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Pattern Analysis and Performance Comparison of Lottery Winning Numbers

초록

영어

Clustering methods such as k-means and EM are the group of classification and pattern recognition, which are used in management science and literature search widely. In this paper, k-means and EM algorithm are compared the performance using by Weka. The winning Lottery numbers of 567 cases are experimented for our study and presentation. Processing speed of the k-means algorithm is superior to the EM algorithm, which is about 0.08 seconds faster than the other. As the result it is summerized that EM algorithm is better than K-means algorithm with comparison of accuracy, precision and recall. While K-means is known to be sensitive to the distribution of data, EM algorithm is probability sensitive for clustering .

목차

Abstract
 1. Introduction
 2. Related research
  2.1 K-Means
  2.2 EM
 3. Experiment
 4. Experimental Result
 5. Conclusion
 References

저자정보

  • Yong Gyu Jung Dept. of Medical IT Marketing, Eulji University, Korea
  • Soo Ji Han Dept. of Medical IT Marketing, Eulji University, Korea
  • Jae Hee kim Chief executive officer, T2L Corp, Korea

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