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Principal component analysis based seed generation for clustering analysis

机译:基于主成分分析的种子生成聚类分析

摘要

Clustering algorithms such as k-means clustering algorithm are used in applications that process entities with spatial and/or temporal characteristics, for example, media objects representing audio, video, or graphical data. Feature vectors representing characteristics of the entities are partitioned using clustering methods that produce results sensitive to an initial set of cluster seeds. The set of initial cluster seeds is generated using principal component analysis of either the complete feature vector set or a subset thereof. The feature vector set is divided into a desired number of initial clusters and a seed determined from each initial cluster.
机译:在处理具有空间和/或时间特性的实体(例如表示音频,视频或图形数据的媒体对象)的应用程序中使用了诸如k均值聚类算法之类的聚类算法。使用聚类方法对表示实体特征的特征向量进行划分,这些方法会产生对初始聚类种子集敏感的结果。使用完整特征向量集或其子集的主成分分析来生成初始簇种子集。特征向量集被划分为期望数量的初始簇和从每个初始簇确定的种子。

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