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浅谈时态数据挖掘及挖掘工具——支持向量机

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摘要 本研究介绍数据挖掘相关概念,主要阐述时态数据的研究有关技术及现状,探讨时态数据的预测和周期发现,并简介新一代时态数据预测工具支持向量机。也就是根据预定义的目标,对大量的数据进行探索和分析,揭示其中隐含的规律,并进一步将其模型化的先进有效的技术过程。
作者 张海
出处 《甘肃科技纵横》 2009年第6期50-51,63,共3页 Scientific & Technical Information of Gansu
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