Comparative Study of Searching Algorithms for Databases and Present New Idea For Better Searching
Abstract
Full Text:
PDFReferences
Rodriguez F.J., Martínez C.G., LozanoM. Hybrid metaheuristic based on evolutionary algorithms and simulated annealing: taxonomy, comparison and synergy Test. IEEE Trans On Evolutionary Computation. 2012 December; 16(6): 787–800p.
Almeida F., Giménez D., López-Espín J.J. et al. Parameterized schemes of metaheuristics: basic ideas and applications with genetic algorithms, scatter search and GRASP. IEEE Trans on Systems, Man, And Cybernetics: Systems. May 2013; 43(3): 570–86p.
Kumar S., Rao C.S.P. Application of ant colony, genetic algorithm and data mining techniques for scheduling. Robotics and Computer Aided Manufacturing. 2009; 901–8p.
Plastino A., Fonseca E.R., Fuchshuber R. et al. A hybrid data mining for metaheuristics.
Padhy N., Mishra P., Panigrahi R. The survey of data mining applications and feature scope. Int J Comp Sci Engg Information Tech. June 2012; 2(3): 43–58p.
Singh D.K., Swaroop V. Review and analysis of data security in data mining. Int J Comp Sci Information Tech Security. 2012 August; 2(4): 831–5p.
Vijayarani S., Sakila A. Multimedia mining research – an overview. International Journal of Computer Graphics & Animation (IJCGA). 2015 January; 5(1): 69–77p.
Jaseena K.U., David J.M. Issues, Challenges and Solutions: Big Data Mining. 2014; 131–40p.
Khan S., Sharma A., Zamani A.S., et al. Data mining for security purposes and its solitude suggestion. Int. J Scientific & Technology Research. August 2012; 1(7): 1–4p.
Bora S.P. Data mining and ware housing. IEEE. 2011; 1–5p.
Kesavaraj G., Sukumaran S. A study on classification techniques of data mining. IEEE. 2013.
Gomaa, Wael H., Aly A. Fahmy. A survey of text similarity approaches. International Journal of Computer Applications. 2013; 68.13x: 13–8p.
Belkin N. J., W.B.C. Information filtering and information retrieval: two sides of the same coin? Commun. ACM. 1992; 35: 29–38p.
Hu M., Wang S., Wang A., Wang Lei. Feature extraction based on the independent component analysis for text classification. In Fuzzy Systems and Knowledge Discovery. FSKD'08. Fifth International Conference. 2008; 2: 296–300p.
Dasgupta A., P.D., Harb B. et al. Feature selection methods for text classification. Proceedings of the 13th ACM SIGKDD International conference on Knowledge discovery and data mining. San Jose, California, USA, 2007.
Khan A., B.B., Hong Lee L., Khan K. A review of machine learning algorithms for text-documents classification. Journal of Advances in Information Technology. 2010 Feb; 1(1).
DOI: https://doi.org/10.37628/jeset.v1i2.341
Refbacks
- There are currently no refbacks.