skip to main content
Skip header Section
Feature Extraction, Construction and Selection: A Data Mining PerspectiveJuly 1998
Publisher:
  • Kluwer Academic Publishers
  • 101 Philip Drive Assinippi Park Norwell, MA
  • United States
ISBN:978-0-7923-8196-9
Published:01 July 1998
Pages:
410
Skip Bibliometrics Section
Bibliometrics
Skip Abstract Section
Abstract

From the Publisher:

The book can be used by researchers and graduate students in machine learning, data mining, and knowledge discovery, who wish to understand techniques of feature extraction, construction and selection for data pre-processing and to solve large size, real-world problems. The book can also serve as a reference book for those who are conducting research about feature extraction, construction and selection, and are ready to meet the exciting challenges ahead of us.

Cited By

  1. Fuchs C, Kaymak U and Nobile M Building Interpretable and Parsimonious Fuzzy Models using a Multi-Objective Approach 2022 IEEE International Conference on Fuzzy Systems (FUZZ-IEEE), (1-8)
  2. Guendouz M and Amine A (2022). A Comparative Study of Machine Learning Techniques for Android Malware Detection, International Journal of Software Innovation, 10:1, (1-13), Online publication date: 30-Sep-2022.
  3. Bharti R, Khamparia A, Shabaz M, Dhiman G, Pande S, Singh P and Abd El-Latif A (2021). Prediction of Heart Disease Using a Combination of Machine Learning and Deep Learning, Computational Intelligence and Neuroscience, 2021, Online publication date: 1-Jan-2021.
  4. Wang G, Ali F, Yang J, Nazir S, Yang T, Khan A, Imtiaz M and Sarfraz D (2021). Multicriteria-Based Crowd Selection Using Ant Colony Optimization, Complexity, 2021, Online publication date: 1-Jan-2021.
  5. Wang P, Xue B, Zhang M and Liang J A Grid-dominance based Multi-objective Algorithm for Feature Selection in Classification 2021 IEEE Congress on Evolutionary Computation (CEC), (2053-2060)
  6. Lan G, Xu W, Ma D, Khalifa S, Hassan M and Hu W (2020). EnTrans: Leveraging Kinetic Energy Harvesting Signal for Transportation Mode Detection, IEEE Transactions on Intelligent Transportation Systems, 21:7, (2816-2827), Online publication date: 1-Jul-2020.
  7. ACM
    Han H, Zhu X and Li Y (2020). Generalizing Long Short-Term Memory Network for Deep Learning from Generic Data, ACM Transactions on Knowledge Discovery from Data, 14:2, (1-28), Online publication date: 30-Apr-2020.
  8. Faris H, Abukhurma R, Almanaseer W, Saadeh M, Mora A, Castillo P and Aljarah I (2019). Improving financial bankruptcy prediction in a highly imbalanced class distribution using oversampling and ensemble learning: a case from the Spanish market, Progress in Artificial Intelligence, 9:1, (31-53), Online publication date: 1-Mar-2020.
  9. Lensen A, Zhang M and Xue B (2020). Multi-objective genetic programming for manifold learning: balancing quality and dimensionality, Genetic Programming and Evolvable Machines, 21:3, (399-431), Online publication date: 1-Sep-2020.
  10. Dhayanithi J and Akilandeswari J (2019). Interblend fusing of genetic algorithm-based attribute selection for clustering heterogeneous data set, Soft Computing - A Fusion of Foundations, Methodologies and Applications, 23:8, (2747-2759), Online publication date: 1-Apr-2019.
  11. Clark J and Provost F (2019). Unsupervised dimensionality reduction versus supervised regularization for classification from sparse data, Data Mining and Knowledge Discovery, 33:4, (871-916), Online publication date: 1-Jul-2019.
  12. ACM
    Wang Z, Ye X, Wang C and Yu P (2019). Feature Selection via Transferring Knowledge Across Different Classes, ACM Transactions on Knowledge Discovery from Data, 13:2, (1-29), Online publication date: 4-Jun-2019.
  13. ACM
    Luo Y, Wang M, Zhou H, Yao Q, Tu W, Chen Y, Dai W and Yang Q AutoCross Proceedings of the 25th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining, (1936-1945)
  14. Atallah D, Badawy M, El-Sayed A and Ghoneim M (2019). Predicting kidney transplantation outcome based on hybrid feature selection and KNN classifier, Multimedia Tools and Applications, 78:14, (20383-20407), Online publication date: 1-Jul-2019.
