메뉴 건너뛰기




Volumn , Issue , 2011, Pages 70-78

A clustering-based visualization of colocation patterns

Author keywords

colocation mining; heuristic clustering; soil erosion; visualization

Indexed keywords

CARTOGRAPHIC VISUALIZATION; CO-LOCATION PATTERNS; COLOCATIONS; DOMAIN EXPERTS; GEOLOGICAL DATA; HEURISTIC CLUSTERING; MINING ALGORITHMS; SOIL EROSION; SPATIAL INFORMATIONS; SPATIAL PATTERN MININGS; TEXTUAL REPRESENTATION; VISUALIZATION TECHNIQUE;

EID: 84855323658     PISSN: None     EISSN: None     Source Type: Conference Proceeding    
DOI: 10.1145/2076623.2076633     Document Type: Conference Paper
Times cited : (6)

References (22)
  • 1
    • 0001882616 scopus 로고
    • Fast algorithms for mining association rules in large databases
    • J. B. Bocca, M. Jarke, and C. Zaniolo, editors, Morgan Kaufmann
    • R. Agrawal and R. Srikant. Fast algorithms for mining association rules in large databases. In J. B. Bocca, M. Jarke, and C. Zaniolo, editors, VLDB, pages 487-499. Morgan Kaufmann, 1994.
    • (1994) VLDB , pp. 487-499
    • Agrawal, R.1    Srikant, R.2
  • 2
    • 84957703889 scopus 로고    scopus 로고
    • Knowledge-based visualization to support spatial data mining
    • G. L. Andrienko and N. V. Andrienko. Knowledge-based visualization to support spatial data mining. In IDA, pages 149-160, 1999.
    • (1999) IDA , pp. 149-160
    • Andrienko, G.L.1    Andrienko, N.V.2
  • 3
    • 70350370011 scopus 로고    scopus 로고
    • A visual analytics toolkit for cluster-based classification of mobility data
    • N. Mamoulis, T. Seidl, T. B. Pedersen, K. Torp, and I. Assent, editors, SSTD, Springer
    • G. L. Andrienko, N. V. Andrienko, S. Rinzivillo, M. Nanni, and D. Pedreschi. A visual analytics toolkit for cluster-based classification of mobility data. In N. Mamoulis, T. Seidl, T. B. Pedersen, K. Torp, and I. Assent, editors, SSTD, volume 5644 of Lecture Notes in Computer Science, pages 432-435. Springer, 2009.
    • (2009) Lecture Notes in Computer Science , vol.5644 , pp. 432-435
    • Andrienko, G.L.1    Andrienko, N.V.2    Rinzivillo, S.3    Nanni, M.4    Pedreschi, D.5
  • 4
    • 26944494689 scopus 로고    scopus 로고
    • Discovery of spatial association rules in geo-referenced census data: A relational mining approach
    • A. Appice, M. Ceci, A. Lanza, F. A. Lisi, and D. Malerba. Discovery of spatial association rules in geo-referenced census data: A relational mining approach. Intell. Data Anal., 7(6):541-566, 2003.
    • (2003) Intell. Data Anal. , vol.7 , Issue.6 , pp. 541-566
    • Appice, A.1    Ceci, M.2    Lanza, A.3    Lisi, F.A.4    Malerba, D.5
  • 5
    • 77954691692 scopus 로고    scopus 로고
    • Mining maximal generalized frequent geographic patterns with knowledge constraints
    • IEEE Computer Society
    • V. Bogorny, J. F. Valiati, S. da Silva Camargo, P. M. Engel, B. Kuijpers, and L. O. Alvares. Mining maximal generalized frequent geographic patterns with knowledge constraints. In ICDM, pages 813-817. IEEE Computer Society, 2006.
    • (2006) ICDM , pp. 813-817
    • Bogorny, V.1    Valiati, J.F.2    Da Silva Camargo, S.3    Engel, P.M.4    Kuijpers, B.5    Alvares, L.O.6
  • 6
    • 85047342259 scopus 로고    scopus 로고
    • Mineset: An integrated system for data mining
    • C. Brunk, J. Kelly, and R. Kohavi. Mineset: An integrated system for data mining. In KDD, pages 135-138, 1997.
    • (1997) KDD , pp. 135-138
    • Brunk, C.1    Kelly, J.2    Kohavi, R.3
  • 7
    • 38049126056 scopus 로고    scopus 로고
    • Discovering emerging patterns in spatial databases: A multi-relational approach
    • PKDD'07, Springer
    • M. Ceci, A. Appice, and D. Malerba. Discovering emerging patterns in spatial databases: A multi-relational approach. In PKDD'07, volume 4702 of LNCS, pages 390-397. Springer, 2007.
    • (2007) LNCS , vol.4702 , pp. 390-397
    • Ceci, M.1    Appice, A.2    Malerba, D.3
  • 8
    • 49749141618 scopus 로고    scopus 로고
    • Zonal co-location pattern discovery with dynamic parameters
    • IEEE Computer Society
    • M. Celik, J. M. Kang, and S. Shekhar. Zonal co-location pattern discovery with dynamic parameters. In IEEE ICDM'07, pages 433-438. IEEE Computer Society, 2007.
    • (2007) IEEE ICDM'07 , pp. 433-438
    • Celik, M.1    Kang, J.M.2    Shekhar, S.3
  • 9
    • 85170282443 scopus 로고    scopus 로고
    • A density-based algorithm for discovering clusters in large spatial databases with noise
    • M. Ester, H.-P. Kriegel, J. Sander, and X. Xu. A density-based algorithm for discovering clusters in large spatial databases with noise. In KDD, pages 226-231, 1996.
    • (1996) KDD , pp. 226-231
    • Ester, M.1    Kriegel, H.-P.2    Sander, J.3    Xu, X.4
