메뉴 건너뛰기




Volumn 18, Issue 3, 2009, Pages 370-391

Harmony K-means algorithm for document clustering

Author keywords

Document clustering; Global optimization; Harmony search; K means algorithm; Markov chain

Indexed keywords

DATA-SETS; DOCUMENT CLUSTERING; FINITE MARKOV CHAINS; GLOBAL OPTIMUM; HARMONY SEARCH; HIGH QUALITIES; K-MEANS ALGORITHM; LARGE DATA SETS; LOCAL OPTIMAL SOLUTIONS; MARKOV CHAIN; META-HEURISTIC; MODEL-BASED; OPTIMIZATION METHODS; PARTITION-BASED CLUSTERING; SEARCH ENGINE RESULTS; WEB CRAWLING;

EID: 65049087974     PISSN: 13845810     EISSN: None     Source Type: Journal    
DOI: 10.1007/s10618-008-0123-0     Document Type: Article
Times cited : (116)

References (40)
  • 3
    • 0033323923 scopus 로고    scopus 로고
    • Partitioning-based clustering for web document categorization
    • 10.1016/S0167-9236(99)00055-X
    • D Boley M Gini R Gross EH Han K Hastings G Karypis 1999 Partitioning-based clustering for web document categorization Decis Support Syst 27 3 329 341 10.1016/S0167-9236(99)00055-X
    • (1999) Decis Support Syst , vol.27 , Issue.3 , pp. 329-341
    • Boley, D.1    Gini, M.2    Gross, R.3    Han, E.H.4    Hastings, K.5    Karypis, G.6
  • 5
    • 0034351369 scopus 로고    scopus 로고
    • Constraint-handling using an evolutionary multi objective optimization technique
    • 10.1080/02630250008970288
    • CAC Coello 2000 Constraint-handling using an evolutionary multi objective optimization technique Civ Eng Environ Syst 17 319 346 10.1080/ 02630250008970288
    • (2000) Civ Eng Environ Syst , vol.17 , pp. 319-346
    • Coello, C.A.C.1
  • 7
    • 0027029929 scopus 로고
    • Scatter/gather: A cluster-based approach to browsing large document collections
    • Copenhagen
    • Cutting DR, Pedersen JO, Karger DR, Tukey JW (1992) Scatter/gather: a cluster-based approach to browsing large document collections. In: Proceedings of the ACM SIGIR. Copenhagen, pp 318-329
    • (1992) Proceedings of the ACM SIGIR , pp. 318-329
    • Cutting, D.R.1    Pedersen, J.O.2    Karger, D.R.3    Tukey, J.W.4
  • 8
    • 0035789644 scopus 로고    scopus 로고
    • Co-clustering documents and words using bipartite spectral graph partitioning
    • Dhillon IS (2001) Co-clustering documents and words using bipartite spectral graph partitioning. In: Knowledge discovery and data mining, pp 269-274
    • (2001) Knowledge Discovery and Data Mining , pp. 269-274
    • Dhillon, I.S.1
  • 10
    • 0036304087 scopus 로고    scopus 로고
    • Harmony search optimization: Application to pipe network design
    • ZW Geem JH Kim GV Loganathan 2002 Harmony search optimization: application to pipe network design Int J Model Simul 22 125 133
    • (2002) Int J Model Simul , vol.22 , pp. 125-133
    • Geem, Z.W.1    Kim, J.H.2    Loganathan, G.V.3
  • 11
    • 26844499583 scopus 로고    scopus 로고
    • Harmony search for generalized orienteering problem: Best touring in China, Springer
    • ZW Geem C Tseng Y Park 2005 Harmony search for generalized orienteering problem: best touring in China, Springer Lect Notes Comput Sci 3412 741 750
    • (2005) Lect Notes Comput Sci , vol.3412 , pp. 741-750
    • Geem, Z.W.1    Tseng, C.2    Park, Y.3
  • 13
    • 84893405732 scopus 로고    scopus 로고
    • Data clustering: A review
    • CSUR. doi: 10.1145/331499.331504
    • Jain AK, Murty MN, Flynn PJ (1999) Data clustering: a review. ACM Comput Surv 264-323. CSUR. doi: 10.1145/331499.331504
    • (1999) ACM Comput Surv , pp. 264-323
    • Jain, A.K.1    Murty, M.N.2    Flynn, P.J.3
  • 16
    • 0024475960 scopus 로고
    • Experiments in projection and clustering by simulated annealing
    • 10.1016/0031-3203(89)90067-8
    • RW Klein RC Dubes 1989 Experiments in projection and clustering by simulated annealing Pattern Recognit 22 213 220 10.1016/0031-3203(89)90067-8
    • (1989) Pattern Recognit , vol.22 , pp. 213-220
    • Klein, R.W.1    Dubes, R.C.2
  • 19
    • 20444466485 scopus 로고    scopus 로고
    • A new meta-heuristic algorithm for continues engineering optimization: Harmony search theory and practice
    • 10.1016/j.cma.2004.09.007
