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Multi-Element Long Distance Dependencies: Using SPk Languages to Explore the Characteristics of Long-Distance Dependencies

机译:多元素长距离依赖关系:使用SPk语言探索长距离依赖关系的特征

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In order to successfully model Long Distance Dependencies (LDDs) it is necessary to understand the full-range of the characteristics of the LDDs exhibited in a target dataset. In this paper, we use Strictly k-Piecewise languages to generate datasets with various properties. We then compute the characteristics of the LDDs in these datasets using mutual information and analyze the impact of factors such as (ⅰ) k, (ⅱ) length of LDDs, (ⅲ) vocabulary size, (ⅳ) forbidden subsequences, and (ⅴ) dataset size. This analysis reveal that the number of interacting elements in a dependency is an important characteristic of LDDs. This leads us to the challenge of modelling multielement long-distance dependencies. Our results suggest that attention mechanisms in neural networks may aide in modeling datasets with multi-element long-distance dependencies. However, we conclude that there is a need to develop more efficient attention mechanisms to address this issue.
机译:为了成功地对长距离依赖关系(LDD)进行建模,有必要了解目标数据集中显示的LDD的全部特性。在本文中,我们使用严格的k-Piecewise语言生成具有各种属性的数据集。然后,我们使用相互信息来计算这些数据集中LDD的特征,并分析诸如(ⅰ)k,(ⅱ)LDDs长度,(ⅲ)词汇量,(ⅳ)禁止子序列和(ⅴ)等因素的影响。数据集大小。该分析表明,依赖项中交互元素的数量是LDD的重要特征。这使我们面临建模多元素长距离依赖项的挑战。我们的结果表明,神经网络中的注意力机制可能有助于建模具有多元素长距离依赖性的数据集。但是,我们得出结论,有必要开发更有效的注意力机制来解决此问题。

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