CALL FOR PAPERS
Call for Papers: Special Session on KR and Machine Learning
July 31 - August 5, 2022, Haifa, Israel
https://kr2022.cs.tu-dortmund.de/cfp_special_session_kr_and_machine_learning.php
** IMPORTANT DATES **
* Submission of title and abstract: February 2, 2022
* Paper submission deadline: February 9, 2022
* Author response period: March 29-31, 2022
* Author notification: April 15, 2022
* Camera-ready papers: May 7, 2022
* Conference: July 31 - August 5, 2022
** DESCRIPTION **
The last few years have witnessed a growing interest in AI
methods that combine aspects of Machine Learning (ML) with
insights and methods from the field of Knowledge
Representation and Reasoning (KR). This trend is essentially
motivated by the clear complementarity of ML and KR. For
instance, the popularity and success of ML based systems has
put issues such as explainability, bias and fairness firmly in
the spotlight, and addressing these issues naturally leads to
systems in which symbolic (or at least interpretable)
representations play a more central role. On the other hand,
ML also offers solutions for long-standing challenges in the
field of KR, for instance related to efficient, noise-tolerant
and ampliative inference, knowledge acquisition, and the
limitations of symbolic representations. The synergy between
ML and KR has the potential to lead to new advancements in
fundamental AI challenges including, but not limited to,
learning symbolic generalisations from raw (multi-modal) data,
using knowledge to facilitate data-efficient learning,
supporting interpretability of learned outcomes, federated
multi-agent learning and decision-making.
This year, for the third time, KR2022 will host a special
session on "Knowledge Representation and Machine Learning",
which aims at providing researchers and practitioners with a
dedicated forum for the discussion of new ideas and research
results at the intersection of these two fields. This special
session will provide participants with the opportunity to make
meaningful connections and develop a shared understanding of
the challenges involved in developing innovative AI solutions
that rely on a combination of insights and methods from ML and
KR.
** EXPECTED CONTRIBUTIONS **
The Special Session on KR and ML at KR2022 invites
submissions of papers that combine aspects of KR and ML
research, including the use of KR methods for solving ML
challenges (e.g. knowledge-guided or explainable learning),
the use of ML methods for solving KR challenges (e.g.
efficient inference, knowledge base completion), the
integration of learning and reasoning, and the application of
combined KR and ML approaches to solve real-world problems.
We welcome papers on a wide range of topics, including but
not limited to:
* Learning symbolic knowledge, such as ontologies and
knowledge graphs, action theories, commonsense knowledge,
spatial and temporal theories, preference models and causal
models
* Logic-based, logical and relational learning algorithms
* Machine-learning driven reasoning algorithms
* Neural-symbolic learning
* Statistical relational learning
* Multi-agent learning
* Symbolic reinforcement learning
* Learning symbolic abstractions from unstructured data
* Explainable AI
* Expressive power of learning representations
* Knowledge-driven natural language understanding and
dialogue
* Knowledge-driven decision making
* Knowledge-driven intelligent systems for internet of
things and cybersecurity
* Architectures that combine data-driven techniques and
formal reasoning
** SUBMISSION GUIDELINES AND EVALUATION CRITERIA **
The Special Session on KR and Machine Learning will allow
contributions of both regular papers (9 pages) and short
papers (4 pages), excluding references, prepared and submitted
according to the authors guidelines in the submission page:
https://kr2022.cs.tu-dortmund.de/submission.php
The special session welcomes contributions that extend the
state-of-the-art at the intersection of KR and ML. Therefore,
KR-only or ML-only submissions will not be accepted for
evaluation in this special session.
Submissions will be rigorously peer reviewed by PC members
who are active in KR and ML. Submissions will be evaluated on
the basis of the originality, soundness, relevance and
significance of the technical contribution, as well as the
overall presentation quality.
** CHAIRS **
Fabio Cozman University of Sao Paulo, Brazil
Steven Schockaert Cardiff University, UK