Topic Segmentation of Research Article Collections

Topic Segmentation of Research Article Collections

Abstract

Collections of research article data harvested from the web have become common recently since they are important resources for experimenting on tasks such as named entity recognition, text summarization, or keyword generation. In fact, certain types of experiments require collections that are both large and topically structured, with records assigned to separate research disciplines. Unfortunately, the current collections of publicly available research articles are either small or heterogeneous and unstructured. In this work, we perform topic segmentation of a paper data collection that we crawled and produce a multitopic dataset of roughly seven million paper data records. We construct a taxonomy of topics extracted from the data records and then annotate each document with its corresponding topic from that taxonomy. As a result, it is possible to use this newly proposed dataset in two modalities: as a heterogeneous collection of documents from various disciplines or as a set of homogeneous collections, each from a single research topic.

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Authors
  • Çano, Erion
  • Roth, Benjamin
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Shortfacts
Category
Technical Report (Working Paper)
Divisions
Data Mining and Machine Learning
Subjects
Kuenstliche Intelligenz
Sprachverarbeitung
Publisher
Arxiv
Date
18 May 2022
Official URL
https://arxiv.org/abs/2205.11249
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