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首页> 外文期刊>Computational intelligence and neuroscience >Encoding Sequential Information in Semantic Space Models: Comparing Holographic Reduced Representation and Random Permutation
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Encoding Sequential Information in Semantic Space Models: Comparing Holographic Reduced Representation and Random Permutation

机译:编码语义空间模型中的顺序信息:与全息缩小的表示和随机排列进行比较

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摘要

Circular convolution and random permutation have each been proposed as neurally plausible binding operators capable of encoding sequential information in semantic memory. We perform several controlled comparisons of circular convolution and random permutation as means of encoding paired associates as well as encoding sequential information. Random permutations outperformed convolution with respect to the number of paired associates that can be reliably stored in a single memory trace. Performance was equal on semantic tasks when using a small corpus, but random permutations were ultimately capable of achieving superior performance due to their higher scalability to large corpora. Finally, “noisy” permutations in which units are mapped to other units arbitrarily (no one-to-one mapping) perform nearly as well as true permutations. These findings increase the neurological plausibility of random permutations and highlight their utility in vector space models of semantics.
机译:循环卷积和随机排列每个都被提出为能够在语义记忆中编码顺序信息的神经卓越的绑定运算符。 我们执行几种控制的循环卷积和随机排列比较,作为编码配对的员工以及编码顺序信息的手段。 随机排列对于可以可靠地存储在单个存储器迹线中的配对相关联的数量方面的卷积旺盛。 在使用小型语料库时,性能等于语义任务,但随机排列最终能够实现由于其对大公司的较高可扩展性而实现的卓越性能。 最后,在任意(无一对一映射)几乎和真正的排列中映射到其他单位的“嘈杂”排列。 这些发现增加了随机排列的神经系统合理性,并突出了他们在矢量空间模型中的效用。

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