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Curve Forecast Based on BP Neural Networks with Application of Mental Curve Tracing

机译:基于BP神经网络的曲线预测应用精神曲线跟踪

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Each curve belongs to a multivariate nonparametric regression model, and many shape-invariant curves form a curve family connected with a reference curve by some parameters. Curve drift models can be built to forecast many curves in practice. In this paper, we put forward the multivariate nonparametric regression mental curve drift model after our study of the mental curves of visual scenes composing. However, the multivariate nonparametric regression mental curve drift model is very complicated to trace. And we apply Neural Networks to solve this problem. Neural Networks have been shown to be particularly effective in handling some complexities commonly found in complicated regression models and datum. Here, we apply Neural Networks to fit the curves family and to forecast the mental curves with curve drift. An example is provided to show the feasibility of curve drift and mental curve tracing with Neural Networks.
机译:每条曲线属于多变量非参数回归模型,并且许多形状不变曲线形成与一些参数相连的曲线系列连接。可以建立曲线漂移模型以预测许多实践曲线。在本文中,我们提出了在我们对视野组成的精神曲线的研究之后提出了多元非参数回归精神曲线漂移模型。然而,多变量非参数回归精神曲线漂移模型对痕迹非常复杂。我们应用神经网络来解决这个问题。已显示神经网络在处理复杂回归模型和基准中常见的一些复杂性方面特别有效。在这里,我们应用神经网络以适应曲线系列,并预测具有曲线漂移的精神曲线。提供了一个例子以显示与神经网络的曲线漂移和精神曲线跟踪的可行性。

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