. J. Torpie. The Use of Citation Data in Writing the History of Science. Published by The Institute for Scientific Information, December 1964.
- H. Small, and E. Garfield. The geography of science: disciplinary and national mappings. Journal of Information Science, 11(4) :147-159, 1985.
- C. Chen. Structuring and visualizing the WWW with Generalized Similarity Analysis. In 8th ACM Conference on Hypertext (Hypertext '97), Southampton, UK, ACM Press, pages 177-186, 1997.
- C. Chen. Generalized Similarity Analysis and Pathfinder Network Scaling. Interacting with Computers, 10 (2):107-128, 1998.
- R. W. Schvaneveldt. Pathfinder Associative Networks: Studies in Knowledge Organization. Norwood, NJ. Ablex Publishing, 1990.
- T. Kamada, and S. Kawai. An algorithm for drawing general undirected graphs. Information Processing Letters, 31(1):7-15, 1989.
- C. Chen. Visualizing semantic spaces and author co-citation networks in digital libraries. Information Processing and Management, 35(2):401-420, 1999.
- S. Noel, C.-H. H. Chu, and V. Raghavan. Co-Citation Count versus Correlation for Influence Network Visualization, Information Visualization, 2(3), 2003.
- C. Chen, and S. Morris. Visualizing evolving networks: Minimum spanning trees versus Pathfinder networks. In IEEE Symposium on Information Visualization, Seattle, Washington, IEEE Computer Society Press, pages 67-74, 2003.
- G. Di Battista, P. Eades, R. Tamassia, and I. G. Tollis. Graph Drawing: Algorithms for the Visualization of Graphs. Prentice Hall, 1999.
- I. Herman, G. Melançon, and M. Scott Marshall. Graph visualization and navigation in information visualization. IEEE Transactions on Visualization and Computer Graphics, 6(1):24--43, 2000.
- V. Batagelj, and A. Mrvar. Pajek: Program Package for large network analysis (http://vlado.fmf.uni-lj.si/pub/networks/pajek/). XVII Sunbelt Social Networks Conference San Diego, February 13-16, 1997.
- W. Ke, K. Börner, and L. Viswanath. Major Information Visualization Authors, Papers and Topics in the ACM Library. IEEE Symposium on Information Visualization (INFOVIS'04), 2004.
- A. Ahmed, T. Dwyer, C. Murray, L. Song, Y. X. Wu. WilmaScope Graph Visualisation. IEEE Symposium on Information Visualization (INFOVIS'04), 2004.
- T. Dwyer and P. Eckersley. WilmaScope - a 3D Graph Visualization System. In Graph Drawing Software, M. Junger and P. Mutzel, editors, series "Mathematics and Visualization", Springer Verlag, 2003.
- M. Delest, T. Munzner, D. Auber, J.-P. Domenger. Exploring InfoVis Publication History with Tulip. IEEE Symposium on Information Visualization (INFOVIS'04), 2004.
- D. Auber, Y. Chiricota, F. Jourdan, and G. Melançon. Multiscale Visualization of Small World Networks, IEEE Symposium on Information Visualization (INFOVIS'03), pages 75-81, 2003.
|