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This workshop aims to bring together researchers from
multiple focus areas such as Natural Language Processing
(NLP), Entity Linking (EL), Relation Extraction (RE),
Knowledge Representation and Reasoning (KRR), Deep Learning
(DL), Knowledge Base Construction (KBC), Semantic Web, Linked
Data, and other related fields to foster a discussion and
enhance the state of-the-art in knowledge graph generation
from text. The participants will find opportunities to present
and hear about other emerging research and applications, to
exchange ideas and experiences, and to identify new
opportunities for collaborations across disciplines. We plan
to involve the many prominent research groups in the Semantic
Web community which in the last years focused on the
generation of knowledge graphs from textual sources in
different fields, such as research data (ORKG,
AI-KG, Nanopublications), question answering (ParaQA, NSQA),
common sense (CSKG), automotive (CoSI,
ASKG), biomedical (Hetionet), and many others. This year, we
are also organizing the First International Biochemical
Knowledge Extraction Challenge
in TEXT2KG Workshop.
Co-located event First International Biochemical Knowledge
Extraction Challenge (BiKE-2023)
Most of the structured biochemical information available on
the Web today is manually curated, and it is practically
impossible to keep pace with the research being constantly
published in scientific articles. Within this challenge, we
want to speed up and promote research on automatic
biochemical knowledge extraction mechanisms with the aim of
increasing the information available on natural
products to promote the development of environmental-friendly
products while increasing awareness of the biodiversity
value.Awards: The first, second and third best biochemical
knowledge extraction methods are going to be awarded as
follows:
First Place: EUR 1000
Second Place: EUR 500
Third Place: EUR 250
For further information please visit:
https://aksw.github.io/bike/
TEXT2KG THEMES & TOPICS
We are interested in (including but not limited to) the
following themes and topics that study the generation of
Knowledge Graphs from text, based on quantitative,
qualitative, and mixed research methods.
∙ Approaches for generating Knowledge Graphs from text
∙ Ontologies for representing provenance/metadata of generated
Knowledge Graphs
∙ Benchmarks for KG generation from text
∙ Evaluation methods for KGs generated from text
∙ Industrial applications involving KGs generation from text
∙ Entity and relation extraction
∙ Entity and relation linking
∙ Semantic Parsing
∙ Open Information Extraction
∙ Deep Learning and Generative approaches
∙ Human-in-the-loop methods
IMPORTANT DATES
Paper submissions due: February 28th, 2023
Final decision notification: March 28th, 2023
Camera-ready submissions due: April 11th, 2023
Submission Instructions We invite full research
papers, negative results, position papers, dataset and system
demo papers. Submissions must be original and should not have
been published previously or be under consideration for
publication while being evaluated for this workshop.
Submissions will be evaluated by the program committee based
on the quality of the work and its fit to the workshop themes.
All submissions are double-blind and a high-resolution PDF of
the paper should be uploaded to the EasyChair submission site
before the paper submission deadline. The accepted papers will
be presented at the Text2KG workshop integrated with the
conference, and they will be published as CEUR proceedings.
All must be submitted and formatted in the style of the CEUR
proceedings format. For details on CEUR style, see CEUR’s
Author Instruction. Overleaf Template:
https://www.overleaf.com/latex/templates/template-for-submissions-to-ceurworkshop-proceedings-ce
ur-ws-dot-org/wqyfdgftmcfw
Submission Link:
https://easychair.org/conferences/?conf=text2kg0
Workshop Link:
https://aiisc.ai/text2kg2023/
Contact Person: Sanju Tiwari (
tiwarisanju18@ieee.org)
Organizing Chairs:
Sanju Tiwari, UAT Mexico,
Nandana Mihindukulasooriya, MIT-IBM Watson AI Lab, USA
Francesco Osborne, KMi, The Open University Dimitris
Kontokostas, Diffbot,
Greece Jennifer D’Souza, TIB, Germany,
Mayank Kejriwal, University of Southern California, USA,
Dimitris Kontokostas, Diffbot, Greece
Advisory Committee
Edlira Vakaj, Birmigham City University, UK
Anna Fensel, Wageningen University & Research &
University of Innsbruck, Austria
Maria Esther Vidal, Leibniz University of Hannover and TIB,
Germany
∙ Amit Sheth, University of South Carolina, USA
Sören Auer, Leibniz University of Hannover and TIB, Germany
Enrico Motta, The Open University, United Kingdom
Fernando Ortiz-Rodriguez, Universidad Autonoma de Tamaulipas,
Mexico
Sven Groppe, University of Lubeck, Germany
--
Regards
Dr. Sanju Tiwari (PhD, Post-Doc), SMIEEE
Sr.
Researcher, Universidad
Autonoma de Tamaulipas, Mexico
Visiting Researcher, InfAI, Leipzig
University, Germany
DAAD
Post-Doc-Net AI Fellow
General
Chair KGSWC-2022 (Third
Indo-American Conference)
"Do what you love, Love what you do"