  15. Urueña López A, Mateo F, Navío-Marco J, Martínez-Martínez J, Gómez-Sanchís J, Vila-Francés J and José Serrano-López A (2019). Analysis of computer user behavior, security incidents and fraud using Self-Organizing Maps, Computers and Security, 83:C, (38-51), Online publication date: 1-Jun-2019.
  16. ACM
    Huang S, Xu M, Xie M, Sugiyama M, Niu G and Chen S Active Feature Acquisition with Supervised Matrix Completion Proceedings of the 24th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining, (1571-1579)
  17. ACM
    Hormann R, Nikelski S, Dukanovic S and Fischer E Parsing and Extracting Features from OPC Unified Architecture in Industrial Environments Proceedings of the 2nd International Symposium on Computer Science and Intelligent Control, (1-7)
  18. ACM
    Abkenar A, Loke S, Zaslavsky A and Rahayu W (2019). GroupSense, ACM Transactions on Embedded Computing Systems, 17:6, (1-26), Online publication date: 30-Nov-2018.
  19. Zhang B, Li C, Shah N, Fei X, Jiang L and Cai H (2018). A testing data validity assessment method and testing data validation platform based on SOA, Service Oriented Computing and Applications, 12:3-4, (201-209), Online publication date: 1-Dec-2018.
  20. Gensler A and Sick B (2018). Performing event detection in time series with SwiftEvent, Pattern Analysis & Applications, 21:2, (543-562), Online publication date: 1-May-2018.
  21. Faris H, Hassonah M, Al-Zoubi A, Mirjalili S and Aljarah I (2018). A multi-verse optimizer approach for feature selection and optimizing SVM parameters based on a robust system architecture, Neural Computing and Applications, 30:8, (2355-2369), Online publication date: 1-Oct-2018.
  22. Oliveira R, Papa J, Pereira A and Tavares J (2018). Computational methods for pigmented skin lesion classification in images, Neural Computing and Applications, 29:3, (613-636), Online publication date: 1-Feb-2018.
  23. Al-Zoubi A, Faris H, Alqatawna J and Hassonah M (2018). Evolving Support Vector Machines using Whale Optimization Algorithm for spam profiles detection on online social networks in different lingual contexts, Knowledge-Based Systems, 153:C, (91-104), Online publication date: 1-Aug-2018.
  24. Pliakos K and Vens C (2018). Mining features for biomedical data using clustering tree ensembles, Journal of Biomedical Informatics, 85:C, (40-48), Online publication date: 1-Sep-2018.
  25. Iwana B, Frinken V, Riesen K and Uchida S (2017). Efficient temporal pattern recognition by means of dissimilarity space embedding with discriminative prototypes, Pattern Recognition, 64:C, (268-276), Online publication date: 1-Apr-2017.
  26. Paul A, Sil J and Mukhopadhyay C (2017). Gene selection for designing optimal fuzzy rule base classifier by estimating missing value, Applied Soft Computing, 55:C, (276-288), Online publication date: 1-Jun-2017.
  27. Jing F, Yunliang J and Yong L (2017). Quick attribute reduction with generalized indiscernibility models, Information Sciences: an International Journal, 397:C, (15-36), Online publication date: 1-Aug-2017.
  28. Hoai Nam L and Quoc H (2017). Integrating Low-rank Approximation and Word Embedding for Feature Transformation in the High-dimensional Text Classification, Procedia Computer Science, 112:C, (437-446), Online publication date: 1-Sep-2017.
  29. Settouti N, Chikh M and Barra V (2017). A new feature selection approach based on ensemble methods in semi-supervised classification, Pattern Analysis & Applications, 20:3, (673-686), Online publication date: 1-Aug-2017.
  30. (2016). Mining balance disorders' data for the development of diagnostic decision support systems, Computers in Biology and Medicine, 77:C, (240-248), Online publication date: 1-Oct-2016.
  31. Vukicevic A, Stojadinovic M, Radovic M, Djordjevic M, Cirkovic B, Pejovic T, Jovicic G and Filipovic N (2016). Automated development of artificial neural networks for clinical purposes, Computers in Biology and Medicine, 75:C, (80-89), Online publication date: 1-Aug-2016.
  32. Li T, Ruan D, Shen Y, Hermans E and Wets G (2016). A New Weighting Approach Based on Rough Set Theory and Granular Computing for Road Safety Indicator Analysis, Computational Intelligence, 32:4, (517-534), Online publication date: 1-Nov-2016.