    • KS Lee ZW Geem 2004 A new meta-heuristic algorithm for continues engineering optimization: harmony search theory and practice Comput Method Appl Mech Eng 194 3902 3933 10.1016/j.cma.2004.09.007
    • (2004) Comput Method Appl Mech Eng , vol.194 , pp. 3902-3933
    • Lee, K.S.1    Geem, Z.W.2
  • 20
    • 34248141625 scopus 로고    scopus 로고
    • An improved harmony search algorithm for solving optimization problems
    • M Mahdavi M Fesanghary E Damangir 2007 An improved harmony search algorithm for solving optimization problems Appl Math Comput 188 1567 1579
    • (2007) Appl Math Comput , vol.188 , pp. 1567-1579
    • Mahdavi, M.1    Fesanghary, M.2    Damangir, E.3
  • 26
    • 0028203106 scopus 로고
    • Convergence analysis of canonical genetic algorithms
    • 10.1109/72.265964
    • G Rudolph 1994 Convergence analysis of canonical genetic algorithms IEEE Trans Neural Netw 5 1 96 101 10.1109/72.265964
    • (1994) IEEE Trans Neural Netw , vol.5 , Issue.1 , pp. 96-101
    • Rudolph, G.1
  • 28
    • 45549117987 scopus 로고
    • Term-weighting approaches in automatic text retrieval
    • 10.1016/0306-4573(88)90021-0
    • G Salton C Buckley 1988 Term-weighting approaches in automatic text retrieval Inf Process Manage 24 513 523 10.1016/0306-4573(88)90021-0
    • (1988) Inf Process Manage , vol.24 , pp. 513-523
    • Salton, G.1    Buckley, C.2
  • 29
    • 0021202650 scopus 로고
    • K-means type algorithms: A generalized convergence theorem and characterization of local optimality
    • SZ Selim MA Ismail 1984 K-means type algorithms: a generalized convergence theorem and characterization of local optimality IEEE Trans Pattern Anal Mach Intell 6 81 87
    • (1984) IEEE Trans Pattern Anal Mach Intell , vol.6 , pp. 81-87
    • Selim, S.Z.1    Ismail, M.A.2
  • 30
    • 0004164256 scopus 로고    scopus 로고
    • A comparison of document clustering techniques
    • Technical report of University of Minnesota
    • Steinbach M, Karypis G, Kumar V (2000a) A comparison of document clustering techniques. KDD'2000. Technical report of University of Minnesota
    • (2000) KDD'2000
    • Steinbach, M.1    Karypis, G.2    Kumar, V.3
  • 36
    • 3543085722 scopus 로고    scopus 로고
    • Empirical and theoretical comparisons of selected riterion functions for document clustering
    • 10.1023/B:MACH.0000027785.44527.d6
    • Y Zhao G Karypis 2004 Empirical and theoretical comparisons of selected riterion functions for document clustering Mach Learn 55 3 311 331 10.1023/B:MACH.0000027785.44527.d6
    • (2004) Mach Learn , vol.55 , Issue.3 , pp. 311-331
    • Zhao, Y.1    Karypis, G.2
  • 37
    • 24044537630 scopus 로고    scopus 로고
    • Hierarchical clustering algorithms for document datasets
    • 10.1007/s10618-005-0361-3
    • Y Zhao G Karypis 2005 Hierarchical clustering algorithms for document datasets Data Min Knowl Discov 10 141 168 10.1007/s10618-005-0361-3
    • (2005) Data Min Knowl Discov , vol.10 , pp. 141-168
    • Zhao, Y.1    Karypis, G.2
  • 38
    • 33749013037 scopus 로고    scopus 로고
    • Semi-supervised model-based document clustering: A comparative study
    • doi: 10.1007/s10994-006-6540-7
    • Zhong S (2006) Semi-supervised model-based document clustering: a comparative study. Mach Learn 65(1). doi: 10.1007/s10994-006-6540-7
    • (2006) Mach Learn , vol.65 , Issue.1
    • Zhong, S.1
  • 39
    • 2142687208 scopus 로고    scopus 로고
    • A unified framework for model-based lustering
    • 10.1162/jmlr.2003.4.6.1001 JMLR
    • S Zhong J Ghosh 2003 A unified framework for model-based lustering J Mach Learn Res 4 1001 1037 10.1162/jmlr.2003.4.6.1001 JMLR
    • (2003) J Mach Learn Res , vol.4 , pp. 1001-1037
    • Zhong, S.1    Ghosh, J.2
  • 40
    • 24944501423 scopus 로고    scopus 로고
    • Generative model-based clustering of documents: A comparative study
    • 10.1007/s10115-004-0194-1 KAIS
    • S Zhong J Ghosh 2005 Generative model-based clustering of documents: a comparative study Knowl Inf Syst 8 374 384 10.1007/s10115-004-0194-1 KAIS
    • (2005) Knowl Inf Syst , vol.8 , pp. 374-384
    • Zhong, S.1    Ghosh, J.2


* 이 정보는 Elsevier사의 SCOPUS DB에서 KISTI가 분석하여 추출한 것입니다.