CLLGSep 2, 2017

Patterns versus Characters in Subword-aware Neural Language Modeling

arXiv:1709.00541v12 citations
AI Analysis

This addresses the challenge of building better word representations for languages with complex morphology, offering a simpler alternative to sophisticated character-based methods.

The paper tackles the problem of representing composite words in natural languages by introducing patterns that capture character n-gram regularities, leading to pattern-based models outperforming character-based ones by 2-20 perplexity points in subword-aware language modeling.

Words in some natural languages can have a composite structure. Elements of this structure include the root (that could also be composite), prefixes and suffixes with which various nuances and relations to other words can be expressed. Thus, in order to build a proper word representation one must take into account its internal structure. From a corpus of texts we extract a set of frequent subwords and from the latter set we select patterns, i.e. subwords which encapsulate information on character $n$-gram regularities. The selection is made using the pattern-based Conditional Random Field model with $l_1$ regularization. Further, for every word we construct a new sequence over an alphabet of patterns. The new alphabet's symbols confine a local statistical context stronger than the characters, therefore they allow better representations in ${\mathbb{R}}^n$ and are better building blocks for word representation. In the task of subword-aware language modeling, pattern-based models outperform character-based analogues by 2-20 perplexity points. Also, a recurrent neural network in which a word is represented as a sum of embeddings of its patterns is on par with a competitive and significantly more sophisticated character-based convolutional architecture.

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