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FUZZY PREDICTION STRATEGIES FOR GENE-ENVIRONMENT NETWORKS - FUZZY REGRESSION ANALYSIS FOR TWO-MODAL REGULATORY SYSTEMS

机译:基因-环境网络的模糊预测策略-两模态调节系统的模糊回归分析

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摘要

Target-environment networks provide a conceptual framework for the analysis and prediction of complex regulatory systems such as genetic networks, eco-finance networks or sensor-target assignments. These evolving networks consist of two major groups of entities that are interacting by unknown relationships. The structure and dynamics of the hidden regulatory system have to be revealed from uncertain measurement data. In this paper, the concept of fuzzy target-environment networks is introduced and various fuzzy possibilistic regression models are presented. The relation between the targets and/or environmental entities of the regulatory network is given in terms of a fuzzy model. The vagueness of the regulatory system results from the (unknown) fuzzy coefficients. For an identification of the fuzzy coefficients' shape, methods from fuzzy regression are adapted and made applicable to the bi-level situation of target-environment networks and uncertain data. Various shapes of fuzzy coefficients are considered and the control of outliers is discussed. A first numerical example is presented for purposes of illustration. The paper ends with a conclusion and an outlook to future studies.
机译:目标环境网络提供了一个概念框架,用于分析和预测复杂的监管系统,例如遗传网络,生态金融网络或传感器目标分配。这些不断发展的网络由两个主要的实体组组成,它们通过未知关系进行交互。必须从不确定的测量数据中揭示隐藏的监管系统的结构和动态。本文介绍了模糊目标-环境网络的概念,并提出了各种模糊可能性回归模型。监管网络的目标和/或环境实体之间的关系是根据模糊模型给出的。监管系统的模糊性来自(未知)模糊系数。为了识别模糊系数的形状,采用了基于模糊回归的方法,并将其应用于目标环境网络和不确定数据的双层情况。考虑了各种形状的模糊系数,并讨论了离群值的控制。为了说明的目的,给出了第一数值示例。本文最后给出结论和对未来研究的展望。

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