Welcome to D
SIGMOD 2003
PODS 2003
SIGMOD-RECOR
ADBIS
CIDR 2003
CIKM 2003
DASFAA 2003
Data Enginee
DEBS
DMKD 2003
DOLAP 2003
DPDJ 2003
ER
GIS 2003
Hypertext 20
ICDE 2003
ICDM 2003
ICDT 2003
JCDL 2003
KRDB 2003
MIR 2003
MIS 2003
MMDB 2003
RIDE 2003
SBBD 2003
SIGIR 2003
SIGIR-FORUM
SIGKDD 2003
SIGKDD-EXP
SSDBM 2003
TIME 2003
TODS
VLDB 2003
VLDB Journal
WIDM 2003
About DiSC 2
Editorial Bo
Acknowledgem
DiSC 2004 Pr
ADVIS
DiSC'04 Feed
DiSC'04 Site
Search DiSC'
<<<Author Index>>>
Copyright No

Daniel A. Keim

Papers on DiSC'04


HD-Eye - Visual Clustering of High dimensional Data

PixelMaps: A New Visual Data Mining Approach for Analyzing Large Spatial Data Sets

Analyzing High-Dimensional Data by Subspace Validity

A Database Striptease or How to Manage Your Personal Databases

Publications


Note: Links lead to the DBLP on the Web.

Daniel A. Keim

Daniel A. Keim, Benjamin Bustos : Similarity Search in Multimedia Databases. ICDE 2004 : 873

Daniel A. Keim, Stephen C. North , Christian Panse : CartoDraw: A Fast Algorithm for Generating Contiguous Cartograms. IEEE Transactions on Visualization and Computer Graphics 10 (1): 95-110 (2004)

Daniel A. Keim, Nick Koudas : Introduction to special issue with best papers from KDD 2002. Inf. Syst. 29 (4): 271-272 (2004)

Daniel A. Keim, Christian Panse , Mike Sips : Visual Data Mining of Large Spatial Data Sets. DNIS 2003 : 201-215

Alexander Hinneburg , Daniel A. Keim: Visual interaction to solving complex optimization problems. Data Visualization: The State of the Art 2003 : 407-422

Alexander Hinneburg , Daniel A. Keim, Markus Wawryniuk : HD-Eye - Visual Clustering of High dimensional Data. ICDE 2003 : 753-755

Amihood Amir , Reuven Kashi , Nathan S. Netanyahu , Daniel A. Keim, Markus Wawryniuk : Analyzing High-Dimensional Data by Subspace Validity. ICDM 2003 : 473-476

Daniel A. Keim, Christian Panse , Mike Sips , Stephen C. North : PixelMaps: A New Visual Data Mining Approach for Analyzing Large Spatial Data Sets. ICDM 2003 : 565-568

Daniel A. Keim, Christian Panse , Jörn Schneidewind , Mike Sips , Ming C. Hao , Umeshwar Dayal : Pushing the Limit in Visual Data Exploration: Techniques and Applications. KI 2003 : 37-51

Martin L. Kersten , Gerhard Weikum , Michael J. Franklin , Daniel A. Keim, Alejandro P. Buchmann , Surajit Chaudhuri : A Database Striptease or How to Manage Your Personal Databases. VLDB 2003 : 1043-1044

David J. Hand , Daniel A. Keim, Raymond T. Ng : Guest Editorial. Data Min. Knowl. Discov. 7 (3): 239-240 (2003)

David J. Hand , Daniel A. Keim, Raymond T. Ng : Guest Editorial. Data Min. Knowl. Discov. 7 (4): 347-348 (2003)

Daniel A. Keim, Stephen C. North , Christian Panse , Jörn Schneidewind : Visualizing geographic information: VisualPoints vs. CartoDraw. Information Visualization 2 (1): 58-67 (2003)

Alexander Hinneburg , Daniel A. Keim: A General Approach to Clustering in Large Databases with Noise. Knowl. Inf. Syst 5 (4): 387-415 (2003)

Daniel A. Keim, Stephen C. North , Christian Panse , Jörn Schneidewind : Efficient Cartogram Generation: A Comparison. INFOVIS 2002 : 33-36

Daniel A. Keim, Martin Heczko , Alexander Hinneburg , Markus Wawryniuk : Multi-Resolution Similarity Search in Image Databases. Multimedia Information Systems 2002 : 76-85

Alexander Hinneburg , Daniel A. Keim, Markus Wawryniuk : HD-Eye: visual clustering of high dimensional data. SIGMOD Conference 2002 : 629

Daniel A. Keim: Datenvisualisierung und Data Mining. Datenbank-Spektrum 2 : 30-39 (2002)

