posted by organizer: eunsol || 2091 views || tracked by 6 users: [display]

AKBC 2022 : 4th Conference on Automated Knowledge Base Construction (AKBC)

FacebookTwitterLinkedInGoogle

Link: https://www.akbc.ws/2022
 
When Nov 3, 2022 - Nov 5, 2022
Where London, UK, Virtual (hybrid)
Submission Deadline Jul 10, 2022
Notification Due Sep 1, 2022
Final Version Due Sep 15, 2022
Categories    NLP   information retrieval
 

Call For Papers

4th Conference on Automated Knowledge Base Construction (AKBC)
November 3rd-5th, 2022, London, UK and online
Homepage: http://www.akbc.ws
Email: info@akbc.ws
======================================================
Key dates
Paper submission deadline (OpenReview): July 10th
Commitment deadline (ARR, with reviews and a meta review): August 5th
Review period: July 11th - 31st
Author response period: August 1st - August 5th
Notification of acceptance: September 1st
Camera-ready deadline: September 15th
Conference: November 3rd-5th

All deadlines are 11.59 pm UTC -12h (“anywhere on Earth”).

======================================================

Knowledge Base Construction
Knowledge gathering, representation, and reasoning are among the fundamental challenges of artificial intelligence. Large-scale repositories of knowledge about entities, relations, and their abstractions are known as “knowledge bases”. Most major technology companies now have substantial efforts in knowledge base construction. Related scholarly work spans many research areas, including machine learning, natural language processing, computer vision, information integration, databases, search, data mining, knowledge representation, human computation, human-computer interfaces, and fairness. The AKBC conference serves as a research forum for gathering all these areas, in both academia and industry.

======================================================
Call for Papers
We invite the submission of papers describing previously unpublished research, including new methodology, datasets, evaluations, surveys, reproduced results, negative results, and visionary positions.
Topics of interest include, but are not limited to:
Natural language processing, information extraction, extraction of entities, relations, and events, semantic parsing, coreference, machine reading, entailment, web mining, multilingual NLP.
Information integration, entity resolution, schema & ontology alignment, text and structure alignment, federated KBs, Semantic Web.
Machine learning, supervised, unsupervised, lightly-supervised and distantly-supervised learning, deep learning, symbolic learning, multimodal learning, embeddings of knowledge.
Search, question-answering, reasoning, knowledge base completion, queries on mixtures of structured and unstructured data; querying under uncertainty.
Multi-modal knowledge bases: structured data, text, images, video, audio.
Human-computer interaction, crowdsourcing, interactive learning.
Fairness, accountability, transparency, misinformation, multiple viewpoints, uncertainty.
Databases, probabilistic databases, distributed databases, database cleaning, scalable computation, distributed computation, dynamic data, online adaptation of knowledge.
Systems, languages and toolkits, demonstrations of existing knowledge bases.
Evaluation of AKBC, datasets, evaluation methodology.
Reviewing will be double-blind on the OpenReview platform, with papers, reviews and comments publicly visible. Papers should be restricted to 10 single-column pages, excluding references. Appendices should be put after references and submitted in one PDF document. We also encourage authors to upload their code and data ((=100 Mb) as part of their supplementary material in order to help reviewers assess the quality of the work. Like submissions, supplementary material must be anonymized.
All submissions must be formatted with LaTeX using the following LaTeX source: You can either download the template on the website or use the Overleaf template: https://www.overleaf.com/latex/templates/akbc22-latex/kctstgcbhvsn.
Submission site: https://openreview.net/group?id=AKBC.ws/2022/Conference.
Submission of previously published/accepted work: Submissions that are identical (or substantially similar) to versions that have been previously published, or accepted for publication, are not allowed and violate our dual submission policy. However, papers that cite previous related work by the authors and papers that have appeared on non-peered reviewed websites (like arXiv) or that have been presented at workshops (i.e., venues that do not have publication proceedings) do not violate the policy. The policy is enforced during the whole reviewing process.
Concurrent Submissions: Concurrent submissions or commitments to other conferences/workshops including EMNLP 2022 is not allowed.

======================================================
Invited Talks
The following are confirmed invited speakers. Most of them will attend the conference in person and some will present virtually.
Dipanjan Das, Google AI
Jason Eisner, Johns Hopkins University/Semantic Machines
Douwe Kiewla, HuggingFace
Partha Talukdar, Google Research/Indian Institute of Science
Angeliki Lazaridou, Deepmind
Stephan Lewandowsky, University of Bristol
John Winn, Microsoft Research
Raquel Fernández, University of Amsterdam
Jessica D. Tenenbaum, North Carolina Department of Health and Human Services/Duke University
He He, New York University
Workshops
In addition to the conference program, we will have a one-day collection of workshops on focused topics.
======================================================
Organizers
General Chair: Sebastian Riedel, University College London, Facebook AI Research
Local Chair: Fabio Petroni, Facebook AI Research
Program Co-Chair: Andreas Vlachos, University of Cambridge
Program Co-Chair: Eunsol Choi, UT Austin, Google AI
Workshop Chair: James Thorne, KAIST
Virtual Platform Chair: Marek Rei, Imperial College London
Area Chairs
Ioannis Konstas, Heriot-Watt University
Pasquale Minervini, University College London
Siva Reddy, McGill University
Nicola De Cao, University of Amsterdam
Minjoon Seo, KAIST AI
Bhavana Dalvi, Allen Institute for Artificial Intelligence

Questions? Please mail: info@akbc.ws

Related Resources

PAKDD 2025   29th Pacific-Asia Conference on Knowledge Discovery and Data Mining
CEU 2025   8th International Conference on Civil Engineering and Urban Planning
IDEAL 2024   Intelligent Data Engineering and Automated Learning
IEEE Big Data - MMAI 2024   IEEE Big Data 2024 Workshop on Multimodal AI
eKNOW 2025   The Seventeenth International Conference on Information, Process, and Knowledge Management
IJCSA 2024   International Journal on Computational Science & Applications
ICAMC 2024   2024 10th International Conference on Architecture, Materials and Construction (ICAMC 2024)
BIBC 2024   5th International Conference on Big Data, IOT and Blockchain
ecml-pkdd-journal-track 2025   Journal Track with ECML PKDD 2025
JSS SI: AI testing and analysis 2024   [JSS - Elsevier] Special Issue on Automated Testing and Analysis for Dependable AI-enabled Software and Systems