このアイテムのアクセス数: 98
このアイテムのファイル:
ファイル | 記述 | サイズ | フォーマット | |
---|---|---|---|---|
jnlp.29.762.pdf | 1.02 MB | Adobe PDF | 見る/開く |
タイトル: | A Peek Into the Memory of T5: Investigating the Factual Knowledge Memory in a Closed-Book QA Setting and Finding Responsible Parts |
著者: | Alkhaldi, Tareq Chu, Chenhui ![]() ![]() ![]() Kurohashi, Sadao ![]() ![]() |
著者名の別形: | 黒橋, 禎夫 |
キーワード: | Analysis Attention Components Question Answering Transformers |
発行日: | 2022 |
出版者: | 言語処理学会 |
誌名: | 自然言語処理 |
巻: | 29 |
号: | 3 |
開始ページ: | 762 |
終了ページ: | 784 |
抄録: | Recent research shows that Transformer-based language models (LMs) store considerable factual knowledge from the unstructured text datasets on which they are pre-trained. The existence and amount of such knowledge have been investigated by probing pre-trained Transformers to answer questions without accessing any external context or knowledge (also called closed-book question answering (QA)). However, this factual knowledge is spread over the parameters inexplicably. The parts of the model most responsible for finding an answer only from a question are unclear. This study aims to understand which parts are responsible for the Transformer-based T5 reaching an answer in a closed-book QA setting. Furthermore, we introduce a head importance scoring method and compare it with other methods on three datasets. We investigate important parts by looking inside the attention heads in a novel manner. We also investigate why some heads are more critical than others and suggest a good identification approach. We demonstrate that some model parts are more important than others in retaining knowledge through a series of pruning experiments. We also investigate the roles of encoder and decoder in a closed-book setting. |
著作権等: | © 2022 The Association for Natural Language Processing Licensed under CC BY 4.0 |
URI: | http://hdl.handle.net/2433/278342 |
DOI(出版社版): | 10.5715/jnlp.29.762 |
出現コレクション: | 学術雑誌掲載論文等 |

このアイテムは次のライセンスが設定されています: クリエイティブ・コモンズ・ライセンス