  33. Kiyadeh A, Zamiri A, Yazdi H and Ghaemi H (2015). Discernible visualization of high dimensional data using label information, Applied Soft Computing, 27:C, (474-486), Online publication date: 1-Feb-2015.
  34. Wei C (2015). Comparing lazy and eager learning models for water level forecasting in river-reservoir basins of inundation regions, Environmental Modelling & Software, 63:C, (137-155), Online publication date: 1-Jan-2015.
  35. Ni Zhu , Diethe T, Camplani M, Lili Tao , Burrows A, Twomey N, Kaleshi D, Mirmehdi M, Flach P and Craddock I (2015). Bridging e-Health and the Internet of Things: The SPHERE Project, IEEE Intelligent Systems, 30:4, (39-46), Online publication date: 1-Jul-2015.
  36. Lorena L, Carvalho A and Lorena A (2015). Filter Feature Selection for One-Class Classification, Journal of Intelligent and Robotic Systems, 80:1, (227-243), Online publication date: 1-Oct-2015.
  37. ACM
    Woodward J, Swan J and Martin S The 'composite' design pattern in metaheuristics Proceedings of the Companion Publication of the 2014 Annual Conference on Genetic and Evolutionary Computation, (1439-1444)
  38. Fetter M and Gross T LiLoLe--A Framework for Lifelong Learning from Sensor Data Streams for Predictive User Modelling Proceedings of the 5th IFIP WG 13.2 International Conference on Human-Centered Software Engineering - Volume 8742, (126-143)
  39. ACM
    Xue B, Zhang M, Dai Y and Browne W PSO for feature construction and binary classification Proceedings of the 15th annual conference on Genetic and evolutionary computation, (137-144)
  40. de la Iglesia B (2013). Evolutionary computation for feature selection in classification problems, Wiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery, 3:6, (381-407), Online publication date: 1-Nov-2013.
  41. ACM
    Loscalzo S, Wright R, Acunto K and Yu L Sample aware embedded feature selection for reinforcement learning Proceedings of the 14th annual conference on Genetic and evolutionary computation, (887-894)
  42. Shin H, Park H, Lee J and Jhee W (2012). A scoring model to detect abusive billing patterns in health insurance claims, Expert Systems with Applications: An International Journal, 39:8, (7441-7450), Online publication date: 1-Jun-2012.
  43. Marques J and Dam E Texture analysis by a PLS based method for combined feature extraction and selection Proceedings of the Second international conference on Machine learning in medical imaging, (109-116)
  44. Álvarez-Estévez D, Sánchez-Maroño N, Alonso-Betanzos A and Moret-Bonillo V (2011). Reducing dimensionality in a database of sleep EEG arousals, Expert Systems with Applications: An International Journal, 38:6, (7746-7754), Online publication date: 1-Jun-2011.
  45. Lin H, Koul N and Honavar V Learning relational bayesian classifiers from RDF data Proceedings of the 10th international conference on The semantic web - Volume Part I, (389-404)
  46. Fuchs E, Gruber T, Pree H and Sick B (2010). Temporal data mining using shape space representations of time series, Neurocomputing, 74:1-3, (379-393), Online publication date: 1-Dec-2010.
  47. Bermejo P, Gámez J and Puerta J Improving incremental wrapper-based feature subset selection by using re-ranking Proceedings of the 23rd international conference on Industrial engineering and other applications of applied intelligent systems - Volume Part I, (580-589)
  48. Aliferis C, Statnikov A, Tsamardinos I, Mani S and Koutsoukos X (2010). Local Causal and Markov Blanket Induction for Causal Discovery and Feature Selection for Classification Part I: Algorithms and Empirical Evaluation, The Journal of Machine Learning Research, 11, (171-234), Online publication date: 1-Mar-2010.
  49. Espejo P, Ventura S and Herrera F (2010). A survey on the application of genetic programming to classification, IEEE Transactions on Systems, Man, and Cybernetics, Part C: Applications and Reviews, 40:2, (121-144), Online publication date: 1-Mar-2010.
  50. Fisch D, Hofmann A and Sick B (2010). On the versatility of radial basis function neural networks, Information Sciences: an International Journal, 180:12, (2421-2439), Online publication date: 1-Jun-2010.
  51. Boongoen T and Shen Q (2010). Nearest-neighbor guided evaluation of data reliability and its applications, IEEE Transactions on Systems, Man, and Cybernetics, Part B: Cybernetics, 40:6, (1622-1633), Online publication date: 1-Dec-2010.
