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Bibliographic Details
Main Authors: Witschard, Daniel, Jusufi, Ilir, Kerren, Andreas
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2409.00478
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author Witschard, Daniel
Jusufi, Ilir
Kerren, Andreas
author_facet Witschard, Daniel
Jusufi, Ilir
Kerren, Andreas
contents Embeddings are powerful tools for transforming complex and unstructured data into numeric formats suitable for computational analysis tasks. In this work, we use multiple embeddings for similarity calculations to be applied in bibliometrics and scientometrics. We build a multivariate network (MVN) from a large set of scientific publications and explore an aspect-driven analysis approach to reveal similarity patterns in the given publication data. By dividing our MVN into separately embeddable aspects, we are able to obtain a flexible vector representation which we use as input to a novel method of similarity-based clustering. Based on these preprocessing steps, we developed a visual analytics application, called Simbanex, that has been designed for the interactive visual exploration of similarity patterns within the underlying publications.
format Preprint
id arxiv_https___arxiv_org_abs_2409_00478
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Simbanex: Similarity-based Exploration of IEEE VIS Publications
Witschard, Daniel
Jusufi, Ilir
Kerren, Andreas
Digital Libraries
Machine Learning
Embeddings are powerful tools for transforming complex and unstructured data into numeric formats suitable for computational analysis tasks. In this work, we use multiple embeddings for similarity calculations to be applied in bibliometrics and scientometrics. We build a multivariate network (MVN) from a large set of scientific publications and explore an aspect-driven analysis approach to reveal similarity patterns in the given publication data. By dividing our MVN into separately embeddable aspects, we are able to obtain a flexible vector representation which we use as input to a novel method of similarity-based clustering. Based on these preprocessing steps, we developed a visual analytics application, called Simbanex, that has been designed for the interactive visual exploration of similarity patterns within the underlying publications.
title Simbanex: Similarity-based Exploration of IEEE VIS Publications
topic Digital Libraries
Machine Learning
url https://arxiv.org/abs/2409.00478