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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.

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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