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TopicTracker: A platform for topic trajectory identification and visualisation

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posted on 2024-07-11, 15:29 authored by Yong-Bin KangYong-Bin Kang, Timos Sellis
Topic trajectory information provides crucial insight into the dynamics of topics and their evolutionary relationships over a given time. Also, this information can improve our understanding on how new topics have emerged or formed through a sequential or interrelated events of emergence, modification and integration of prior topics. Nevertheless, the implementation of the existing methods for topic trajectory identification is rarely available as usable software. In this paper, we present TopicTracker, a platform for topic trajectory identification and visualisation. The key of TopicTracker is that it can represent the three facets of information together, given two kinds of input: a time-stamped topic profile consisting of the set of the underlying topics over time, and the evolution strength matrix among them: evolutionary pathways of dynamic topics, evolution states of the topics, and topic importance. TopicTracker is a publicly available software implemented using the R software.

Funding

ARC | LP170100416

Identifying technological trajectories using machine learning algorithms : Australian Research Council (ARC) | LP170100416

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ISSN

2352-7110

Journal title

SoftwareX

Volume

22

Pagination

101330-

Publisher

Elsevier BV

Copyright statement

Copyright © 2023 The Authors. This is an open access article under the CC BY-NC-ND license.

Language

eng

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