English

Actionable Email Intent Modeling with Reparametrized RNNs

Computation and Language 2017-12-27 v1

Abstract

Emails in the workplace are often intentional calls to action for its recipients. We propose to annotate these emails for what action its recipient will take. We argue that our approach of action-based annotation is more scalable and theory-agnostic than traditional speech-act-based email intent annotation, while still carrying important semantic and pragmatic information. We show that our action-based annotation scheme achieves good inter-annotator agreement. We also show that we can leverage threaded messages from other domains, which exhibit comparable intents in their conversation, with domain adaptive RAINBOW (Recurrently AttentIve Neural Bag-Of-Words). On a collection of datasets consisting of IRC, Reddit, and email, our reparametrized RNNs outperform common multitask/multidomain approaches on several speech act related tasks. We also experiment with a minimally supervised scenario of email recipient action classification, and find the reparametrized RNNs learn a useful representation.

Keywords

Cite

@article{arxiv.1712.09185,
  title  = {Actionable Email Intent Modeling with Reparametrized RNNs},
  author = {Chu-Cheng Lin and Dongyeop Kang and Michael Gamon and Madian Khabsa and Ahmed Hassan Awadallah and Patrick Pantel},
  journal= {arXiv preprint arXiv:1712.09185},
  year   = {2017}
}

Comments

AAAI 2018

R2 v1 2026-06-22T23:29:06.051Z