  52. Triguero I, García S and Herrera F (2010). IPADE, IEEE Transactions on Neural Networks, 21:12, (1984-1990), Online publication date: 1-Dec-2010.
  53. de Haro-García A and García-Pedrajas N Scaling up feature selection by means of democratization Proceedings of the 23rd international conference on Industrial engineering and other applications of applied intelligent systems - Volume Part II, (662-672)
  54. Peng Y, Wu Z and Jiang J (2010). A novel feature selection approach for biomedical data classification, Journal of Biomedical Informatics, 43:1, (15-23), Online publication date: 1-Feb-2010.
  55. Bauer M, Buchtala O, Horeis T, Kern R, Sick B and Wagner R (2009). Technical data mining with evolutionary radial basis function classifiers, Applied Soft Computing, 9:2, (765-774), Online publication date: 1-Mar-2009.
  56. Fuchs E, Gruber T, Nitschke J and Sick B (2009). On-line motif detection in time series with SwiftMotif, Pattern Recognition, 42:11, (3015-3031), Online publication date: 1-Nov-2009.
  57. García-Nieto J, Alba E, Jourdan L and Talbi E (2009). Sensitivity and specificity based multiobjective approach for feature selection, Information Processing Letters, 109:16, (887-896), Online publication date: 1-Jul-2009.
  58. Zhao H, Sinha A and Ge W (2009). Effects of feature construction on classification performance, Expert Systems with Applications: An International Journal, 36:2, (2633-2644), Online publication date: 1-Mar-2009.
  59. Geng Z and Zhu Q (2009). Rough set-based heuristic hybrid recognizer and its application in fault diagnosis, Expert Systems with Applications: An International Journal, 36:2, (2711-2718), Online publication date: 1-Mar-2009.
  60. Shafti L and Pérez E (2009). Evolutionary multi-feature construction for data reduction, Applied Soft Computing, 9:4, (1296-1303), Online publication date: 1-Sep-2009.
  61. Thangavel K and Pethalakshmi A (2009). Review, Applied Soft Computing, 9:1, (1-12), Online publication date: 1-Jan-2009.
  62. ACM
    Tan S, Wang Y and Cheng X An efficient feature ranking measure for text categorization Proceedings of the 2008 ACM symposium on Applied computing, (407-413)
  63. Díaz-Chito K, Ferri F and Díaz-Villanueva W An Empirical Evaluation of Common Vector Based Classification Methods and Some Extensions Proceedings of the 2008 Joint IAPR International Workshop on Structural, Syntactic, and Statistical Pattern Recognition, (977-985)
  64. Pechenizkiy M, Tsymbal A, Puuronen S and Patterson D (2007). Feature Extraction for Dynamic Integration of Classifiers, Fundamenta Informaticae, 77:3, (243-275), Online publication date: 1-Jul-2007.
  65. Pechenizkiy M, Tsymbal A, Puuronen S and Patterson D (2007). Feature Extraction for Dynamic Integration of Classifiers, Fundamenta Informaticae, 77:3, (243-275), Online publication date: 1-Aug-2007.
  66. Gómez O, Morales E and González J Weighted instance-based learning using representative intervals Proceedings of the artificial intelligence 6th Mexican international conference on Advances in artificial intelligence, (420-430)
  67. Dash M and Gopalkrishnan V Two way focused classification Proceedings of the 9th international conference on Data Warehousing and Knowledge Discovery, (345-354)
  68. ACM
    Shyu M, Quirino T, Xie Z, Chen S and Chang L (2007). Network intrusion detection through Adaptive Sub-Eigenspace Modeling in multiagent systems, ACM Transactions on Autonomous and Adaptive Systems, 2:3, (9-es), Online publication date: 1-Sep-2007.
  69. Gill D, Ritov Y and Dror G Is Pinocchio’s Nose Long or His Head Small? Learning Shape Distances for Classification Advances in Visual Computing, (652-661)
  70. ACM
    Agarwal N, Liu H and Zhang J (2006). Blocking objectionable web content by leveraging multiple information sources, ACM SIGKDD Explorations Newsletter, 8:1, (17-26), Online publication date: 1-Jun-2006.
  71. Džeroski S Towards a general framework for data mining Proceedings of the 5th international conference on Knowledge discovery in inductive databases, (259-300)
  72. Perez-Jimenez A and Perez-Cortes J (2006). Genetic algorithms for linear feature extraction, Pattern Recognition Letters, 27:13, (1508-1514), Online publication date: 1-Oct-2006.
