Emotion-Cause Pair Extraction in Customer Reviews
- URL: http://arxiv.org/abs/2112.03984v1
- Date: Tue, 7 Dec 2021 20:56:20 GMT
- Title: Emotion-Cause Pair Extraction in Customer Reviews
- Authors: Arpit Mittal, Jeel Tejaskumar Vaishnav, Aishwarya Kaliki, Nathan
Johns, Wyatt Pease
- Abstract summary: We aim to present our work in ECPE in the domain of online reviews.
With a manually annotated dataset, we explore an algorithm to extract emotion cause pairs using a neural network.
We propose a model using previous reference materials and combining emotion-cause pair extraction with research in the domain of emotion-aware word embeddings.
- Score: 3.561118125328526
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Emotion-Cause Pair Extraction (ECPE) is a complex yet popular area in Natural
Language Processing due to its importance and potential applications in various
domains. In this report , we aim to present our work in ECPE in the domain of
online reviews. With a manually annotated dataset, we explore an algorithm to
extract emotion cause pairs using a neural network. In addition, we propose a
model using previous reference materials and combining emotion-cause pair
extraction with research in the domain of emotion-aware word embeddings, where
we send these embeddings into a Bi-LSTM layer which gives us the emotionally
relevant clauses. With the constraint of a limited dataset, we achieved . The
overall scope of our report comprises of a comprehensive literature review,
implementation of referenced methods for dataset construction and initial model
training, and modifying previous work in ECPE by proposing an improvement to
the pipeline, as well as algorithm development and implementation for the
specific domain of reviews.
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