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Model Selection for Support-Vector Machines through Metaheuristic Optimization Algorithms

机译:通过啮型优化算法的支持 - 向量机模型选择

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摘要

A machine learning algorithm aims at designing a mathematical model based on a given training data set. Generally, the built model has a set of parameters that need to be adjusted. Since the performance of a given model depends on its settings, the parameters have to be carefully chosen through a fine-tuning step. A good model selection not only boosts performance but also allows a well-generalized model, i.e., a model that works sound on unseen data. In this paper, we assess the effectiveness of some metaheuristic optimization algorithms for support-vector machines (SVM) model selection. Computer simulations show that optimization algorithms that overall outperforms other algorithms using benchmark functions can be, further, definitely used for an efficient SVM model selection for classification. Thus, we show that Teaching-Learning-Based Optimization algorithm is faster and also enables the most accurate classification, even against other proposed methods in the literature for SVM model selection.
机译:机器学习算法旨在基于给定培训数据集设计数学模型。通常,内置模型具有需要调整的一组参数。由于给定模型的性能取决于其设置,因此必须通过微调步骤仔细选择参数。一个良好的模型选择不仅提高了性能,还允许一般性的模型,即,在看不见的数据上运作声音的模型。在本文中,我们评估了一些常规型优化算法的有效性,用于支持矢量机(SVM)模型选择。计算机仿真表明,优化算法总体优化使用基准函数的其他算法可以进一步肯定地用于分类的有效SVM模型选择。因此,我们表明,基于教学的优化算法更快,并且也能够实现最准确的分类,即使是针对SVM模型选择的文献中的其他提出的方法。

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