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Research Topics Dr. Bernard Chen Ph.D. University of Central Arkansas Fall 2009.

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Presentation on theme: "Research Topics Dr. Bernard Chen Ph.D. University of Central Arkansas Fall 2009."— Presentation transcript:

1 Research Topics Dr. Bernard Chen Ph.D. University of Central Arkansas Fall 2009

2 Research Topics Clustering-- Fuzzy-HKmeans clustering model for protein sequence motif discovery Using Biclustering algorithm to improve clustering results Association Rules – Super-rules clustering by positional association rule Positional Association Super-Rule with different mapping mechanism Classification -- Protein local 3D structure prediction incorporate with Chou-Fasman parameter

3 Future Works

4 Granular Computing Model Original dataset Fuzzy C-Means Clustering Informatio n Granule 1 Informatio n Granule M K-means Clustering K-means Clustering Join Information Final Sequence Motifs Information...

5 Hybrid Hierarchical K-means (HHK) clustering algorithm Number of cluster: 0

6 Hybrid Hierarchical K-means (HHK) clustering algorithm Number of cluster: 1

7 Hybrid Hierarchical K-means (HHK) clustering algorithm Number of cluster: 2

8 Hybrid Hierarchical K-means (HHK) clustering algorithm Number of cluster: 3

9 Hybrid Hierarchical K-means (HHK) clustering algorithm Number of cluster: 3

10 Hybrid Hierarchical K-means (HHK) clustering algorithm Number of cluster: 2

11 Hybrid Hierarchical K-means (HHK) clustering algorithm

12

13 Number of cluster: 3

14 Research Topics Clustering-- Fuzzy-HKmeans clustering model for protein sequence motif discovery Using Biclustering algorithm to improve clustering results Association Rules – Super-rules clustering by positional association rule Positional Association Super-Rule with different mapping mechanism Classification -- Protein local 3D structure prediction incorporate with Chou-Fasman parameter

15 Future Works

16 Research Topics Clustering-- Fuzzy-HKmeans clustering model for protein sequence motif discovery Using Biclustering algorithm to improve clustering results Association Rules – Super-rules clustering by positional association rule Positional Association Super-Rule with different mapping mechanism Classification -- Protein local 3D structure prediction incorporate with Chou-Fasman parameter

17 Future Works

18 Positional Association Rules

19 Positional Association Rules Example

20 Positional Association Rules D=>B minimum distance assurance = 60% 1. = 3/4 3.=1/4 2.= 1/4

21 Positional Association Rules B=>D minimum distance assurance = 60% 1. = 3/63. = 1/6 2.= 1/6

22 Positional Association Rules A=>B minimum distance assurance = 60% 1. = 2/43. = 1/4 2.= 1/4 4. = 1/4

23 Positional Association Rules A=>D minimum distance assurance = 60% 1. = 3/4 2.= 1/4

24 Positional Association Rules 2-itemset Positional Association Rules:

25 Research Topics Clustering-- Fuzzy-HKmeans clustering model for protein sequence motif discovery Using Biclustering algorithm to improve clustering results Association Rules – Super-rules clustering by positional association rule Positional Association Super-Rule with different mapping mechanism Classification -- Protein local 3D structure prediction incorporate with Chou-Fasman parameter

26 Future Works

27 Research Topics Clustering-- Fuzzy-HKmeans clustering model for protein sequence motif discovery Using Biclustering algorithm to improve clustering results Association Rules – Super-rules clustering by positional association rule Positional Association Super-Rule with different mapping mechanism Classification -- Protein local 3D structure prediction incorporate with Chou-Fasman parameter

28 Future Works

29 Research Topics Clustering-- Fuzzy-HKmeans clustering model for protein sequence motif discovery Using Biclustering algorithm to improve clustering results Association Rules – Super-rules clustering by positional association rule Positional Association Super-Rule with different mapping mechanism Classification -- Protein local 3D structure prediction incorporate with Chou- Fasman parameter Protein local 3D structure prediction incorporate with Voting Mechnism


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