HOME JOURNALS CONTACT

Journal of Applied Sciences

Year: 2013 | Volume: 13 | Issue: 19 | Page No.: 4010-4013
DOI: 10.3923/jas.2013.4010.4013
Decision Making of College Based on the Fuzzy Clustering and Inclusion Degree
Yu Peng

Abstract: About the decision making of college, we adopt fuzzy clustering analysis to construct a model in this study. According to what they like, major, rejoin, marks and so on, they choose a number of colleges. Using model and conditions, we make cluster analysis. For the universities and professionals that we haven’t chosen, we calculate inclusion degree, so as to determine which category they belong to.

Fulltext PDF

How to cite this article
Yu Peng , 2013. Decision Making of College Based on the Fuzzy Clustering and Inclusion Degree. Journal of Applied Sciences, 13: 4010-4013.

Keywords: Fuzzy clustering analysis, inclusion degree, data mining and university choice

REFERENCES

  • Zhang, R., 2007. The discussed of value and problems of Our university rankings. Higher Eng. Edu. Res., 3: 41-42.


  • Liu, L., 2004. University rankings for the value analysis of university development. Sci. Technol. Manage., 13: 26-56.


  • Mitra, S., S.K. Pal and P. Mitra, 2002. Data mining in soft computing framework: A survey. IEEE. Trans. Neural Networks, 13: 3-14.
    CrossRef    


  • Chen, M.S., J. Han and P.S. Yu, 1996. Data mining: An overview from a database perspective. IEEE Trans. Knowledge Data Eng., 8: 866-883.
    CrossRef    Direct Link    


  • Gao, X.B., 2004. The fuzzy clustering analysis and application. Xian xian: University of electronic science and technology press.


  • Fisher, D., 1987. Improving inference through conceptual clustering. Proceedings of the 6th National Conference on Artificial Intelligence, July 13-17, 1987, Seattle, Washington, DC., pp: 461-465.


  • Hu, D. and K. Feng, 2009. One method of new attr ibute reduction based on discretization o f cont inuous attr ibutes. Appl. Res. Comput., 1: 64-65.


  • Yue, H.L. and D.Q. Yan, 2010. New algorithm for discretization based on information entropy. Comput. Sci., 4: 231-233.
    Direct Link    

  • © Science Alert. All Rights Reserved