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Published in: Soft Computing 12/2014

01-12-2014 | Methodologies and Application

Actionable high-coherent-utility fuzzy itemset mining

Authors: Chun-Hao Chen, Ai-Fang Li, Yeong-Chyi Lee

Published in: Soft Computing | Issue 12/2014

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Abstract

Many fuzzy data mining approaches have been proposed for finding fuzzy association rules with the predefined minimum support from quantitative transaction databases. Since each item has its own utility, utility itemset mining has become increasingly important. However, common problems with existing approaches are that an appropriate minimum support is difficult to determine and that the derived rules usually expose common-sense knowledge, which may not be interesting from a business point of view. This study thus proposes an algorithm for mining high-coherent-utility fuzzy itemsets to overcome problems with the properties of propositional logic. Quantitative transactions are first transformed into fuzzy sets. Then, the utility of each fuzzy itemset is calculated according to the given external utility table. If the value is larger than or equal to the minimum utility ratio, the itemset is considered as a high-utility fuzzy itemset. Finally, contingency tables are calculated and used for checking whether a high-utility fuzzy itemset satisfies four criteria. If so, it is a high-coherent-utility fuzzy itemset. Experiments on the foodmart and simulated datasets are made to show that the derived itemsets by the proposed algorithm not only can reach better profit than selling them separately, but also can provide fewer but more useful utility itemsets for decision-makers.

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Literature
go back to reference Alcala-Fdez J, Alcala R, Gacto MJ, Herrera F (2009) Learning the membership function contexts for mining fuzzy association rules by using genetic algorithms. Fuzzy Sets Syst 160(7):905–921MATHMathSciNetCrossRef Alcala-Fdez J, Alcala R, Gacto MJ, Herrera F (2009) Learning the membership function contexts for mining fuzzy association rules by using genetic algorithms. Fuzzy Sets Syst 160(7):905–921MATHMathSciNetCrossRef
go back to reference Agrawal R, Imielinksi T, Swami A (1993) Mining association rules between sets of items in large database. The ACM Special Interest Group on Management of Data Conference, pp 1–10 Agrawal R, Imielinksi T, Swami A (1993) Mining association rules between sets of items in large database. The ACM Special Interest Group on Management of Data Conference, pp 1–10
go back to reference Alcala-Fdez J, Flugy-Pape N, Bonarini A, Herrera F (2010) Analysis of the effectiveness of the genetic algorithms based on extraction of association rules. J Fund Inf Intell Data Anal Granular Comput 98(1) Alcala-Fdez J, Flugy-Pape N, Bonarini A, Herrera F (2010) Analysis of the effectiveness of the genetic algorithms based on extraction of association rules. J Fund Inf Intell Data Anal Granular Comput 98(1)
go back to reference Agrawal R, Srikant R (1994) Fast algorithms for mining association rules. International conference on very large data, bases pp 487–499 Agrawal R, Srikant R (1994) Fast algorithms for mining association rules. International conference on very large data, bases pp 487–499
go back to reference Au WH, Chan KCC (2003) Mining fuzzy association rules in a bank-account database. IEEE Trans Fuzzy Syst 11(2):238–248CrossRef Au WH, Chan KCC (2003) Mining fuzzy association rules in a bank-account database. IEEE Trans Fuzzy Syst 11(2):238–248CrossRef
go back to reference Chan KCC, Au WH (1998) An effective algorithm for discovering fuzzy rules in relational databases. IEEE Int Conf Fuzzy Syst 2: 1314–1319 Chan KCC, Au WH (1998) An effective algorithm for discovering fuzzy rules in relational databases. IEEE Int Conf Fuzzy Syst 2: 1314–1319
