A Neural Model for Compositional Word Embeddings and Sentence Processing

Shalom Lappin, Jean-Philippe Bernardy
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引用次数: 2

Abstract

We propose a new neural model for word embeddings, which uses Unitary Matrices as the primary device for encoding lexical information. It uses simple matrix multiplication to derive matrices for large units, yielding a sentence processing model that is strictly compositional, does not lose information over time steps, and is transparent, in the sense that word embeddings can be analysed regardless of context. This model does not employ activation functions, and so the network is fully accessible to analysis by the methods of linear algebra at each point in its operation on an input sequence. We test it in two NLP agreement tasks and obtain rule like perfect accuracy, with greater stability than current state-of-the-art systems. Our proposed model goes some way towards offering a class of computationally powerful deep learning systems that can be fully understood and compared to human cognitive processes for natural language learning and representation.
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合成词嵌入与句子处理的神经模型
本文提出了一种新的词嵌入神经网络模型,该模型使用酉矩阵作为编码词汇信息的主要设备。它使用简单的矩阵乘法来导出大单位的矩阵,从而产生一个严格组合的句子处理模型,不会随着时间的推移丢失信息,并且是透明的,从某种意义上说,无论上下文如何,都可以分析词嵌入。该模型不使用激活函数,因此网络在其对输入序列的操作中的每个点都可以通过线性代数方法进行分析。我们在两个NLP协议任务中测试了它,并获得了类似规则的完美精度,比目前最先进的系统具有更大的稳定性。我们提出的模型在某种程度上提供了一类计算能力强大的深度学习系统,这些系统可以完全理解,并与自然语言学习和表示的人类认知过程进行比较。
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