现代电子技术
現代電子技術
현대전자기술
Modern Electronics Technique
2015年
22期
55-58,61
,共5页
云计算%大数据%特征提取%分类挖掘
雲計算%大數據%特徵提取%分類挖掘
운계산%대수거%특정제취%분류알굴
cloud computing%big data%feature extraction%classification mining
云计算设备中的大数据分类挖掘是现实模式识别和智能控制的基础,传统方法中对云计算设备中的大数据挖掘采用拓扑结构网格分区挖掘算法,不能有效提取大数据的细节特征,分类的准确性不好.提出一种基于分数阶Fourier变换特征匹配和K-L分类的云计算设备中的大数据特征高效分类挖掘算法.进行云计算设备中大数据存储机制体系分析,采用分数阶Fourier变换进行云计算设备中大数据特征提取和大数据特征匹配,基于K-L变换,选择最优的路径进行分类空间导引,构建了K-L大数据特征分类器,进行云计算设备中的大数据特征分类挖掘.仿真结果表明,采用该算法进行云计算设备中的大数据特征分类挖掘,特征分类挖掘的准确度较高,能量开销较少,效率较高.
雲計算設備中的大數據分類挖掘是現實模式識彆和智能控製的基礎,傳統方法中對雲計算設備中的大數據挖掘採用拓撲結構網格分區挖掘算法,不能有效提取大數據的細節特徵,分類的準確性不好.提齣一種基于分數階Fourier變換特徵匹配和K-L分類的雲計算設備中的大數據特徵高效分類挖掘算法.進行雲計算設備中大數據存儲機製體繫分析,採用分數階Fourier變換進行雲計算設備中大數據特徵提取和大數據特徵匹配,基于K-L變換,選擇最優的路徑進行分類空間導引,構建瞭K-L大數據特徵分類器,進行雲計算設備中的大數據特徵分類挖掘.倣真結果錶明,採用該算法進行雲計算設備中的大數據特徵分類挖掘,特徵分類挖掘的準確度較高,能量開銷較少,效率較高.
운계산설비중적대수거분류알굴시현실모식식별화지능공제적기출,전통방법중대운계산설비중적대수거알굴채용탁복결구망격분구알굴산법,불능유효제취대수거적세절특정,분류적준학성불호.제출일충기우분수계Fourier변환특정필배화K-L분류적운계산설비중적대수거특정고효분류알굴산법.진행운계산설비중대수거존저궤제체계분석,채용분수계Fourier변환진행운계산설비중대수거특정제취화대수거특정필배,기우K-L변환,선택최우적로경진행분류공간도인,구건료K-L대수거특정분류기,진행운계산설비중적대수거특정분류알굴.방진결과표명,채용해산법진행운계산설비중적대수거특정분류알굴,특정분류알굴적준학도교고,능량개소교소,효솔교고.
The big-data classification mining in cloud computing equipment is the basis of real pattern recognition and intel-ligent control. The topological-structure grid-partition mining algorithm is adopted for large data mining in traditional cloud com-puting equipment,which can not effectively extract the detail characteristics of big data due to its poor classifying veracity. A ef-ficient classification mining algorithm for big data feature of cloud computing equipment is proposed,which is based on the frac-tional Fourier transform feature matching and K-L classification. The big data storage mechanism system of cloud computing equipment is analyzed. The fractional Fourier transform is used to deal with feature extraction and feature matching of big data. On the basis of K-L transform,the optimal path is chosen to guide categorical space,and a K-L big-data feature classifier is es-tablished to realize classification mining in cloud computing equipment. The simulation results show that this algorithm has ad-vantages of high-accuracy feature classification mining,less energy consumption and higher efficiency,and can realize efficient classification mining for the big data feature of the cloud computing equipments.