基于copula矩阵的神经网络降维方法

IF 2.4 4区 计算机科学 Q2 COMPUTER SCIENCE, THEORY & METHODS International Journal of General Systems Pub Date : 2022-08-28 DOI:10.1080/03081079.2022.2108029
A. Sheikhi, R. Mesiar, M. Holeňa
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引用次数: 2

摘要

在预测分析中,探索变量之间可能存在一些非线性关系,而传统的基于相关性的线性模型(如多元回归、主成分回归等)无法捕捉到这些关系。在这项工作中,我们使用copula矩阵来提取一组变量的主成分,这些变量与copula成对关联。通过估计成对copula及其相应的参数,我们提出了一种从包含一些成对关联测度的矩阵中提取主成分的优化方法。我们使用这些组件作为人工神经网络的输入,以进行更准确的预测。我们使用模拟研究来测试我们提出的方法,并使用它在艾滋病和新冠肺炎数据集中进行更准确的预测。为了提高结果的可靠性,我们采用了交叉验证技术。
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A dimension reduction in neural network using copula matrix
In prediction analysis, there may exist some nonlinear relations between the exploratory variables, which are not captured by traditional correlation-based linear models such as multiple regression, principal component regression, and so on. In this work, we employ a copula matrix to extract principal components of a set of variables which are pair-wisely associated with a copula. By estimating the pairwise copula and its corresponding parameter(s), we suggest an optimization method to extract principal components from a matrix which contains some pairwise measures of association. We use these components as inputs of an artificial neural network to make a more accurate prediction. We test our proposed method using a simulation study and use it to carry out a more accurate prediction in an AIDS as well as a COVID-19 dataset. To increase the reliability of results, we employ a cross-validation technique.
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来源期刊
International Journal of General Systems
International Journal of General Systems 工程技术-计算机:理论方法
CiteScore
4.10
自引率
20.00%
发文量
38
审稿时长
6 months
期刊介绍: International Journal of General Systems is a periodical devoted primarily to the publication of original research contributions to system science, basic as well as applied. However, relevant survey articles, invited book reviews, bibliographies, and letters to the editor are also published. The principal aim of the journal is to promote original systems ideas (concepts, principles, methods, theoretical or experimental results, etc.) that are broadly applicable to various kinds of systems. The term “general system” in the name of the journal is intended to indicate this aim–the orientation to systems ideas that have a general applicability. Typical subject areas covered by the journal include: uncertainty and randomness; fuzziness and imprecision; information; complexity; inductive and deductive reasoning about systems; learning; systems analysis and design; and theoretical as well as experimental knowledge regarding various categories of systems. Submitted research must be well presented and must clearly state the contribution and novelty. Manuscripts dealing with particular kinds of systems which lack general applicability across a broad range of systems should be sent to journals specializing in the respective topics.
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