首页> 外文会议>International conference on neural information processing;ICONIP 2011 >Comparison between the Applications of Fragment-Based and Vertex-Based GPU Approaches in K-Means Clustering of Time Series Gene Expression Data
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Comparison between the Applications of Fragment-Based and Vertex-Based GPU Approaches in K-Means Clustering of Time Series Gene Expression Data

机译:基于片段和基于顶点的GPU方法在时间序列基因表达数据的K均值聚类中的应用比较

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With the emergence of microarray technology, clustering of gene expression data has become an area of immense interest in recent years. However, due to the high dimensionality and complexity of the gene data landscape, the clustering process generally involves enormous amount of arithmetic operations. The problem has been partially alleviated with the K-Means algorithm, which enables high dimension data to be clustered efficiently. Further enhancement on the computation speed is achieved with the use of fragment shader running in a graphic processing unit (GPU) environment. Despite the success, such approach is not optimal as the process is scattered between the CPU and the GPU, causing bottleneck in the data exchange between the two processors, and the underused of the GPU. In this paper, we propose to realize the K-Means clustering algorithm with an integration of the vertex and the fragment shaders, which enables the majority of the clustering process to be implemented within the GPU. Experimental evaluation reflects that the computation efficiency of our proposed method in clustering short time gene expression is around 1.5 to 2 times faster than that attained with the conventional fragment shaders.
机译:随着微阵列技术的出现,近年来,基因表达数据的聚类已经成为人们非常关注的领域。但是,由于基因数据领域的高度维度和复杂性,聚类过程通常涉及大量的算术运算。 K-Means算法已部分缓解了该问题,该算法使高维数据得以有效地聚类。通过使用在图形处理单元(GPU)环境中运行的片段着色器,可以进一步提高计算速度。尽管取得了成功,但这种方法并不是最佳方法,因为该过程分散在CPU和GPU之间,导致两个处理器之间的数据交换出现瓶颈,并且GPU使用不足。在本文中,我们建议通过融合顶点和片段着色器来实现K-Means聚类算法,从而使大部分聚类过程可以在GPU内实现。实验评估表明,我们提出的方法在短时基因表达聚类中的计算效率比常规片段着色器快约1.5至2倍。

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