  73. Reyes-Aldasoro C and Bhalerao A (2006). The Bhattacharyya space for feature selection and its application to texture segmentation, Pattern Recognition, 39:5, (812-826), Online publication date: 1-May-2006.
  74. Yang J and Olafsson S (2006). Optimization-based feature selection with adaptive instance sampling, Computers and Operations Research, 33:11, (3088-3106), Online publication date: 1-Nov-2006.
  75. Marchiori E, Jimenez C, West-Nielsen M and Heegaard N Robust SVM-based biomarker selection with noisy mass spectrometric proteomic data Proceedings of the 2006 international conference on Applications of Evolutionary Computing, (79-90)
  76. Piramuthu S (2005). Feature Selection for Reduction of Tabular Knowledge-Based Systems, Information Technology and Management, 6:4, (351-362), Online publication date: 1-Oct-2005.
  77. Kadous M and Sammut C (2005). Classification of Multivariate Time Series and Structured Data Using Constructive Induction, Machine Language, 58:2-3, (179-216), Online publication date: 1-Feb-2005.
  78. Liu H and Yu L (2005). Toward Integrating Feature Selection Algorithms for Classification and Clustering, IEEE Transactions on Knowledge and Data Engineering, 17:4, (491-502), Online publication date: 1-Apr-2005.
  79. ACM
    Yan J, Liu N, Zhang B, Yan S, Chen Z, Cheng Q, Fan W and Ma W OCFS Proceedings of the 28th annual international ACM SIGIR conference on Research and development in information retrieval, (122-129)
  80. ACM
    Tang Z, Maclennan J and Kim P (2005). Building data mining solutions with OLE DB for DM and XML for analysis, ACM SIGMOD Record, 34:2, (80-85), Online publication date: 1-Jun-2005.
  81. Moshkov M Time complexity of decision trees Transactions on Rough Sets III, (244-459)
  82. Flores M and Gámez J Breeding value classification in manchego sheep Proceedings of the 9th international conference on Knowledge-Based Intelligent Information and Engineering Systems - Volume Part II, (1338-1346)
  83. Yi H, de la Iglesia B and Rayward-Smith V Using concept taxonomies for effective tree induction Proceedings of the 2005 international conference on Computational Intelligence and Security - Volume Part II, (1011-1016)
  84. Ólafsson S and Yang J (2005). Intelligent Partitioning for Feature Selection, INFORMS Journal on Computing, 17:3, (339-355), Online publication date: 1-Jul-2005.
  85. Liu X, Wang H and Xu D The application of adaptive partitioned random search in feature selection problem Proceedings of the First international conference on Advanced Data Mining and Applications, (307-314)
  86. Sug H A comprehensively sized decision tree generation method for interactive data mining of very large databases Proceedings of the First international conference on Advanced Data Mining and Applications, (141-148)
  87. Pechenizkiy M The impact of feature extraction on the performance of a classifier Proceedings of the 18th Canadian Society conference on Advances in Artificial Intelligence, (268-279)
  88. Jensen R and Shen Q (2004). Semantics-Preserving Dimensionality Reduction, IEEE Transactions on Knowledge and Data Engineering, 16:12, (1457-1471), Online publication date: 1-Dec-2004.
  89. ACM
    Freitas A (2004). A critical review of multi-objective optimization in data mining, ACM SIGKDD Explorations Newsletter, 6:2, (77-86), Online publication date: 1-Dec-2004.
  90. Hu X, Lin T and Han J (2004). A New Rough Sets Model Based on Database Systems, Fundamenta Informaticae, 59:2-3, (135-152), Online publication date: 1-Apr-2004.
  91. Alphonse é and Matwin S (2004). Filtering Multi-Instance Problems to Reduce Dimensionality in Relational Learning, Journal of Intelligent Information Systems, 22:1, (23-40), Online publication date: 1-Jan-2004.
  92. Piramuthu S (2004). Feature construction for reduction of tabular knowledge-based systems, Information Sciences: an International Journal, 168:1-4, (201-215), Online publication date: 3-Dec-2004.
  93. Azcarraga A, Yap T, Tan J and Chua T (2004). Evaluating Keyword Selection Methods for WEBSOM Text Archives, IEEE Transactions on Knowledge and Data Engineering, 16:3, (380-383), Online publication date: 1-Mar-2004.
