AKBC 2021

3rd Conference on Automated Knowledge Base Construction (AKBC)

October 4-7, 2021, Monday-Thursday (held virtually)

Homepage: http://www.akbc.ws

Email: i...@akbc.ws

Key dates

   -

   Paper submission deadline: Thursday, June 17, 2021
   -

   Notification of acceptance: Wednesday, July 30, 2021
   -

   Conference & Workshop Dates: Monday-Thursday, October 4-7, 2021


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.

About the Conference

Nearly a decade after the first AKBC workshop in Grenoble, France, 2010,
AKBC became a conference in 2019. Why a stand-alone conference?

   -

   Long-standing and growing interest in the area.
   -

   We want to grow and connect the community beyond existing individual
   conference communities, bringing together ML, NLP, DB, IR, KRR, semantics,
   reasoning, common sense, QA, human computation, dialog, and HCI.
   -

   We want to set our own culture, including reviewing practices, and
   meeting format.
   -

   Why now?  Growing interest across many areas.  Disconnect among multiple
   relevant communities.  Growing industry and government interest.  Many of
   the long-existing conferences have grown uncomfortably large; a new,
   smaller conference can be more intimate, hospitable, and supportive.


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We invite the submission of papers describing previously unpublished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.


Authors of accepted papers will have the option for their conference paper
to be archival (with full text in AKBC Proceedings, and be considered for
best paper awards) or non-archival (listed in AKBC Conference schedule,
with full text in OpenReview, and the flexibility to also submit
elsewhere).  Double-blind reviewing will be performed on the OpenReview
platform, with papers, reviews and comments publicly visible.

Papers should be restricted to 10 single-column pages, excluding
references. Submission site: http://www.akbc.ws/2021/submission.

Dual Submission Policy: 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.

Invited Talks

The following are confirmed invited speakers. Additional speakers are
expected to be added.

Peter Clark <https://allenai.org/team/peterc> (Allen Institute for AI)
Jia Deng <https://www.cs.princeton.edu/~jiadeng/> (Princeton)
Greg Durrett <https://www.cs.utexas.edu/~gdurrett/> (University of Texas
Austin)
Yolanda Gil <https://www.isi.edu/~gil/> (USC)
Hanna Hajishirzi <https://homes.cs.washington.edu/~hannaneh/> (University
of Washington)
Tim Kraska <https://people.csail.mit.edu/kraska/> (MIT)
Monica Lam <https://suif.stanford.edu/~lam/> (Stanford)
Devi Parikh <https://www.cc.gatech.edu/~parikh/> (Georgia Tech and Facebook
AI Research)
Sujith Ravi <http://www.sravi.org/> (Amazon Alexa AI)
Siva Reddy <https://sivareddy.in/> (McGill)
Dafna Shahaf <http://www.hyadatalab.com/index.html> (Hebrew University)
David Sontag <https://people.csail.mit.edu/dsontag/> (MIT)

Workshops

In addition to the conference program, we will have a one-day collection of
workshops on focused topics.

Organizers

General Co-chair Andrew McCallum <https://people.cs.umass.edu/~mccallum/>,
University of Massachusetts Amherst, USA

General Co-chair Sameer Singh <http://sameersingh.org/>, University of
California, Irvine, USA

Program Co-chair Danqi Chen <https://www.cs.princeton.edu/~danqic/>,
Princeton University

Program Co-chair Jonathan Berant <http://www.cs.tau.ac.il/~joberant/>, Tel
Aviv University / Allen Institute for AI

Workshop Co-chair Eunsol Choi <https://www.cs.utexas.edu/~eunsol/>, UT
Austin

Workshop Co-chair Waleed Ammar <https://wammar.github.io/>, Google

Virtual Platform Chair Matt Gardner <https://matt-gardner.github.io/>,
Allen Institute for AI, USA

Website Chair Maor Ivgi, Tel Aviv University


Area Chairs

Yael Amsterdamer <https://u.cs.biu.ac.il/~amstery/>Bar-Ilan University
Bhavana Dalvi <https://allenai.org/team/bhavanad> Allen Institute for
Artificial Intelligence
Greg Durrett <https://www.cs.utexas.edu/~gdurrett/>UT Austin
William L. Hamilton <https://williamleif.github.io/> Mila, McGill University
Robin Jia <https://robinjia.github.io/>Facebook AI Research / University of
Southern California
Gerard de Melo <http://gerard.demelo.org/>Hasso Plattner Institute /
University of Potsdam
<http://deepdata.demelo.org/join/>Barbara Plank <https://bplank.github.io/>IT
University of Copenhagen
Alex Ratner <https://ajratner.github.io/>University of Washington
Partha Talukdar <http://talukdar.net/>Indian Institute of Science, Bangalore
Chenhao Tan <https://chenhaot.com/>University of Chicago
Jesse Thomason <https://jessethomason.com/>University of Southern California

Andreas Vlachos <https://andreasvlachos.github.io/>University of Cambridge

Diyi Yang <https://www.cc.gatech.edu/~dyang888/>Georgia Institute of
Technology

Questions?  Please e-mail i...@akbc.ws.


-- 
*Danqi Chen*

Assistant Professor of Computer Science
Princeton University
http://www.cs.princeton.edu/~danqic/
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