CLMay 10, 2020

How Context Affects Language Models' Factual Predictions

arXiv:2005.04611v1265 citations
Originality Incremental advance
AI Analysis

This work addresses the limitation of storing factual knowledge in fixed model weights for zero-shot question answering, offering an incremental improvement over previous supervised methods.

The paper tackled the problem of factual knowledge retrieval in language models by integrating an unsupervised retrieval system with pre-trained models, resulting in competitive performance with supervised baselines and improved robustness to noisy contexts.

When pre-trained on large unsupervised textual corpora, language models are able to store and retrieve factual knowledge to some extent, making it possible to use them directly for zero-shot cloze-style question answering. However, storing factual knowledge in a fixed number of weights of a language model clearly has limitations. Previous approaches have successfully provided access to information outside the model weights using supervised architectures that combine an information retrieval system with a machine reading component. In this paper, we go a step further and integrate information from a retrieval system with a pre-trained language model in a purely unsupervised way. We report that augmenting pre-trained language models in this way dramatically improves performance and that the resulting system, despite being unsupervised, is competitive with a supervised machine reading baseline. Furthermore, processing query and context with different segment tokens allows BERT to utilize its Next Sentence Prediction pre-trained classifier to determine whether the context is relevant or not, substantially improving BERT's zero-shot cloze-style question-answering performance and making its predictions robust to noisy contexts.

Foundations

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