  • 10
    • 77957044215 scopus 로고    scopus 로고
    • The izi project: Easy prototyping of interesting pattern mining algorithms
    • T. Theeramunkong, C. Nattee, P. J. L. Adeodato, N. V. Chawla, P. Christen, P. Lenca, J. Poon, and G. J. Williams, editors, PAKDD Workshops, Springer
    • F. Flouvat, F. D. Marchi, and J.-M. Petit. The izi project: Easy prototyping of interesting pattern mining algorithms. In T. Theeramunkong, C. Nattee, P. J. L. Adeodato, N. V. Chawla, P. Christen, P. Lenca, J. Poon, and G. J. Williams, editors, PAKDD Workshops, volume 5669 of Lecture Notes in Computer Science, pages 1-15. Springer, 2009.
    • (2009) Lecture Notes in Computer Science , vol.5669 , pp. 1-15
    • Flouvat, F.1    Marchi, F.D.2    Petit, J.-M.3
  • 13
    • 10944243785 scopus 로고    scopus 로고
    • Discovering colocation patterns from spatial data sets: A general approach
    • DOI 10.1109/TKDE.2004.90
    • Y. Huang, S. Shekhar, and H. Xiong. Discovering colocation patterns from spatial data sets: A general approach. IEEE Trans. Knowl. Data Eng., 16(12):1472-1485, 2004. (Pubitemid 40010922)
    • (2004) IEEE Transactions on Knowledge and Data Engineering , vol.16 , Issue.12 , pp. 1472-1485
    • Huang, Y.1    Shekhar, S.2    Xiong, H.3
  • 14
    • 0036264672 scopus 로고    scopus 로고
    • Information visualization and visual data mining
    • D. A. Keim. Information visualization and visual data mining. IEEE Trans. Vis. Comput. Graph., 8(1):1-8, 2002.
    • (2002) IEEE Trans. Vis. Comput. Graph. , vol.8 , Issue.1 , pp. 1-8
    • Keim, D.A.1
  • 15
    • 84957645397 scopus 로고
    • Discovery of spatial association rules in geographic information databases
    • M. J. Egenhofer and J. R. Herring, editors, SSD, Springer
    • K. Koperski and J. Han. Discovery of spatial association rules in geographic information databases. In M. J. Egenhofer and J. R. Herring, editors, SSD, volume 951 of Lecture Notes in Computer Science, pages 47-66. Springer, 1995.
    • (1995) Lecture Notes in Computer Science , vol.951 , pp. 47-66
    • Koperski, K.1    Han, J.2
  • 16
    • 67049097997 scopus 로고    scopus 로고
    • Wifisviz: Effective visualization of frequent itemsets
    • IEEE Computer Society
    • C. K.-S. Leung, P. Irani, and C. L. Carmichael. Wifisviz: Effective visualization of frequent itemsets. In ICDM, pages 875-880. IEEE Computer Society, 2008.
    • (2008) ICDM , pp. 875-880
    • Leung, C.K.-S.1    Irani, P.2    Carmichael, C.L.3
  • 17
    • 22944475382 scopus 로고    scopus 로고
    • Inducing multi-level association rules from multiple relations
    • F. A. Lisi and D. Malerba. Inducing multi-level association rules from multiple relations. Machine Learning, 55(2):175-210, 2004.
    • (2004) Machine Learning , vol.55 , Issue.2 , pp. 175-210
    • Lisi, F.A.1    Malerba, D.2
  • 19
    • 21944442464 scopus 로고    scopus 로고
    • Levelwise search and borders of theories in knowledge discovery
    • H. Mannila and H. Toivonen. Levelwise search and borders of theories in knowledge discovery. Data Min. Knowl. Discov., 1(3):241-258, 1997.
    • (1997) Data Min. Knowl. Discov. , vol.1 , Issue.3 , pp. 241-258
    • Mannila, H.1    Toivonen, H.2
  • 20
    • 0001820920 scopus 로고    scopus 로고
    • X-means: Extending k-means with efficient estimation of the number of clusters
    • P. Langley, editor, Morgan Kaufmann
    • D. Pelleg and A. W. Moore. X-means: Extending k-means with efficient estimation of the number of clusters. In P. Langley, editor, ICML, pages 727-734. Morgan Kaufmann, 2000.
    • (2000) ICML , pp. 727-734
    • Pelleg, D.1    Moore, A.W.2
  • 21
    • 84944053697 scopus 로고    scopus 로고
    • Discovering spatial co-location patterns: A summary of results
    • C. S. Jensen, M. Schneider, B. Seeger, and V. J. Tsotras, editors, SSTD, Springer
    • S. Shekhar and Y. Huang. Discovering spatial co-location patterns: A summary of results. In C. S. Jensen, M. Schneider, B. Seeger, and V. J. Tsotras, editors, SSTD, volume 2121 of Lecture Notes in Computer Science, pages 236-256. Springer, 2001.
    • (2001) Lecture Notes in Computer Science , vol.2121 , pp. 236-256
    • Shekhar, S.1    Huang, Y.2
  • 22
    • 33748365438 scopus 로고    scopus 로고
    • A joinless approach for mining spatial colocation patterns
    • DOI 10.1109/TKDE.2006.150, 1683769
    • J. S. Yoo and S. Shekhar. A joinless approach for mining spatial colocation patterns. IEEE Trans. Knowl. Data Eng., 18(10):1323-1337, 2006. (Pubitemid 44335198)
    • (2006) IEEE Transactions on Knowledge and Data Engineering , vol.18 , Issue.10 , pp. 1323-1337
    • Yoo, J.S.1    Shekhar, S.2


* 이 정보는 Elsevier사의 SCOPUS DB에서 KISTI가 분석하여 추출한 것입니다.