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Main Authors: Parmar, Maulik, Narayan, Apurva
Format: Preprint
Published: 2022
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Online Access:https://arxiv.org/abs/2204.02058
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author Parmar, Maulik
Narayan, Apurva
author_facet Parmar, Maulik
Narayan, Apurva
contents Hypernymy plays a fundamental role in many AI tasks like taxonomy learning, ontology learning, etc. This has motivated the development of many automatic identification methods for extracting this relation, most of which rely on word distribution. We present a novel model HyperBox to learn box embeddings for hypernym discovery. Given an input term, HyperBox retrieves its suitable hypernym from a target corpus. For this task, we use the dataset published for SemEval 2018 Shared Task on Hypernym Discovery. We compare the performance of our model on two specific domains of knowledge: medical and music. Experimentally, we show that our model outperforms existing methods on the majority of the evaluation metrics. Moreover, our model generalize well over unseen hypernymy pairs using only a small set of training data.
format Preprint
id arxiv_https___arxiv_org_abs_2204_02058
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle HyperBox: A Supervised Approach for Hypernym Discovery using Box Embeddings
Parmar, Maulik
Narayan, Apurva
Computation and Language
Artificial Intelligence
Hypernymy plays a fundamental role in many AI tasks like taxonomy learning, ontology learning, etc. This has motivated the development of many automatic identification methods for extracting this relation, most of which rely on word distribution. We present a novel model HyperBox to learn box embeddings for hypernym discovery. Given an input term, HyperBox retrieves its suitable hypernym from a target corpus. For this task, we use the dataset published for SemEval 2018 Shared Task on Hypernym Discovery. We compare the performance of our model on two specific domains of knowledge: medical and music. Experimentally, we show that our model outperforms existing methods on the majority of the evaluation metrics. Moreover, our model generalize well over unseen hypernymy pairs using only a small set of training data.
title HyperBox: A Supervised Approach for Hypernym Discovery using Box Embeddings
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2204.02058