Martin Heczko , Daniel A. Keim, Dietmar Saupe , Dejan V. Vranic : Verfahren zur Ähnlichkeitssuche auf 3D-Objekten. Datenbank-Spektrum 2 : 54-63 (2002)

Daniel A. Keim: Information Visualization and Visual Data Mining. IEEE Transactions on Visualization and Computer Graphics 8 (1): 1-8 (2002)

Daniel A. Keim, Ming C. Hao , Umeshwar Dayal : Hierarchical Pixel Bar Charts. IEEE Transactions on Visualization and Computer Graphics 8 (3): 255-269 (2002)

Daniel A. Keim, Ming C. Hao , Umeshwar Dayal , Meichun Hsu : Pixel bar charts: a visualization technique for very large multi-attribute data sets? Information Visualization 1 (1): 20-34 (2002)

Stephen G. Eick , Daniel A. Keim: Visual Data Mining - KDD Workshop Report. SIGKDD Explorations 3 (2): 70 (2002)

Martin Heczko , Daniel A. Keim, Dietmar Saupe , Dejan V. Vranic : Verfahren zur Ähnlichkeitssuche auf 3D-Objekten. BTW 2001 : 384-401

Charu C. Aggarwal , Alexander Hinneburg , Daniel A. Keim: On the Surprising Behavior of Distance Metrics in High Dimensional Spaces. ICDT 2001 : 420-434

Stefan Berchtold , Christian Böhm , Daniel A. Keim, Florian Krebs , Hans-Peter Kriegel : On Optimizing Nearest Neighbor Queries in High-Dimensional Data Spaces. ICDT 2001 : 435-449

Daniel A. Keim, Ming C. Hao , Julian Ladisch , Meichun Hsu , Umeshwar Dayal : Pixel Bar Charts: A New Technique for Visualizing Large Multi-Attribute Data Sets without Aggregation. INFOVIS 2001 : 113-

Christian Böhm , Stefan Berchtold , Daniel A. Keim: Searching in high-dimensional spaces: Index structures for improving the performance of multimedia databases. ACM Comput. Surv. 33 (3): 322-373 (2001)

Daniel A. Keim: Visual exploration of large data sets. Commun. ACM 44 (8): 38-44 (2001)

Alexander Hinneburg , Daniel A. Keim, Wolfgang Brandt : Clustering 3D-structures of Small Aminoacid-chains for Detecting Dependence from Their Sequential Context in Proteins. BIBE 2000 : 43-49

Martin Heczko , Daniel A. Keim, Roger Weber : Analysis of the Effectiveness-Efficiency Dependence for Image Retrieval. DELOS Workshop: Information Seeking, Searching and Querying in Digital Libraries 2000

Stefan Berchtold , Christian Böhm , Daniel A. Keim, Hans-Peter Kriegel , Xiaowei Xu : Optimal Multidimensional Query Processing Using Tree Striping. DaWaK 2000 : 244-257

Stefan Berchtold , Daniel A. Keim: Indexing High-Dimensional Spaces: Database Support for Next Decade's Applications. ICDE 2000 : 698-699

Alexander Hinneburg , Charu C. Aggarwal , Daniel A. Keim: What Is the Nearest Neighbor in High Dimensional Spaces? VLDB 2000 : 506-515

Stefan Berchtold , Daniel A. Keim, Hans-Peter Kriegel , Thomas Seidl : Indexing the Solution Space: A New Technique for Nearest Neighbor Search in High-Dimensional Space. IEEE Trans. Knowl. Data Eng. 12 (1): 45- (2000)

Daniel A. Keim: Designing Pixel-Oriented Visualization Techniques: Theory and Applications. IEEE Transactions on Visualization and Computer Graphics 6 (1): 59-78 (2000)

Daniel A. Keim, Alexander Hinneburg : Interesting KDD-News from SIGMOD'99. SIGKDD Explorations 1 (2): 117 (2000)

Eleftherios Koutsofios , Stephen C. North , Russell Truscott , Daniel A. Keim: Visualizing Large-Scale Telecommunication Networks and Services. IEEE Visualization 1999 : 457-461

Daniel A. Keim, Alexander Hinneburg : Clustering Techniques for Large Data Sets - from the Past to the Future. KDD Tutorial Notes 1999 : 141-181

Daniel A. Keim: Efficient Geometry-based Similarity Search of 3D Spatial Databases. SIGMOD Conference 1999 : 419-430

Alexander Hinneburg , Daniel A. Keim: Clustering Methods for Large Databases: From the Past to the Future. SIGMOD Conference 1999 : 509

