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Browsing by Author "Pandey, B."

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    K means clustering for gene-gene interaction in episodic memory
    (2016) Tripathi, S.; Sharma, A.K.; Mishra, R., B.; Pandey, B.
    In this paper K means Clustering Algorithm is used for clustering of candidate genes related to human episodic memory. The clustering of genes is based on gene-gene interaction score. The clusters are supposed to be formed so that distribution of cluster as well as overall interaction Score of clusters should be better. The K-means clustering technique applied to cluster the genes such as in tool STRING 9.1 provides cluster outcome. We compare the results of K means Clustering provided by STRING 9.1 with our K means Clustering Algorithm. The results obtained using K-means shows that clusters formed have better distribution of genes. International Science Press.
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    K means clustering for gene-gene interaction in episodic memory
    (Serials Publications serialspublications@vsnl.net, 2016) Tripathi, S.; Sharma, A.K.; Mishra, R. B.; Pandey, B.
    In this paper K means Clustering Algorithm is used for clustering of candidate genes related to human episodic memory. The clustering of genes is based on gene-gene interaction score. The clusters are supposed to be formed so that distribution of cluster as well as overall interaction Score of clusters should be better. The K-means clustering technique applied to cluster the genes such as in tool STRING 9.1 provides cluster outcome. We compare the results of K means Clustering provided by STRING 9.1 with our K means Clustering Algorithm. The results obtained using K-means shows that clusters formed have better distribution of genes. © International Science Press.

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