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针对Lasso问题的多维权重求解算法

         

摘要

最小绝对收缩和选择算子(Lasso)在数据维度约减、异常检测方面有着较强的计算优势.针对Lasso用于异常检测中检测精度不高的问题,提出了一种基于多维度权重的最小角回归(LARS)算法解决Lasso问题.首先考虑每个回归变量在回归模型中所占权重不同,即此属性变量在整体评价中的相对重要程度不同,故在LARS算法计算角分线时,将各回归变量与剩余变量的联合相关度纳入考虑,用来区分不同属性变量对检测结果的影响;然后在EARS算法中加入主成分分析(PCA)、独立权数法、基于Intercriteria相关性的指标的重要度评价(CRITIC)法这三种权重估计方法,并进一步对LARS求解的前进方向和前进变量选择进行优化.最后使用Pima Indians Diabetes数据集验证算法的优良性.实验结果表明,在更小阈值的约束条件下,加入多维权重后的LARS算法对Lasso问题的解具有更高的准确度,能更好地用于异常检测.%Least absolute shrinkage and selection operator (Lasso) has performance superiority in dimension reduction of data and anomaly detection.Conceming the problem that the accuracy is low in anomaly detection based on Lasso,a Least Angle Regression (LARS) algorithm based on multi-dimensional weight was proposed.Firstly,the problem was considered that each regression variable had different weight in the regression model.Namely,the importance of the attribute variable was different in the overall evaluation.So,in calculating angular bisector of LARS algorithm,the united correlation of regression variable and residual vector was introduced to distinguish the effect of different attribute variables on detection results.Then,the three weight estimation methods of Principal Component Analysis (PCA),independent weight evaluation and CRiteria Importance Though Intercriteria Correlation (CRITIC) were added into LARS algorithm respectively.The approach direction and approach variable selection in the solution of LARS were further optimized.Finally,the Pima Indians Diabetes dataset was used to prove the optimal property of the proposed algorithm.The experimental results show that,the LARS algorithm based on multi-dimensional weight has a higher accuracy than the traditional LARS under the same constraint condition with smaller threshold value,and can be more suitable for anomaly detection.

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