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聚乙烯醇长支链的测定
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作者 邓绍国(译) 《维纶通讯》 2018年第4期54-57,共4页
聚乙烯醇(PVA)中的长支化作用,可通过库拉塔法(Kurata)测定衍生的聚醋酸乙烯酯(PVAc)的特性粘度和凝胶渗透色谱来定量测定。对于在60℃下批量聚合PVAc获得的PVA,发现其单位分子量的平均支化点数入,介于10^(-6)-10^(-5)。之间。同时,还... 聚乙烯醇(PVA)中的长支化作用,可通过库拉塔法(Kurata)测定衍生的聚醋酸乙烯酯(PVAc)的特性粘度和凝胶渗透色谱来定量测定。对于在60℃下批量聚合PVAc获得的PVA,发现其单位分子量的平均支化点数入,介于10^(-6)-10^(-5)。之间。同时,还发现随着母体聚合物聚合转化率的增加,λ3值的趋势与我们之前通过动力学方程得出的预期值非常接近。 展开更多
关键词 长支链 聚乙烯醇(PVA) 凝胶渗透色谱 特性粘度 支化参数
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A NEW HYPERSPHERE SUPPORT VECTOR MACHINE ALGORITHM 被引量:2
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作者 Zhang Xinfeng Shen Lansun 《Journal of Electronics(China)》 2006年第4期614-617,共4页
The hypersphere support vector machine is a new algorithm in pattern recognition. By studying three kinds of hypersphere support vector machines, it is found that their solutions are identical and the margin between t... The hypersphere support vector machine is a new algorithm in pattern recognition. By studying three kinds of hypersphere support vector machines, it is found that their solutions are identical and the margin between two classes of samples is zero or is not unique. In this letter, a new kind of hypersphere support vector machine is proposed. By introducing a parameter n(n>1), a unique solution of the margin can be obtained. Theoretical analysis and experimental results show that the proposed algorithm can achieve better generaliza-tion performance. 展开更多
关键词 Hypersphere support vector machine MARGIN Generalization performance
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A HYBRID PSO-SA OPTIMIZING APPROACH FOR SVM MODELS IN CLASSIFICATION
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作者 HUIYAN JIANG LINGBO ZOU 《International Journal of Biomathematics》 2013年第5期189-206,共18页
Support vector machine (SVM) is a widely used tool in the field of image processing and pattern recognition. However, the parameters selection of SVMs is a dilemma in disease identification and clinical diagnosis. T... Support vector machine (SVM) is a widely used tool in the field of image processing and pattern recognition. However, the parameters selection of SVMs is a dilemma in disease identification and clinical diagnosis. This paper proposed an improved parameter optimization method based on traditional particle swarm optimization (PSO) algorithm by changing the fitness function in the traditional evolution process of SVMs. Then, this PSO method was combined with simulated annealing global searching algorithm to avoid local convergence that traditional PSO algorithms usually run into. And this method has achieved better results which reflected in the receiver-operating characteristic curves in medical images classification and has gained considerable identification accuracy in clinical disease detection. 展开更多
关键词 Support vector machine disease detection global optimization.
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