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MAILEX: Email Event and Argument Extraction

MailEx dataset addresses event extraction from conversational emails through fine-tuned sequence labeling, generative extraction, and few-shot in-context learning, highlighting challenges in non-continuous triggers, non-named entity arguments, and conversational history modeling.

Year
2023
Venue
arXiv 2023
Authors
7
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arxiv.org/abs/2305.13469v2ARXIV-DEFAULT
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Abstract

In this work, we present the first dataset, MailEx, for performing event extraction from conversational email threads. To this end, we first proposed a new taxonomy covering 10 event types and 76 arguments in the email domain. Our final dataset includes 1.5K email threads and ~4K emails, which are annotated with totally ~8K event instances. To understand the task challenges, we conducted a series of experiments comparing three types of approaches, i.e., fine-tuned sequence labeling, fine-tuned generative extraction, and few-shot in-context learning. Our results showed that the task of email event extraction is far from being addressed, due to challenges lying in, e.g., extracting non-continuous, shared trigger spans, extracting non-named entity arguments, and modeling the email conversational history. Our work thus suggests more future investigations in this domain-specific event extraction task.

Authors

7