CLAIJul 31, 2022

Neural Knowledge Bank for Pretrained Transformers

Peking U
arXiv:2208.00399v222 citationsh-index: 38
Originality Incremental advance
AI Analysis

This addresses the problem of enhancing factual knowledge in AI models for tasks like question answering, though it is incremental as it builds on existing memory-based interpretations of Transformers.

The paper tackles the limited factual knowledge retention in pretrained Transformers by introducing a Neural Knowledge Bank (NKB) and a knowledge injection strategy, resulting in improved performance on closed-book question answering datasets without degrading general language abilities like summarization and machine translation.

The ability of pretrained Transformers to remember factual knowledge is essential but still limited for existing models. Inspired by existing work that regards Feed-Forward Networks (FFNs) in Transformers as key-value memories, we design a Neural Knowledge Bank (NKB) and a knowledge injection strategy to introduce extra factual knowledge for pretrained Transformers. The NKB is in the form of additional knowledgeable memory slots to the FFN and the memory-like architecture makes it highly interpretable and flexible. When injecting extra knowledge with the Salient Span Masking (SSM) pretraining objective, we fix the original pretrained model and train only the NKB. This training strategy makes sure the general language modeling ability of the original pretrained model is not influenced. By mounting the NKB onto the T5 model, we verify its strong ability to store extra factual knowledge based on three closed-book question answering datasets. Also, we prove that mounting the NKB will not degrade the general language modeling ability of T5 through two representative tasks, summarization and machine translation. Further, we thoroughly analyze the interpretability of the NKB and reveal the meaning of its keys and values in a human-readable way. Finally, we show the flexibility of the NKB by directly modifying its value vectors to update the factual knowledge stored in it.

Foundations

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