Daniel A. Keim, Eleftherios Koutsofios , Stephen C. North : Visual Exploration of Large Telecommunication Data Sets. UIDIS 1999 : 12-20

Alexander Hinneburg , Daniel A. Keim: Optimal Grid-Clustering: Towards Breaking the Curse of Dimensionality in High-Dimensional Clustering. VLDB 1999 : 506-517

Daniel A. Keim: Verwendung von Bildern zur Exploration und Analyse großer Datenmengen. GI Jahrestagung 1998 : 23-32

Stefan Berchtold , Daniel A. Keim: Section Coding: A Similarity Search Technique for the Car Manufacturing Industry. IADT 1998 : 256-263

Stefan Berchtold , Bernhard Ertl , Daniel A. Keim, Hans-Peter Kriegel , Thomas Seidl : Fast Nearest Neighbor Search in High-Dimensional Space. ICDE 1998 : 209-218

Daniel A. Keim, Annemarie Herrmann : The Gridfit algorithm: an efficient and effective approach to visualizing large amounts of spatial data. IEEE Visualization 1998 : 181-188

Mihael Ankerst , Stefan Berchtold , Daniel A. Keim: Similarity Clustering of Dimensions for an Enhanced Visualization of Multidimensional Data. INFOVIS 1998 : 52-

Alexander Hinneburg , Daniel A. Keim: An Efficient Approach to Clustering in Large Multimedia Databases with Noise. KDD 1998 : 58-65

Stefan Berchtold , Daniel A. Keim: High-Dimensional Index Structures, Database Support for Next Decade's Applications (Tutorial). SIGMOD Conference 1998 : 501

Stefan Berchtold , Daniel A. Keim, Hans-Peter Kriegel : Section Coding: Ein Verfahren zur Ähnlichkeitssuche in CAD-Datenbanken. BTW 1997 : 152-171

Stefan Berchtold , Christian Böhm , Daniel A. Keim, Hans-Peter Kriegel : A Cost Model For Nearest Neighbor Search in High-Dimensional Data Space. PODS 1997 : 78-86

Stefan Berchtold , Christian Böhm , Bernhard Braunmüller , Daniel A. Keim, Hans-Peter Kriegel : Fast Parallel Similarity Search in Multimedia Databases. SIGMOD Conference 1997 : 1-12

Stefan Berchtold , Daniel A. Keim, Hans-Peter Kriegel : Using Extended Feature Objects for Partial Similarity Retrieval. VLDB J. 6 (4): 333-348 (1997)

Daniel A. Keim: Databases and Visualization. SIGMOD Conference 1996 : 543

Stefan Berchtold , Daniel A. Keim, Hans-Peter Kriegel : The X-tree : An Index Structure for High-Dimensional Data VLDB 1996 : 28-39

Daniel A. Keim, Hans-Peter Kriegel : Visualization Techniques for Mining Large Databases: A Comparison. IEEE Trans. Knowl. Data Eng. 8 (6): 923-938 (1996)

Daniel A. Keim: Pixel-oriented Database Visualizations. SIGMOD Record 25 (4): 35-39 (1996)

Daniel A. Keim, Hans-Peter Kriegel : Visualisierungstechniken zur Exploration und Analyse sehr großer Datenbanken. BTW 1995 : 262-281

Daniel A. Keim, Mihael Ankerst , Hans-Peter Kriegel : Recursive Pattern: A Technique for Visualizing Very Large Amounts of Data. IEEE Visualization 1995 : 279-

Daniel A. Keim, Hans-Peter Kriegel : VisDB: A System for Visualizing Large Databases. SIGMOD Conference 1995 : 482

Daniel A. Keim, Hans-Peter Kriegel : Possibilities and Limits in Visualizing Large Databases. VDB 1995 : 203-214

Daniel A. Keim: Enhancing the Visual Clustering of Query-Dependent Database Visualization techniques Using Screen-Filling Curves. Workshop on Database Issues for Data Visualization 1995 : 101-110

Daniel A. Keim, John Peter Lee , Bhavani M. Thuraisingham , Craig M. Wittenbrink : Database Issues for Data Visualization: Supporting Interactive Database Explorartion. Workshop on Database Issues for Data Visualization 1995 : 12-25

Daniel A. Keim, Hans-Peter Kriegel , Andreas Miethsam : Query Translation Supporting the Migration of Legacy Databases into Cooperative Information Systems. CoopIS 1994 : 203-214

Daniel A. Keim, Hans-Peter Kriegel , Thomas Seidl : Supporting Data Mining of Large Databases by Visual Feedback Queries. ICDE 1994 : 302-313

