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Memory and learning in a meso level reasoning system

机译:中观水平推理系统中的记忆和学习

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In earlier work, we built on the notion of feature spaces to develop a formal paradigm for representation and reasoning that is intermediate between symbolic and neural paradigms. In our model, states of the system, that is, objects or examples of concepts, can be represented as multi-spectral images. A metric is defined on these states in terms of the energy needed to transform image intensity patterns. The metric in turn is used to define dynamics which implement the two fundamental reasoning activities of categorisation and composition. In this paper, we show how all the parameters used in the dynamics can be derived from a memory for exemplars. Such a memory allows for learning through experience.
机译:在早期的工作中,我们基于特征空间的概念来开发表示和推理的形式范式,该范式介于符号范式和神经范式之间。在我们的模型中,系统状态(即对象或概念示例)可以表示为多光谱图像。根据转换图像强度模式所需的能量,在这些状态上定义了一个度量。该度量标准又用于定义实现分类和组合这两个基本推理活动的动力学。在本文中,我们展示了如何从示例的内存中导出动力学中使用的所有参数。这样的记忆允许通过经验学习。

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