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Predicting the Type of Nanostructure Using Data Mining Techniques and Multinomial Logistic Regression

机译:使用数据挖掘技术和多项式Lo​​gistic回归预测纳米结构的类型

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Nanotechnology and nanomaterials have a promised future in different aspects of modern life that involve medicine, environment, space, energy, electronics, security, and many others. While the applications of nanomaterials seem to be limitless, new challenges are also being posed. With regard to the type of one-dimensional nanostructure of Cadmium Selenide (CdSe), there are three possible morphologies presented: nanosaws, nanowires, and nanobelts. Since the synthesis of these morphologies are by trial and error, our goal in this paper is to use statistical and data mining techniques to predict the type of CdSe nanostructure. The methods used for prediction are: a multinomial logistic regression, a support vector machine, and a random forest. The results are compared using two statistical indices: sensitivity and specificity, and the factors that influence the possible nanostructure are identified. Based on the results, data mining techniques showed to be a better fit for prediction comparing to the multinomial logistic regression model. We also identify the levels of these factors that maximize the proportions of nanosaws, nanowires, and nanobelts.
机译:纳米技术和纳米材料在现代生活中涉及医学,环境,空间,能源,电子,安全和许多其他方面的各个方面都有希望的未来。尽管纳米材料的应用似乎是无限的,但也提出了新的挑战。关于硒化镉(CdSe)的一维纳米结构的类型,提出了三种可能的形态:纳米锯,纳米线和纳米带。由于这些形态的合成是通过反复试验而得出的,因此本文的目标是使用统计和数据挖掘技术来预测CdSe纳米结构的类型。用于预测的方法是:多项逻辑回归,支持向量机和随机森林。使用两个统计指标对结果进行比较:敏感性和特异性,并确定了影响可能的纳米结构的因素。根据结果​​,与多项式Lo​​gistic回归模型相比,数据挖掘技术更适合预测。我们还确定了最大化纳米锯,纳米线和纳米带比例的这些因素的水平。

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