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列序聚类法和最小变化拟合在体育选材中的应用 被引量:1
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作者 李燕 徐雄杰 《中国体育科技》 北大核心 1999年第11期44-46,共3页
本文应用列序聚类法和最小变化拟合于运动员选材。介绍了这种方法的基本步骤,给出了计算程序和得到解的迭代过程。结果表明,这种方法在运动员选材中是非常有效的。
关键词 列序聚类法 最小变化拟合 选材 迭代过程
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AVLINK: Robust Clustering Algorithm based on Average Link Applied to Protein Sequence Analysis 被引量:1
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作者 Mohamed A. Mahfouz 《Journal of Mathematics and System Science》 2016年第5期205-214,共10页
Robust Clustering methods are aimed at avoiding unsatisfactory results resulting from the presence of certain amount of outlying observations in the input data of many practical applications such as biological sequenc... Robust Clustering methods are aimed at avoiding unsatisfactory results resulting from the presence of certain amount of outlying observations in the input data of many practical applications such as biological sequences analysis or gene expressions analysis. This paper presents a fuzzy clustering algorithm based on average link and possibilistic clustering paradigm termed as AVLINK. It minimizes the average dissimilarity between pairs of patterns within the same cluster and at the same time the size of a cluster is maximized by computing the zeros of the derivative of proposed objective function. AVLINK along with the proposed initialization procedure show a high outliers rejection capability as it makes their membership very low furthermore it does not requires the number of clusters to be known in advance and it can discover clusters of non convex shape. The effectiveness and robustness of the proposed algorithms have been demonstrated on different types of protein data sets. 展开更多
关键词 Data Mining Fuzzy Clustering Relational Clustering Hierarchical Clustering Bioinformatics.
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Research on natural language recognition algorithm based on sample entropy
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作者 Juan Lai 《International Journal of Technology Management》 2013年第2期47-49,共3页
Sample entropy can reflect the change of level of new information in signal sequence as well as the size of the new information. Based on the sample entropy as the features of speech classification, the paper firstly ... Sample entropy can reflect the change of level of new information in signal sequence as well as the size of the new information. Based on the sample entropy as the features of speech classification, the paper firstly extract the sample entropy of mixed signal, mean and variance to calculate each signal sample entropy, finally uses the K mean clustering to recognize. The simulation results show that: the recognition rate can be increased to 89.2% based on sample entropy. 展开更多
关键词 sample entropy voice activity detection speech processing
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