MLCLLGApr 18, 2021

Group-Sparse Matrix Factorization for Transfer Learning of Word Embeddings

arXiv:2104.08928v310 citations
Originality Highly original
AI Analysis

This addresses the problem of domain adaptation for word embeddings in fields like healthcare or retail, where word meanings can shift, and is incremental by building on existing matrix factorization methods with a novel penalty.

The paper tackles the challenge of learning word embeddings in new domains with limited data by proposing a two-stage estimator with a group-sparse penalty to transfer knowledge from large corpora, proving it achieves high accuracy with less domain-specific data and showing local minima are statistically indistinguishable from the global minimum.

Unstructured text provides decision-makers with a rich data source in many domains, ranging from product reviews in retail to nursing notes in healthcare. To leverage this information, words are typically translated into word embeddings -- vectors that encode the semantic relationships between words -- through unsupervised learning algorithms such as matrix factorization. However, learning word embeddings from new domains with limited training data can be challenging, because the meaning/usage may be different in the new domain, e.g., the word ``positive'' typically has positive sentiment, but often has negative sentiment in medical notes since it may imply that a patient tested positive for a disease. In practice, we expect that only a small number of domain-specific words may have new meanings. We propose an intuitive two-stage estimator that exploits this structure via a group-sparse penalty to efficiently transfer learn domain-specific word embeddings by combining large-scale text corpora (such as Wikipedia) with limited domain-specific text data. We bound the generalization error of our transfer learning estimator, proving that it can achieve high accuracy with substantially less domain-specific data when only a small number of embeddings are altered between domains. Furthermore, we prove that all local minima identified by our nonconvex objective function are statistically indistinguishable from the global minimum under standard regularization conditions, implying that our estimator can be computed efficiently. Our results provide the first bounds on group-sparse matrix factorization, which may be of independent interest. We empirically evaluate our approach compared to state-of-the-art fine-tuning heuristics from natural language processing.

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