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Combinatorial individual differences scaling within the city-block metric

机译:街区量度内组合个体差异的缩放

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摘要

A new method is proposed for conducting individual differences scaling within the city-block metric that does not rely on gradient- or subgradient-based optimization. Instead, a combinatorial optimization scheme is utilized for identifying object coordinates minimizing the least-squares loss function. The illustrative application of combinatorial individual differences scaling within the city-block metric to schematic face stimuli suggests that the new method offers a promising alternative to gradient-based attempts for fitting city-block scaling models, which suffer from the well-documented difficulty of local minima.
机译:提出了一种新方法,用于在不依赖于基于梯度或基于次梯度的优化的城市街区度量标准内进行个体差异缩放。取而代之的是,使用组合优化方案来识别最小化最小二乘损失函数的对象坐标。城市街区度量中组合个体差异缩放对示意性面部刺激的说明性应用表明,该新方法为基于梯度的拟合城市街区缩放模型的尝试提供了一种有希望的替代方法,该尝试遭受了当地文献证明的困难极小值。

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