Compositional Morphology for Word Representations and Language Modelling
About
This paper presents a scalable method for integrating compositional morphological representations into a vector-based probabilistic language model. Our approach is evaluated in the context of log-bilinear language models, rendered suitably efficient for implementation inside a machine translation decoder by factoring the vocabulary. We perform both intrinsic and extrinsic evaluations, presenting results on a range of languages which demonstrate that our model learns morphological representations that both perform well on word similarity tasks and lead to substantial reductions in perplexity. When used for translation into morphologically rich languages with large vocabularies, our models obtain improvements of up to 1.2 BLEU points relative to a baseline system using back-off n-gram models.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Word Similarity | EN RW | Spearman Correlation30 | 10 | |
| Word Similarity | WS353 EN | Spearman Correlation39 | 10 | |
| Word Similarity | WS353 ES | Spearman Correlation28 | 8 | |
| Word Similarity | DE ZG222 | Spearman Correlation0.25 | 8 | |
| Word Similarity | DE GUR350 | Spearman Correlation56 | 8 | |
| Word Similarity | RG65 FR | Spearman Correlation45 | 8 | |
| Language Modeling | Czech (CS) (test) | Perplexity465 | 5 | |
| Language Modeling | German (DE) (test) | Perplexity296 | 5 | |
| Language Modeling | Spanish (ES) (test) | Perplexity200 | 5 | |
| Language Modeling | French (fr) (test) | Perplexity225 | 5 |