Using C++ Object-Oriented Technology to Realize the Restore of Complex Biological Network Set
Abstract: The development of high-throughput biotechnology emerged in a mass of biological network data. How to dig out the conservative frequent pattern effectively from complex biological networks is one of the hot issues in contemporary systems biology. For the reasons that the biology data tends to have the features of large sacle and high demension, to develop a software that can mine the frequent patterns from these biological networks is apt to face a storage prolem. Therefore, we use the method of C++ object-oriented to tackle this problem and discuss its application of frequent pattern mining from biological networks in the end of our paper.
文章引用: 昝乡镇 , 肖碧玉 , 许鹏 , 刘文斌 (2011) 用C++面向对象技术实现复杂生物网络集存储。 数据挖掘， 1， 21-25. doi: 10.12677/hjdm.2011.12006
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