go back to reference Cai CH, Fu WC, Cheng CH, Kwong WW (1998) Mining association rules with weighted items. The international database engineering and applications symposium, pp 68–77 Cai CH, Fu WC, Cheng CH, Kwong WW (1998) Mining association rules with weighted items. The international database engineering and applications symposium, pp 68–77
go back to reference Cao L (2008) Domain driven data mining (D\(^{3}\)M). IEEE International conference on data mining workshops, pp 74–76 Cao L (2008) Domain driven data mining (D\(^{3}\)M). IEEE International conference on data mining workshops, pp 74–76
go back to reference Cao L (2010a) Domain-driven data mining: challenges and prospects. IEEE Trans Knowl Data Eng 22(6):755–769CrossRef Cao L (2010a) Domain-driven data mining: challenges and prospects. IEEE Trans Knowl Data Eng 22(6):755–769CrossRef
go back to reference Cao L, Yu PS, Zhang C, Zhao Y (2010a) Domain driven data mining. Springer, Berlin Cao L, Yu PS, Zhang C, Zhao Y (2010a) Domain driven data mining. Springer, Berlin
go back to reference Cao L, Zhao Y, Zhang H, Luo D, Zhang C, Park EK (2010b) Flexible frameworks for actionable knowledge discovery. IEEE Trans Knowl Data Eng 22(9):1299–1312CrossRef Cao L, Zhao Y, Zhang H, Luo D, Zhang C, Park EK (2010b) Flexible frameworks for actionable knowledge discovery. IEEE Trans Knowl Data Eng 22(9):1299–1312CrossRef
go back to reference Cao L (2012) Actionable knowledge discovery and delivery. WIREs Data Mining Knowl Discov 2(2):149–163CrossRef Cao L (2012) Actionable knowledge discovery and delivery. WIREs Data Mining Knowl Discov 2(2):149–163CrossRef
go back to reference Cao L, Zhang H, Zhao Y, Luo D, Zhang C (2011) Combined mining: discovering informative knowledge in complex data. IEEE Trans Syst Man Cybern Part B 41(3):699–712CrossRef Cao L, Zhang H, Zhao Y, Luo D, Zhang C (2011) Combined mining: discovering informative knowledge in complex data. IEEE Trans Syst Man Cybern Part B 41(3):699–712CrossRef
go back to reference Chan R, Yang Q, Shen Y (2003) Mining high utility itemsets. The IEEE international conference on data mining, pp 19–26 Chan R, Yang Q, Shen Y (2003) Mining high utility itemsets. The IEEE international conference on data mining, pp 19–26
go back to reference Chu C, Tseng VS, Liang T (2008) An efficient algorithm for mining temporal high utility itemsets from data streams. J Syst Softw 81(7) Chu C, Tseng VS, Liang T (2008) An efficient algorithm for mining temporal high utility itemsets from data streams. J Syst Softw 81(7)
go back to reference Dubois D, Prade H, Sudkamp T (2005) On the representation, measurement, and discovery of fuzzy associations. IEEE Trans Fuzzy Syst 13(2):250–262CrossRef Dubois D, Prade H, Sudkamp T (2005) On the representation, measurement, and discovery of fuzzy associations. IEEE Trans Fuzzy Syst 13(2):250–262CrossRef
go back to reference Fazzolari M, Alcal’a R, Nojima Y, Ishibuchi H, Herrera F (2013) A review of the application of multi-objective evolutionary fuzzy systems: current status and further directions. IEEE Trans Fuzzy Syst 21(1):45–65CrossRef Fazzolari M, Alcal’a R, Nojima Y, Ishibuchi H, Herrera F (2013) A review of the application of multi-objective evolutionary fuzzy systems: current status and further directions. IEEE Trans Fuzzy Syst 21(1):45–65CrossRef
go back to reference Fakhrahmad SM, Dastghaibyfard GH (2011) An efficient frequent pattern mining method and its parallelization in transactional databases. J Inf Sci Eng 27(2):511–525 Fakhrahmad SM, Dastghaibyfard GH (2011) An efficient frequent pattern mining method and its parallelization in transactional databases. J Inf Sci Eng 27(2):511–525
