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A Scilab toolbox of nonlinear regression models using a linear solver

机译:使用线性求解器的非线性回归模型的Scilab工具箱

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This work describes a toolbox of nonlinear regression models developed on an open-source platform of Scilab. The models are formed from radial basis function (RBF) neural network structures. For a fast calculation of the models, we adopt a linear solver in implementations. A specific effort is made on applications of linear priors, which presents a unique feature different from other existing regression toolboxes. In this work, we define linear priors to be a class of prior information that exhibits a linear relation to the attributes of interests, such as variables, free parameters, or their functions of the models. Two approaches of incorporating linear priors are implemented in the models, namely, Lagrange Multiplier (LM) and Direct Elimination (DE). Several numerical examples are demonstrated in the toolbox for the educational purpose on learning nonlinear regression models. From the numerical examples, users can understand the importance of utilizing linear priors in models. The linear priors include the hard constraints on interpolation points and soft constraints on ranking list.
机译:这项工作描述了在Scilab的开源平台上开发的非线性回归模型的工具箱。该模型由径向基函数(RBF)神经网络结构形成。为了快速计算模型,我们在实现中采用了线性求解器。在线性先验的应用上进行了特别的努力,它具有与其他现有回归工具箱不同的独特功能。在这项工作中,我们将线性先验定义为一类先验信息,该信息与利益属性(例如变量,自由参数或其模型功能)呈线性关系。模型中采用了两种合并线性先验的方法,即拉格朗日乘数(LM)和直接消除(DE)。在工具箱中展示了一些数值示例,用于教育非线性回归模型。从数值示例中,用户可以了解在模型中利用线性先验的重要性。线性先验包括对插值点的硬约束和对排序列表的软约束。

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