Event argument extraction (EAE) is an important task for information extraction to discover specific argument roles. In this study, we cast EAE as a question-based cloze task and empirically analyze fixed discrete token template performance. As generating human-annotated question templates is often time-consuming and labor-intensive, we further propose a novel approach called “Learning to Ask,” which can learn optimized question templates for EAE without human annotations. Experiments using the ACE-2005 dataset demonstrate that our method based on optimized questions achieves state-of-the-art performance in both the few-shot and supervised settings
Understanding events in texts is a core objective of natural language understanding, which requires ...
Extracting the reported events from text is one of the key research themes in natural language proce...
Event extraction is an important, but challenging task. Many existing techniques decompose it into e...
Event argument extraction (EAE) is an important task for information extraction to discover specific...
Event argument extraction is an essential task in event extraction, and become particularly challeng...
International audienceIn this paper, we approach a recent and under-researched paradigm for the task...
Eliciting knowledge from pre-trained language models via prompt-based learning has shown great poten...
Event Extraction bridges the gap between text and event signals. Based on the assumption of trigger-...
Event extraction is a particularly challenging type of information extraction (IE). Most current eve...
Numerous events occur worldwide and are documented in the news, social media, and various online pla...
The task of event extraction has long been investigated in a supervised learning paradigm, which is ...
In this study, we investigate in-context learning (ICL) in document-level event argument extraction ...
Event argument extraction (EAE) aims to identify the arguments of a given event, and classify the ro...
Obtaining training data for Question Answering (QA) is time-consuming and resource-intensive, and ex...
Deep learning-based information extraction has shown great promise in automating the process of extr...
Understanding events in texts is a core objective of natural language understanding, which requires ...
Extracting the reported events from text is one of the key research themes in natural language proce...
Event extraction is an important, but challenging task. Many existing techniques decompose it into e...
Event argument extraction (EAE) is an important task for information extraction to discover specific...
Event argument extraction is an essential task in event extraction, and become particularly challeng...
International audienceIn this paper, we approach a recent and under-researched paradigm for the task...
Eliciting knowledge from pre-trained language models via prompt-based learning has shown great poten...
Event Extraction bridges the gap between text and event signals. Based on the assumption of trigger-...
Event extraction is a particularly challenging type of information extraction (IE). Most current eve...
Numerous events occur worldwide and are documented in the news, social media, and various online pla...
The task of event extraction has long been investigated in a supervised learning paradigm, which is ...
In this study, we investigate in-context learning (ICL) in document-level event argument extraction ...
Event argument extraction (EAE) aims to identify the arguments of a given event, and classify the ro...
Obtaining training data for Question Answering (QA) is time-consuming and resource-intensive, and ex...
Deep learning-based information extraction has shown great promise in automating the process of extr...
Understanding events in texts is a core objective of natural language understanding, which requires ...
Extracting the reported events from text is one of the key research themes in natural language proce...
Event extraction is an important, but challenging task. Many existing techniques decompose it into e...