Relational Graph Convolutional Neural Networks for Multihop Reasoning: A
Comparative Study
- URL: http://arxiv.org/abs/2210.06418v2
- Date: Thu, 13 Oct 2022 09:41:37 GMT
- Title: Relational Graph Convolutional Neural Networks for Multihop Reasoning: A
Comparative Study
- Authors: Ieva Stali\=unait\.e, Philip John Gorinski, Ignacio Iacobacci
- Abstract summary: Multihop Question Answering is a complex task that requires steps of reasoning to find the correct answer.
In this paper we explore a number of RGCN-based Multihop QA models, graph relations, and node embeddings, and empirically explore the influence each on Multihop QA performance on the WikiHop dataset.
- Score: 22.398477810999818
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Multihop Question Answering is a complex Natural Language Processing task
that requires multiple steps of reasoning to find the correct answer to a given
question. Previous research has explored the use of models based on Graph
Neural Networks for tackling this task. Various architectures have been
proposed, including Relational Graph Convolutional Networks (RGCN). For these
many node types and relations between them have been introduced, such as simple
entity co-occurrences, modelling coreferences, or "reasoning paths" from
questions to answers via intermediary entities. Nevertheless, a thoughtful
analysis on which relations, node types, embeddings and architecture are the
most beneficial for this task is still missing. In this paper we explore a
number of RGCN-based Multihop QA models, graph relations, and node embeddings,
and empirically explore the influence of each on Multihop QA performance on the
WikiHop dataset.
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