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Model fitting in (n+1) dimensions

机译:(n + 1)维的模型拟合

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摘要

Conventionally, fitting a mathematical model to empirically derived data is achieved by varying model parameters to minimize the deviations between expected and observed values in the dependent dimension. However, when functions to be fit are multivalued (e.g., an ellipse), conventional model fitting procedures fail. A novel (n+l)-dimensional [(n+1)-D] model fitting procedure is presented which can solve such problems by transforming the n-D model and data into (n+1)-D space and then minimizing deviations in the constructed dimension. While the (n+1)-D procedure provides model fits identical to those obtained with conventional methods for single-valued functions, it also extends parameter estimation to multivalued functions.
机译:常规地,通过改变模型参数以最小化因变量中的期望值和观察值之间的偏差来实现将数学模型拟合到经验得出的数据。但是,当要拟合的函数是多值的(例如椭圆形)时,常规的模型拟合过程将失败。提出了一种新颖的(n + 1)维[(n + 1)-D]模型拟合程序,该程序可以通过将nD模型和数据转换为(n + 1)-D空间然后最小化模型中的偏差来解决此类问题。构造尺寸。尽管(n + 1)-D过程提供的模型拟合与使用常规方法获得的单值函数的模型拟合相同,但它还将参数估计扩展到了多值函数。

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