Daniel A. Keim, Hans-Peter Kriegel , Andreas Miethsam : Object-Oriented Querying of Existing Relations Databases. DEXA 1993 : 325-336

Daniel A. Keim, Hans-Peter Kriegel , Thomas Seidl : Visual Feedback in Querying Large Databases. IEEE Visualization 1993 : 158-165

Daniel A. Keim, Hans-Peter Kriegel , Andreas Miethsam : Integration of Relational Databases in a Multidatabase System based on Schema Enrichment. RIDE-IMS 1993 : 96-104

Daniel A. Keim, Hans-Peter Kriegel : Using Visualization to Support Data Mining of Large Existing Databases. Workshop on Database Issues for Data Visualization 1993 : 210-229

John Boyle , Stephen G. Eick , Matthias Hemmje , Daniel A. Keim, John Peter Lee , Eric E. Sumner Jr. : Database Issues for Data Visualization: Interaction, User Interfaces, and Presentation. Workshop on Database Issues for Data Visualization 1993 : 25-34

Daniel A. Keim, Edy S. Prawirohardjo : Datenbankmaschinen: Performanz durch Parallelität Bibliographisches Institut 1992

Daniel A. Keim, Vincent Y. Lum : GRADI: A Graphical Database Interface for a Multimedia DBMS. IDS 1992 : 95-112

Daniel A. Keim, Vincent Y. Lum : Visual Query Specification in a Multimedia Database System. IEEE Visualization 1992 : 194-201

Daniel A. Keim, Kyung-Chang Kim , Vincent Y. Lum : A Friendly and Intelligent Approach to Data Retrieval in a Multimedia DBMS. DEXA 1991 : 102-111

1 [ 42 ] [ 51 ]

2 [ 69 ]

3 [ 16 ] [ 28 ]

4 [ 20 ] [ 22 ] [ 23 ] [ 24 ] [ 25 ] [ 26 ] [ 28 ] [ 30 ] [ 31 ] [ 41 ] [ 43 ] [ 44 ] [ 48 ] [ 50 ]

5 [ 23 ] [ 24 ] [ 44 ] [ 48 ] [ 50 ]

6 [ 5 ]

7 [ 46 ]

8 [ 23 ]

9 [ 66 ]

10 [ 75 ]

11 [ 66 ]

12 [ 49 ] [ 54 ] [ 55 ] [ 67 ]

13 [ 5 ] [ 53 ]

14 [ 30 ]

15 [ 66 ]

16 [ 64 ] [ 65 ]

17 [ 49 ] [ 54 ] [ 55 ] [ 67 ]

18 [ 45 ] [ 52 ] [ 57 ] [ 60 ]

19 [ 5 ]

20 [ 29 ]

21 [ 27 ] [ 33 ] [ 35 ] [ 37 ] [ 39 ] [ 42 ] [ 46 ] [ 51 ] [ 59 ] [ 60 ] [ 62 ] [ 70 ] [ 71 ]

22 [ 49 ] [ 54 ]

23 [ 69 ]

24 [ 66 ]

25 [ 1 ]

26 [ 73 ]

27 [ 34 ] [ 38 ]

28 [ 50 ]

29 [ 6 ] [ 7 ] [ 8 ] [ 9 ] [ 10 ] [ 11 ] [ 14 ] [ 15 ] [ 16 ] [ 17 ] [ 19 ] [ 20 ] [ 22 ] [ 23 ] [ 24 ] [ 25 ] [ 30 ] [ 41 ] [ 44 ] [ 50 ]

30 [ 49 ]

31 [ 5 ] [ 12 ]

32 [ 1 ] [ 2 ] [ 3 ]

33 [ 7 ] [ 9 ] [ 11 ]

34 [ 69 ]

35 [ 64 ] [ 65 ]

36 [ 34 ] [ 38 ] [ 61 ] [ 63 ] [ 68 ] [ 74 ]

37 [ 61 ] [ 63 ] [ 67 ] [ 68 ] [ 72 ] [ 74 ]

38 [ 4 ]

39 [ 52 ] [ 57 ]

40 [ 61 ] [ 63 ] [ 67 ]

41 [ 8 ] [ 10 ] [ 30 ] [ 41 ]

42 [ 67 ] [ 68 ] [ 72 ]

43 [ 5 ]

44 [ 12 ]

45 [ 38 ]

46 [ 52 ] [ 57 ]

47 [ 59 ] [ 60 ] [ 69 ] [ 70 ]

48 [ 45 ]

49 [ 66 ]

50 [ 12 ]

51 [ 44 ]




©2004 Association for Computing Machinery