CFP: Special Issue on The Role of Ontologies and Knowledge in Explainable AI

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Janna Hastings

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Oct 5, 2021, 7:18:57 AM10/5/21
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Dear all, 

(with apologies for cross-posting)

The below special issue on the role of ontologies in explainable AI may be of interest. 

Best wishes, 
Janna

---------- Forwarded message ---------
*Call for papers: Special Issue on 
The Role of Ontologies and Knowledge in Explainable AI*
to be published in the Semantic Web journal, IOS Press.

https://sites.google.com/view/special-issue-on-xai-swj

Explainable AI (XAI) has been identified as a key factor for developing 
trustworthy AI systems. The reasons for equipping intelligent systems 
with explanation capabilities are not limited to user rights and acceptance. 
Explainability is also needed for designers and developers to enhance 
system robustness and enable diagnostics to prevent bias, unfairness, 
and discrimination, as well as to increase trust by all users in why 
and how decisions are made. 

The interpretability of AI systems has been described long time ago 
since mid 1980s, but until recently it becomes an active research 
focus in computer science community due to the advances of big data 
and various regulations of data protection in developing AI systems, 
such as the GDPR. For example, according to the GDPR, citizens have 
the legal right to an explanation of decisions made by algorithms that 
may affect them (e.g., see Article 22). This policy highlights the 
pressing importance of transparency and interpretability in algorithm design. 

XAI focuses on developing new approaches for explanations of black-box 
models by achieving good explainability without sacrificing system performance. 
One typical approach is the extraction of local and global post-hoc explanations. 
Other approaches are based on hybrid or neuro-symbolic systems, advocating 
a tight integration between symbolic and non-symbolic knowledge, e.g., 
by combining symbolic and statistical methods of reasoning. 

The construction of hybrid systems is widely seen as one of the grand 
challenges facing AI today. However, there is no consensus regarding 
how to achieve this, with proposed techniques in the literature ranging 
from knowledge extraction and tensor logic to inductive logic programming 
and other approaches. Knowledge representation---in its many incarnations---
is a key asset to enact hybrid systems, and it can pave the way towards 
the creation of transparent and human-understandable intelligent systems. 

This special issue will feature contributions dedicated to the role played 
by knowledge bases, ontologies, and knowledge graphs in XAI, in particular 
with regard to building trustworthy and explainable decision support systems.
Knowledge representation plays a key role in XAI. Linking explanations to 
structured knowledge, for instance in the form of ontologies, brings multiple 
advantages. It does not only enrich explanations (or the elements therein) 
with semantic information---thus facilitating evaluation and effective knowledge 
transmission to users---but it also creates a potential for supporting the 
customisation of the levels of specificity and generality of explanations 
to specific user profiles or audiences. However, linking explanations, 
structured knowledge, and sub-symbolic/statistical approaches raise a multitude 
of technical challenges from the reasoning perspective, both in terms of 
scalability and in terms of incorporating non-classical reasoning approaches, 
such as defeasibility, methods from argumentation, or counterfactuals, 
to name just a few.  


**Topics of Interest**

Topics relevant to this special issue include – but are not limited to – the following:

- Cognitive computational systems integrating machine learning and automated reasoning
- Knowledge representation and reasoning in machine learning and deep learning
- Knowledge extraction and distillation from neural and statistical learning models
- Representation and refinement of symbolic knowledge by artificial neural networks
- Explanation formats exploiting domain knowledge
- Visual exploratory tools of semantic explanations
- Knowledge representation for human-centric explanations
- Usability and acceptance of knowledge-enhanced semantic explanations
- Evaluation of transparency and interpretability of AI Systems
- Applications of ontologies for explainability and trustworthiness in specific domains
- Factual and counterfactual explanations
- Causal thinking, reasoning and modeling
- Cognitive science and XAI
- Open source software for XAI
- XAI applications in finance, medical and health sciences, etc.


**Deadline**

- Submission deadline: 10th of December 2021. (Papers submitted before the deadline 
will be reviewed upon receipt).
- Acceptance/rejection notification: March 31st, 2022
- Revision due: May 31st, 2022 
- Estimated Publication Date:  July 2022 

**Author Guidelines**

Submissions shall be made through the Semantic Web journal website at 
http://www.semantic-web-journal.net
Prospective authors must take notice of the submission guidelines posted at 
http://www.semantic-web-journal.net/authors.

We welcome four main types of submissions: (i) full research papers, 
(ii) reports on tools and systems, (iii) application reports, 
and (iv) survey articles. The description of the submission types is 
posted at http://www.semantic-web-journal.net/authors#types
While there is no upper limit, paper length must be justified by content.

Note that you need to request an account on the website for submitting a paper. 
Please indicate in the cover letter that it is for the "The Role of Ontologies 
and Knowledge in Explainable AI” special issue. All manuscripts will be reviewed 
based on the SWJ open and transparent review policy and will be made available 
online during the review process. 

Also note that the Semantic Web journal is open access.

http://www.semantic-web-journal.net/blog/call-papers-special-issue-role-ontologies-and-knowledge-explainable-ai

**Guest editors** 

The guest editors can be reached at ontologies-know...@googlegroups.com .

- Roberto Confalonieri, Free University of Bozen-Bolzano, Faculty of Computer Science, Italy
- Oliver Kutz, Free University of Bozen-Bolzano, Faculty of Computer Science, Italy
- Diego Calvanese, Department of Computing Science, Umeå University, Sweden and 
Free University of Bozen-Bolzano, Faculty of Computer Science
- Jose M. Alonso, University of Santiago de Compostela, CiTIUS, Spain
- Shang-Ming Zhou, University of Plymouth, Faculty of Health, UK

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