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Asymmetric Dual Possibilistic Regression Model by using Pairing nu Support Vector Networks

机译:通过使用配对NU支持向量网络的非对称双可能性回归模型

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This research introduces a new and effective asymmetric dual regression model by combining the advantages of possibilistic regression model and paired nu support vector machine (pair-v SVM). Our algorithm is able to best examine the ambiguity in a given data set from internal and external sides. Our algorithm estimates the outer boundary and inner boundary of the uncertain area for the predicted output. Based on the strategy of pair-v SVM, our algorithm find the solutions of four smaller SVM types of quadratic programming problems (QPP) instead of one big QPP to seek the up and down limits of the necessity and possibility model. This scheme greatly speeds up the training speed for our algorithm. Our model adopts the radial kernel, which offers a unified structure for the proposed method, which can handle crisp and vague input at the same time. The experimental results prove the efficiency and effectiveness of our algorithm.
机译:本研究通过组合可能的回归模型和配对NU支持向量机(对V SVM)的优点来介绍一种新的和有效的非对称双回归模型。我们的算法能够最好地检查来自内部和外侧的给定数据中的模糊性。我们的算法估计了预测输出的不确定区域的外边界和内边界。基于Bir-V SVM的策略,我们的算法找到了四种较小的SVM类型的二次编程问题(QPP)的解,而不是一个大QPP,以寻求必要性和可能性模型的上下限制。该方案极大地加速了我们算法的训练速度。我们的型号采用径向内核,该内核为所提出的方法提供统一的结构,可以同时处理清晰和模糊的输入。实验结果证明了我们算法的效率和有效性。

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