Matches in Nanopublications for { <https://doi.org/10.1109/access.2023.3269660> ?p ?o ?g. }
Showing items 1 to 20 of
20
with 100 items per page.
- access.2023.3269660 type ResearchPaper assertion.
- access.2023.3269660 type ResearchPaper assertion.
- access.2023.3269660 authoredBy 0000-0001-9166-1741 assertion.
- access.2023.3269660 authoredBy 0000-0001-9166-1741 assertion.
- access.2023.3269660 authoredBy 0000-0001-6071-2921 assertion.
- access.2023.3269660 authoredBy 0000-0001-6071-2921 assertion.
- access.2023.3269660 authoredBy 0000-0002-8743-4244 assertion.
- access.2023.3269660 authoredBy 0000-0002-8743-4244 assertion.
- access.2023.3269660 authoredBy 0000-0003-2031-6443 assertion.
- access.2023.3269660 authoredBy 0000-0003-2031-6443 assertion.
- access.2023.3269660 authoredBy 0000-0003-3035-1162 assertion.
- access.2023.3269660 authoredBy 0000-0003-3035-1162 assertion.
- access.2023.3269660 isPartOf 2169-3536 assertion.
- access.2023.3269660 isPartOf 2169-3536 assertion.
- access.2023.3269660 title "Detecting Favorite Topics in Computing Scientific Literature via Dynamic Topic Modeling" assertion.
- access.2023.3269660 title "Detecting Favorite Topics in Computing Scientific Literature via Dynamic Topic Modeling" assertion.
- access.2023.3269660 abstract "Topic modeling comprises a set of machine learning algorithms that allow topics to be extracted from a collection of documents. These algorithms have been widely used in many areas, such as identifying dominant topics in scientific research. However, works addressing such problems focus on identifying static topics, providing snapshots that cannot show how those topics evolve. Aiming to close this gap, in this article, we describe an approach for dynamic article set analysis and classification. This is accomplished by querying open data of notable scientific databases via representational state transfers. After that, we enforce data management practices with a dynamic topic modeling approach on the associated metadata available. As a result, we identify research trends for a given field at specific instants and the referred terminology trends evolution throughout the years. It was possible to detect the associated lexical variation over time in published content, ultimately determining the so-called “hot topics” in arbitrary instants and how they correlate." assertion.
- access.2023.3269660 abstract "Topic modeling comprises a set of machine learning algorithms that allow topics to be extracted from a collection of documents. These algorithms have been widely used in many areas, such as identifying dominant topics in scientific research. However, works addressing such problems focus on identifying static topics, providing snapshots that cannot show how those topics evolve. Aiming to close this gap, in this article, we describe an approach for dynamic article set analysis and classification. This is accomplished by querying open data of notable scientific databases via representational state transfers. After that, we enforce data management practices with a dynamic topic modeling approach on the associated metadata available. As a result, we identify research trends for a given field at specific instants and the referred terminology trends evolution throughout the years. It was possible to detect the associated lexical variation over time in published content, ultimately determining the so-called “hot topics” in arbitrary instants and how they correlate." assertion.
- access.2023.3269660 date "2023" assertion.
- access.2023.3269660 date "2023" assertion.