  94. Gopal K, Romo T, Sacchettini J and Ioerger T Weighting Features to Recognize 3D Patterns of Electron Density in X-Ray Protein Crystallography Proceedings of the 2004 IEEE Computational Systems Bioinformatics Conference, (255-265)
  95. Morik K and Köpcke H Features for learning local patterns in time-stamped data Proceedings of the 2004 international conference on Local Pattern Detection, (98-114)
  96. Wieczorkowska A, Wróblewski J, Synak P and Ślȩzak D (2003). Application of Temporal Descriptors to Musical Instrument Sound Recognition, Journal of Intelligent Information Systems, 21:1, (71-93), Online publication date: 1-Jul-2003.
  97. ACM
    Chen K and Liu L Cluster rendering of skewed datasets via visualization Proceedings of the 2003 ACM symposium on Applied computing, (909-916)
  98. Baldwin T and Bond F A plethora of methods for learning English countability Proceedings of the 2003 conference on Empirical methods in natural language processing, (73-80)
  99. Hu X, Lin T and Han J (2003). A new rough sets model based on database systems, Fundamenta Informaticae, 59:2-3, (135-152), Online publication date: 1-Jul-2003.
  100. Hu K, Lu Y and Shi C (2003). Feature ranking in rough sets, AI Communications, 16:1, (41-50), Online publication date: 1-Jan-2003.
  101. Hu K, Lu Y and Shi C (2003). Feature ranking in rough sets, AI Communications, 16:1, (41-50), Online publication date: 1-May-2003.
  102. Dash M and Liu H (2003). Consistency-based search in feature selection, Artificial Intelligence, 151:1-2, (155-176), Online publication date: 1-Dec-2003.
  103. Ashley K and Rissland E (2003). Law, learning and representation, Artificial Intelligence, 150:1-2, (17-58), Online publication date: 1-Nov-2003.
  104. Freitas A A survey of evolutionary algorithms for data mining and knowledge discovery Advances in evolutionary computing, (819-845)
  105. Ritthoff O and Klinkenberg R Evolutionary feature space transformation using type-restricted generators Proceedings of the 2003 international conference on Genetic and evolutionary computation: PartII, (1606-1607)
  106. Terano T and Inada M Data mining from clinical data using interactive evolutionary computation Advances in evolutionary computing, (847-861)
  107. Neumann P, Sick B, Arndt D and Gersten W Evolutionary optimisation of RBF network architectures in a direct marketing application Proceedings of the 2003 joint international conference on Artificial neural networks and neural information processing, (307-315)
  108. Huang Z, Pei M, Goodman E, Huang Y and Li G Genetic algorithm optimized feature transformation Proceedings of the 2003 international conference on Genetic and evolutionary computation: PartII, (2121-2133)
  109. Liu H and Motoda H (2002). On Issues of Instance Selection, Data Mining and Knowledge Discovery, 6:2, (115-130), Online publication date: 1-Apr-2002.
  110. Papadimitriou S, Mavroudi S, Vladutu L and Bezerianos A (2002). Generalized Radial Basis Function Networks Trained with Instance Based Learning for Data Mining of Symbolic Data, Applied Intelligence, 16:3, (223-234), Online publication date: 27-Feb-2002.
  111. Melab N, Cahon S, Talbi E and Duponchel L Parallel GA-Based Wrapper Feature Selection for Spectroscopic Data Mining Proceedings of the 16th International Parallel and Distributed Processing Symposium
  112. Freitas A (2001). Understanding the Crucial Role of AttributeInteraction in Data Mining, Artificial Intelligence Review, 16:3, (177-199), Online publication date: 22-Nov-2001.
  113. Liu H, Lu H and Yao J (2001). Toward Multidatabase Mining, IEEE Transactions on Knowledge and Data Engineering, 13:4, (541-553), Online publication date: 1-Jul-2001.
  114. ACM
    Huyn N (2001). Data analysis and mining in the life sciences, ACM SIGMOD Record, 30:3, (76-85), Online publication date: 1-Sep-2001.
  115. ACM
    Han J and Cercone N RuleViz Proceedings of the sixth ACM SIGKDD international conference on Knowledge discovery and data mining, (244-253)
  116. Lu H and Liu H Decision Tables Proceedings of the 26th International Conference on Very Large Data Bases, (373-384)
  117. Lallich S and Rakotomalala R Fast Feature Selection Using Partial Correlation for Multi-vaslued Attributes Proceedings of the 4th European Conference on Principles of Data Mining and Knowledge Discovery, (221-231)
  118. Xue B and Zhang M Evolutionary computation for feature manipulation: Key challenges and future directions 2016 IEEE Congress on Evolutionary Computation (CEC), (3061-3067)
Contributors
  • Arizona State University
  • Osaka University

Recommendations