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Main Authors: Wu, Fang, Li, Stan Z.
Format: Preprint
Published: 2021
Subjects:
Online Access:https://arxiv.org/abs/2103.15066
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author Wu, Fang
Li, Stan Z.
author_facet Wu, Fang
Li, Stan Z.
contents The integration of sentences poses an intriguing challenge within the realm of NLP, but it has not garnered the attention it deserves. Existing methods that focus on sentence arrangement, textual consistency, and question answering are inadequate in addressing this issue. To bridge this gap, we introduce InsertGNN, which conceptualizes the problem as a graph and employs a hierarchical Graph Neural Network (GNN) to comprehend the interplay between sentences. Our approach was rigorously evaluated on a TOEFL dataset, and its efficacy was further validated on the expansive arXiv dataset using cross-domain learning. Thorough experimentation unequivocally establishes InsertGNN's superiority over all comparative benchmarks, achieving an impressive 70% accuracy, a performance on par with average human test scores.
format Preprint
id arxiv_https___arxiv_org_abs_2103_15066
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publishDate 2021
record_format arxiv
spellingShingle InsertGNN: Can Graph Neural Networks Outperform Humans in TOEFL Sentence Insertion Problem?
Wu, Fang
Li, Stan Z.
Computation and Language
The integration of sentences poses an intriguing challenge within the realm of NLP, but it has not garnered the attention it deserves. Existing methods that focus on sentence arrangement, textual consistency, and question answering are inadequate in addressing this issue. To bridge this gap, we introduce InsertGNN, which conceptualizes the problem as a graph and employs a hierarchical Graph Neural Network (GNN) to comprehend the interplay between sentences. Our approach was rigorously evaluated on a TOEFL dataset, and its efficacy was further validated on the expansive arXiv dataset using cross-domain learning. Thorough experimentation unequivocally establishes InsertGNN's superiority over all comparative benchmarks, achieving an impressive 70% accuracy, a performance on par with average human test scores.
title InsertGNN: Can Graph Neural Networks Outperform Humans in TOEFL Sentence Insertion Problem?
topic Computation and Language
url https://arxiv.org/abs/2103.15066