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A PSO based virtual sample generation method for small sample sets: Applications to regression datasets

机译:用于小样本集的基于PSO的虚拟样本生成方法:应用于回归数据集

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摘要

In the early period of process industries, it is an intractable challenge to build an accurate and robust forecasting model using the collected scared samples. The information derived from small sample sets is unreliable and weak. Thus, the models established based on the small sample sets are inefficient. Virtual sample generation (VSG) is a promising technology which can be used to generate plenty of new virtual samples by the information acquired from small sample sets, aiming at improving the accuracy of forecasting models. To capture the tendency of the raw sample set and reduce information gaps among individuals, an information-expanded function based on triangular membership (TMIE) is developed to asymmetrically expand the domain range in each attribute in this paper. A novel particle swarm optimization based VSG (PSOVSG) approach is proposed to iteratively generate the most feasible virtual samples over the search-space. The effectiveness of PSOVSG is tested against other three methods of VSG over two real cases: multi-layer ceramic capacitors (MLCC) and purified Terephthalic acid (PTA). The simulation results show the proposed PSOVSG achieves better performance than other methods.
机译:在过程工业的早期,使用收集到的稀有样本建立准确而强大的预测模型是一个棘手的挑战。从小样本集中获得的信息不可靠且薄弱。因此,基于小样本集建立的模型效率低下。虚拟样本生成(VSG)是一项很有前途的技术,可用于通过从小型样本集中获取的信息来生成大量新的虚拟样本,旨在提高预测模型的准确性。为了捕捉原始样本集的趋势并减少个体之间的信息鸿沟,本文开发了一种基于三角隶属关系(TMIE)的信息扩展函数,以非对称地扩展每个属性中的域范围。提出了一种新颖的基于粒子群优化的VSG(PSOVSG)方法,以在搜索空间上迭代生成最可行的虚拟样本。在两种实际情况下,针对VSG的其他三种方法测试了PSOVSG的有效性:多层陶瓷电容器(MLCC)和纯对苯二甲酸(PTA)。仿真结果表明,所提出的PSOVSG具有比其他方法更好的性能。

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