go back to reference Hong TP, Kuo CS, Chi SC (1999) Mining association rules from quantitative data. Intell Data Anal 3(5):363–376MATHCrossRef Hong TP, Kuo CS, Chi SC (1999) Mining association rules from quantitative data. Intell Data Anal 3(5):363–376MATHCrossRef
go back to reference Hong TP, Lin KY, Chien BC (2003) Mining fuzzy multiple-level association rules from quantitative data. Appl Intell 18(1):79–90MATHCrossRef Hong TP, Lin KY, Chien BC (2003) Mining fuzzy multiple-level association rules from quantitative data. Appl Intell 18(1):79–90MATHCrossRef
go back to reference Intan R, Yenty O (2008) Mining multidimensional fuzzy association rules from a normalized database. International conference on convergence and hybrid information technology, pp 425–432 Intan R, Yenty O (2008) Mining multidimensional fuzzy association rules from a normalized database. International conference on convergence and hybrid information technology, pp 425–432
go back to reference Kuok CM, Fu AWC, Wong MH (1998) Mining fuzzy association rules in databases. ACM SIGMOD Record 27(1):41–46CrossRef Kuok CM, Fu AWC, Wong MH (1998) Mining fuzzy association rules in databases. ACM SIGMOD Record 27(1):41–46CrossRef
go back to reference Koh YS, Rountree N, O’Keefe RA (2006) Finding non-coincidental sporadic rules using apriori-inverse. Int J Data Warehousing Mining 2:38–54CrossRef Koh YS, Rountree N, O’Keefe RA (2006) Finding non-coincidental sporadic rules using apriori-inverse. Int J Data Warehousing Mining 2:38–54CrossRef
go back to reference Kianmehr K, Kaya M, ElSheikh AM, Jida J, Alhajj R (2011) Fuzzy association rule mining framework and its application to effective fuzzy associative classification. WIREs Data Mining Knowl Discov 1(6):477–495CrossRef Kianmehr K, Kaya M, ElSheikh AM, Jida J, Alhajj R (2011) Fuzzy association rule mining framework and its application to effective fuzzy associative classification. WIREs Data Mining Knowl Discov 1(6):477–495CrossRef
go back to reference Li H, Huang H, Chen Y, Liu Y, Lee S (2008) Fast and memory efficient mining of high utility itemsets in data streams. IEEE international conference on data mining, pp 881–886 Li H, Huang H, Chen Y, Liu Y, Lee S (2008) Fast and memory efficient mining of high utility itemsets in data streams. IEEE international conference on data mining, pp 881–886
go back to reference Lai C, Chung P, Tseng VS (2010) A novel algorithm for mining fuzzy high utility itemsets. Inf Control Int J Innov Comput 6(10) Lai C, Chung P, Tseng VS (2010) A novel algorithm for mining fuzzy high utility itemsets. Inf Control Int J Innov Comput 6(10)
go back to reference Lee YC, Hong TP, Wang TC (2008) Multi-level fuzzy mining with multiple minimum supports. Expert Syst Appl 34(1):459–468CrossRef Lee YC, Hong TP, Wang TC (2008) Multi-level fuzzy mining with multiple minimum supports. Expert Syst Appl 34(1):459–468CrossRef
go back to reference Lee YC, Hong TP, Lin WY (2004) Mining fuzzy association rules with multiple minimum supports using maximum constraints. Lecture Notes Comput Sci 3214:1283–1290CrossRef Lee YC, Hong TP, Lin WY (2004) Mining fuzzy association rules with multiple minimum supports using maximum constraints. Lecture Notes Comput Sci 3214:1283–1290CrossRef
go back to reference Liu B, Hsu W, Ma Y (1999) Mining association rules with multiple minimum supports. ACM SIGKDD conference on knowledge discovery and data mining, pp 337–341 Liu B, Hsu W, Ma Y (1999) Mining association rules with multiple minimum supports. ACM SIGKDD conference on knowledge discovery and data mining, pp 337–341
go back to reference Lan GC, Hong TP (2012) A projection-based approach for discovering high average-utility itemsets. J Inf Sci Eng 28:193–209 Lan GC, Hong TP (2012) A projection-based approach for discovering high average-utility itemsets. J Inf Sci Eng 28:193–209
