1. Grounded Compositional Outputs for Adaptive Language Modeling
- Author
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Noah A. Smith, Nikolaos Pappas, and Phoebe Mulcaire
- Subjects
FOS: Computer and information sciences ,Vocabulary ,Computer science ,media_common.quotation_subject ,WordNet ,02 engineering and technology ,010501 environmental sciences ,computer.software_genre ,Lexicon ,01 natural sciences ,Component (UML) ,0202 electrical engineering, electronic engineering, information engineering ,Layer (object-oriented design) ,Adaptation (computer science) ,0105 earth and related environmental sciences ,media_common ,Computer Science - Computation and Language ,business.industry ,Embedding ,020201 artificial intelligence & image processing ,Artificial intelligence ,Language model ,business ,Computation and Language (cs.CL) ,computer ,Natural language processing - Abstract
Language models have emerged as a central component across NLP, and a great deal of progress depends on the ability to cheaply adapt them (e.g., through finetuning) to new domains and tasks. A language model's vocabulary$-$typically selected before training and permanently fixed later$-$affects its size and is part of what makes it resistant to such adaptation. Prior work has used compositional input embeddings based on surface forms to ameliorate this issue. In this work, we go one step beyond and propose a fully compositional output embedding layer for language models, which is further grounded in information from a structured lexicon (WordNet), namely semantically related words and free-text definitions. To our knowledge, the result is the first word-level language model with a size that does not depend on the training vocabulary. We evaluate the model on conventional language modeling as well as challenging cross-domain settings with an open vocabulary, finding that it matches or outperforms previous state-of-the-art output embedding methods and adaptation approaches. Our analysis attributes the improvements to sample efficiency: our model is more accurate for low-frequency words., EMNLP 2020
- Published
- 2020
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