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A Computational Model ofRisk-Context-Dependent Inductive Reasoning Based on a Support Vector Machine

机译:基于支持向量机的风险上下文依赖性推理的计算模型

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A computational model of cognitive inductive reasoning that accounts for risk context effects is proposed. The model is based on a Support Vector Machine (SVM) that utilizes the kernel method. Kernel functions within the model are assumed to represent the functions of similarity computations based on distances between premise entities and conclusion entities in inductive reasoning arguments. Multipliers related to the kernel functions have the role of adjusting similarities and can explain rating shifts between two different risk contexts. Model fitting data supports the SVM-based model with kernel functions as a model of inductive reasoning in risk contexts. Finally, the paper discusses how the multipliers for kernel functions provide a satisfactory cognitive theoretical account of similarity adjustment.
机译:提出了一种认知归纳推理的计算模型,其占风险上下文效应的算法。该模型基于使用内核方法的支持向量机(SVM)。模型内的内核函数被假设基于前提实体与归纳推理参数中的结论实体之间的距离来表示相似性计算的功能。与内核功能相关的乘法器具有调整相似性的作用,可以解释两个不同风险上下文之间的评级偏移。模型拟合数据支持基于SVM的模型,内核功能是风险上下文中的归纳推理模型。最后,本文讨论了内核功能的乘数如何提供相似性调整的令人满意的认知理论叙述。

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