go back to reference Liu Y, Liao W, Choudhary A (2005) A fast high utility itemsets mining algorithm. The utility-based data mining, workshop, pp 90–99 Liu Y, Liao W, Choudhary A (2005) A fast high utility itemsets mining algorithm. The utility-based data mining, workshop, pp 90–99
go back to reference Lin WY, Tseng MC, Su JH (2002) A confidence-lift support specification for interesting associations mining. The Pacific-Asia conference on advances in knowledge discovery and data mining, pp 148–158 Lin WY, Tseng MC, Su JH (2002) A confidence-lift support specification for interesting associations mining. The Pacific-Asia conference on advances in knowledge discovery and data mining, pp 148–158
go back to reference Microsoft Corporation, Example Database FoodMart of Microsoft Analysis Services Microsoft Corporation, Example Database FoodMart of Microsoft Analysis Services
go back to reference Mangalampalli A, Pudi V (2009) Fuzzy association rule mining algorithm for fast and efficient performance on very large datasets. IEEE international conference on fuzzy systems, pp 1163–1168 Mangalampalli A, Pudi V (2009) Fuzzy association rule mining algorithm for fast and efficient performance on very large datasets. IEEE international conference on fuzzy systems, pp 1163–1168
go back to reference Mangalampalli A, Pudi V (2010) FPrep: fuzzy clustering driven efficient automated pre-processing for fuzzy association rule mining. IEEE international conference on fuzzy systems, pp 1–8 Mangalampalli A, Pudi V (2010) FPrep: fuzzy clustering driven efficient automated pre-processing for fuzzy association rule mining. IEEE international conference on fuzzy systems, pp 1–8
go back to reference Matthews SG, Gongora MA, Hopgood AA (2011) Evolving temporal fuzzy itemsets from quantitative data with a multi-objective evolutionary algorithm. IEEE international workshop on genetic and evolutionary fuzzy systems, pp 9–16 Matthews SG, Gongora MA, Hopgood AA (2011) Evolving temporal fuzzy itemsets from quantitative data with a multi-objective evolutionary algorithm. IEEE international workshop on genetic and evolutionary fuzzy systems, pp 9–16
go back to reference Martin T, Shen Y (2009) Fuzzy association rules in soft conceptual hierarchies. Annual meeting of the North American Fuzzy Information Processing Society, pp 1–6 Martin T, Shen Y (2009) Fuzzy association rules in soft conceptual hierarchies. Annual meeting of the North American Fuzzy Information Processing Society, pp 1–6
go back to reference Ouyang W, Huang Q (2009) Mining direct and indirect weighted fuzzy association rules in large transaction databases. Int Conf Fuzzy Syst Knowl Discov 3:128–132 Ouyang W, Huang Q (2009) Mining direct and indirect weighted fuzzy association rules in large transaction databases. Int Conf Fuzzy Syst Knowl Discov 3:128–132
go back to reference Ouyang W, Huang Q (2011) Mining direct and indirect fuzzy association rules with multiple minimum supports in large transaction databases. Int Conf Fuzzy Syst Knowl Discov 2:947–951 Ouyang W, Huang Q (2011) Mining direct and indirect fuzzy association rules with multiple minimum supports in large transaction databases. Int Conf Fuzzy Syst Knowl Discov 2:947–951
go back to reference Pillai J, Vyas OP, Soni S, Muyeba M (2010) A conceptual approach to temporal weighted item set utility mining. Int J Comput Appl 1(28) Pillai J, Vyas OP, Soni S, Muyeba M (2010) A conceptual approach to temporal weighted item set utility mining. Int J Comput Appl 1(28)
go back to reference Paranjape-Voditel P, Deshpande U (2011) An association rule mining based stock market recommender system. International conference on emerging applications of information technology, pp 21–24 Paranjape-Voditel P, Deshpande U (2011) An association rule mining based stock market recommender system. International conference on emerging applications of information technology, pp 21–24
