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Learning valid categorical syllogisms using an associative memory

机译:使用联想记忆学习有效的三段论

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Reasoning is a high-level cognitive function that is gaining attention in the artificial neural network community. While there are many types of reasoning, this paper is specifically looking at valid categorical syllogisms. First we show that a standard bi-directional associative memory cannot learn all valid categorical syllogisms because these syllogisms are not linearly separable. Therefore a more complex architecture is proposed to learn the task. A combination of unsupervised and supervised learning networks are used. The unsupervised network compresses the input into novel solutions. The output from the unsupervised network in conjunction with the original input produces a new linearly separable input for the supervised network. This unsupervised-supervised learning network combination can successfully learn all the valid syllogisms. If there is a combination of valid and conditionally valid syllogisms, two different networks should be used. The conditionally valid syllogisms can be recalled using the bi-directional associative memory while the valid syllogisms need the more complex network.
机译:推理是一种高级别的认知功能,即人工神经网络社区正在受到关注。虽然有很多类型的推理,但本文专门针对有效的分类三段论。首先,我们表明标准双向关联内存不能解决所有有效的分类三段论,因为这些三段论不是线性可分离的。因此,建议更复杂的架构来学习任务。使用无监督和监督学习网络的组合。无监督的网络将输入压缩为新颖的解决方案。来自无监督网络的输出与原始输入结合使用,为监督网络提供了一种新的线性可分离输入。这种无监督监督的学习网络组合可以成功地学习所有有效的三段论。如果有效且有条件有条件有效的三段论的组合,则应使用两种不同的网络。可以使用双向关联存储器回忆有条件有效的三段论,而有效的三段论需要更复杂的网络。

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