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A novel logistic-NARX model as a classifier for dynamic binary classification

机译:一种新的Logistic-NARX模型作为动态二进制分类的分类器

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摘要

System identification and data-driven modeling techniques have seen ubiquitous applications in the past decades. In particular, parametric modeling methodologies such as linear and nonlinear autoregressive with exogenous input models (ARX and NARX) and other similar and related model types have been preferably applied to handle diverse data-driven modeling problems due to their easy-to-compute linear-in-the-parameter structure, which allows the resultant models to be easily interpreted. In recent years, several variations of the NARX methodology have been proposed that improve the performance of the original algorithm. Nevertheless, in most cases, NARX models are applied to regression problems where all output variables involve continuous or discrete-time sequences sampled from a continuous process, and little attention has been paid to classification problems where the output signal is a binary sequence. Therefore, we developed a novel classification algorithm that combines the NARX methodology with logistic regression and the proposed method is referred to as logistic-NARX model. Such a combination is advantageous since the NARX methodology helps to deal with the multicollinearity problem while the logistic regression produces a model that predicts categorical outcomes. Furthermore, the NARX approach allows for the inclusion of lagged terms and interactions between them in a straight forward manner resulting in interpretable models where users can identify which input variables play an important role individually and/or interactively in the classification process, something that is not achievable using other classification techniques like random forests, support vector machines, and k-nearest neighbors. The efficiency of the proposed method is tested with five case studies.
机译:在过去的几十年中,系统识别和数据驱动的建模技术已经看到普遍存在的应用。特别地,优选地,优选地应用了参数化建模方法,例如具有外源输入模型(ARX和NARX)和其他类似和相关的模型类型的线性和非线性自回归,以便由于它们易于计算的线性而处理各种数据驱动的建模问题。参数结构,允许可以轻松解释所得到的模型。近年来,已经提出了鼻腔方法的几种变化,提高了原始算法的性能。然而,在大多数情况下,NARX模型应用于回归问题,其中所有输出变量涉及从连续过程采样的连续或离散时间序列,并且已经支付了对输出信号是二进制序列的分类问题。因此,我们开发了一种新的分类算法,将NARX方法与Logistic回归结合,并且所提出的方法被称为逻辑-NARX模型。这种组合是有利的,因为NARX方法有助于处理多色性问题,而Logistic回归产生预测分类结果的模型。此外,NARX方法允许以直接向前的方式将滞后的术语和交互以直接的方式产生可解释的模型,其中用户可以在分类过程中单独和/或交互地识别哪个输入变量在课程过程中播放重要角色,这不是使用其他分类技术可以实现,如随机林,支持向量机和k最近邻居。用五个案例研究测试了所提出的方法的效率。

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