go back to reference Sarwar B, Karypis G, Konstan J, Riedl J (2000) Analysis of recommendation algorithms for e-commerce. ACM conference on electronic commerce, pp 158–167 Sarwar B, Karypis G, Konstan J, Riedl J (2000) Analysis of recommendation algorithms for e-commerce. ACM conference on electronic commerce, pp 158–167
go back to reference Sathiyapriya K, Sadasivam GS, Celin N (2011) A new method for preserving privacy in quantitative association rules using DSR approach with automated generation of membership function. World congress on information and communication technologies, pp 148–153 Sathiyapriya K, Sadasivam GS, Celin N (2011) A new method for preserving privacy in quantitative association rules using DSR approach with automated generation of membership function. World congress on information and communication technologies, pp 148–153
go back to reference Sim ATH, Indrawan M, Zutshi S, Srinivasan B (2010) Logic-based pattern discovery. IEEE Trans Knowl Data Eng 22(6):798–811CrossRef Sim ATH, Indrawan M, Zutshi S, Srinivasan B (2010) Logic-based pattern discovery. IEEE Trans Knowl Data Eng 22(6):798–811CrossRef
go back to reference Tajbakhsh A, Rahmati M, Mirzaei A (2009) Intrusion detection using fuzzy association rules. Appl Soft Comput 9(2):462–469CrossRef Tajbakhsh A, Rahmati M, Mirzaei A (2009) Intrusion detection using fuzzy association rules. Appl Soft Comput 9(2):462–469CrossRef
go back to reference Vo B, Nguyen H, Le B (2009) Mining high utility itemsets from vertical distributed databases. International conference on computing and communication technologies, pp 1–4 Vo B, Nguyen H, Le B (2009) Mining high utility itemsets from vertical distributed databases. International conference on computing and communication technologies, pp 1–4
go back to reference Wang C, Chen S, Huang Y (2009) A fuzzy approach for mining high utility quantitative itemsets. IEEE international conference on fuzzy systems, pp 1909–1913 Wang C, Chen S, Huang Y (2009) A fuzzy approach for mining high utility quantitative itemsets. IEEE international conference on fuzzy systems, pp 1909–1913
go back to reference Yun H, Ha D, Hwang B, Ryu KH (2003) Mining association rules on significant rare data using relative support. J Syst Softw 67:181–191CrossRef Yun H, Ha D, Hwang B, Ryu KH (2003) Mining association rules on significant rare data using relative support. J Syst Softw 67:181–191CrossRef
go back to reference Yue S, Tsang E, Yeung D, Shi D (2000) Mining fuzzy association rules with weighted items. The IEEE international conference on systems, man and cybernetics, pp 1906–1911 Yue S, Tsang E, Yeung D, Shi D (2000) Mining fuzzy association rules with weighted items. The IEEE international conference on systems, man and cybernetics, pp 1906–1911
go back to reference Wu J, Li X (2011) Mining multidimensional fuzzy association rules of alarms in communication networks. International conference on computer science and service, system, pp 2326–2330 Wu J, Li X (2011) Mining multidimensional fuzzy association rules of alarms in communication networks. International conference on computer science and service, system, pp 2326–2330
go back to reference Zhao J, Yao L (2010) A general framework for fuzzy data mining. International conference on computational intelligence and software engineering, pp 1–3 Zhao J, Yao L (2010) A general framework for fuzzy data mining. International conference on computational intelligence and software engineering, pp 1–3
Metadata
Title
Actionable high-coherent-utility fuzzy itemset mining
Authors
Chun-Hao Chen
Ai-Fang Li
Yeong-Chyi Lee
Publication date
01-12-2014
Publisher
Springer Berlin Heidelberg
Published in
Soft Computing / Issue 12/2014
Print ISSN: 1432-7643
Electronic ISSN: 1433-7479
DOI
https://doi.org/10.1007/s00500-013-1214-4

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