EKAW: Knowledge Acquisition, Modeling and Management

FacebookTwitterLinkedInGoogle

 

Past:   Proceedings on DBLP

Future:  Post a CFP for 2025 or later   |   Invite the Organizers Email

 
 

All CFPs on WikiCFP

Event When Where Deadline
EKAW 2024 The 24th International Conference on Knowledge Engineering and Knowledge Management (EKAW-24)
Nov 26, 2024 - Nov 28, 2024 Amsterdam, Netherlands Jul 12, 2024 (Jul 1, 2024)
EKAW 2020 International Conference on Knowledge Engineering and Knowledge Management
Sep 16, 2020 - Sep 20, 2020 Bozen-Bolzano, Italy TBD
EKAW 2016 20th International Conference on Knowledge Engineering and Knowledge Management
Nov 19, 2016 - Nov 23, 2016 Bologna, Italy Jul 15, 2016 (Jul 8, 2016)
EKAW 2014 19th International Conference on Knowledge Engineering and Knowledge Management
Nov 24, 2014 - Nov 28, 2014 Linköping, Sweden Jul 16, 2014 (Jul 9, 2014)
EKAW 2012 The 18th International Conference on Knowledge Engineering and Knowledge Management
Sep 8, 2012 - Sep 12, 2012 Galway, Ireland Apr 25, 2012 (Apr 18, 2012)
EKAW 2010 International Conference on Knowledge Engineering and Knowledge Management
Oct 11, 2010 - Oct 15, 2010 Lisbon, Portugal Mar 19, 2010
 
 

Present CFP : 2024

24th International Conference on Knowledge Engineering and Knowledge Management (EKAW-24)
Amsterdam, Netherlands - November 26-28, 2024

The 24th International Conference on Knowledge Engineering and Knowledge Management (EKAW-24) encompasses the diverse realms of eliciting, acquiring, modeling, and managing knowledge. The conference addresses the pivotal role of knowledge in constructing systems and services for the semantic web, knowledge management, knowledge discovery, information integration, natural language processing, intelligent systems, e-business, e-health, humanities, cultural heritage, and beyond.

** EKAW-24's Special Theme: Knowledge in the Age of Language Models (LMs) **. In addition to the topics above, this year's conference invites research articles focusing on algorithms, tools, methodologies, and applications that leverage the interplay between knowledge and LMs. The contributions should deepen our understanding of how LMs contribute to the dynamic landscape of knowledge acquisition and engineering and vice versa.

All submissions, including those related to LMs, should establish a clear connection to Knowledge Engineering and Knowledge Management or demonstrate a significant impact on the field. While acknowledging the interdisciplinary nature of knowledge and its interplay with other disciplines and technologies, such as Machine Learning, Natural Language Processing, and Computer Vision, contributions lacking direct relevance to Knowledge Engineering and Knowledge Management will not be considered pertinent to the EKAW conference.

# Topics of interest

EKAW-24 welcomes papers dealing with theoretical, methodological, experimental, and application-oriented aspects of knowledge engineering and knowledge management. In particular, but not exclusively, we solicit papers about methods, tools, and methodologies on the following topics:

* Knowledge and (Small/Large) Language Models (LMs)
--- LM-enhanced ontology and knowledge engineering methodologies and tools
--- Ontology evaluation via LMs
--- (Ontological) knowledge memorization in LMs
--- Knowledge-based techniques for LMs (Retrieval Augmented Generation based approaches, fact-checking, and bias mitigation)
--- Question answering over knowledge graphs via LMs
* Knowledge Engineering and Acquisition
--- Methods, techniques, and tools for knowledge acquisition and ontology engineering (e.g., ontology learning and population, ontology design patterns)
--- Ontology mapping and alignment
--- Ontology evaluation and metrics
--- Collaborative knowledge engineering
--- Multimodal Knowledge Engineering and Acquisition
* Knowledge Management and Governance
--- Methods, techniques, and tools for knowledge management and ontology governance
--- Knowledge evolution, maintenance, and preservation
--- Knowledge sharing and distribution
--- Methods for accelerating take-up of knowledge management technologies
* Ethical and Trustworthy Knowledge Engineering
--- Ethics, trust, and privacy in knowledge representation and reasoning
--- Explainable AI
--- Provenance, trust, and transparency in knowledge management
--- FAIR data and FAIR knowledge
--- Inclusivity and diversity in knowledge representation
* Social and Cognitive Aspects of Knowledge Engineering
--- Knowledge representation inspired by cognitive science
--- Synergies between humans and machines
--- Knowledge emerging from user interaction and (social) networks
--- Knowledge ecosystems
--- Crowdsourcing in knowledge management
* Knowledge discovery
--- Data mining for knowledge construction
--- Text mining and ontology engineering
--- Classification and clustering for knowledge management
--- Mining patterns and association rules
--- Neuro-symbolic Artificial Intelligence
* Applications in specific domains such as:
--- eGovernment and public administration
--- Life sciences, health, and medicine
--- Humanities and Social Sciences
--- Cultural Heritage and Digital Libraries
--- ICT4D (Knowledge in the developing world)

# Types of papers

EKAW-24 distinguishes between research, in-use, and position papers. The papers will all have the same status and follow the same formatting guidelines in the proceedings but will receive special treatment during the reviewing phase. In particular, each paper type will be subject to its own evaluation criteria:

* Research papers: These are standard papers presenting a novel method, technique, or analysis with appropriate empirical or other types of evaluation as a proof-of-concept. The main evaluation criteria here will be originality, technical soundness, and validation.
* In-use papers: These are papers describing knowledge management and engineering applications in real environments. Applications must address a sufficiently interesting and challenging problem, work with real-world data, and involve real users. The focus is less on the originality of the approach and more on presenting systems that solve a significant problem while addressing the particular challenges that come with the use of real-world data. Evaluations are essential for this type of paper and should involve a representative subset of the actual users of the system.
* Position papers: These are papers describing novel, innovative, and disruptive ideas. Position papers may also comprise an analysis of currently unsolved problems or review these problems from a new perspective to contribute to their better understanding within the research community. We expect that such papers will guide future research by highlighting critical assumptions, motivating the difficulty of a specific problem, or explaining why current techniques are not sufficient, possibly corroborated by quantitative and qualitative arguments.

# Important dates

* Abstract submission deadline: July 01, 2024
* Full paper submission deadline (EXTENDED): July 12, 2024
* Notification of acceptance: September 10, 2024
* Camera-ready submission: September 24, 2024
* Conference days: November 26-28, 2024

All submission deadlines are 23:59:59 AoE.

# Submissions and publications

Pre-submission of abstracts is a strict requirement. All papers and abstracts have to be submitted electronically via EasyChair (https://easychair.org/conferences/?conf=ekaw2024).

As in past editions, accepted papers will be published by Springer in an LNAI volume. Submissions must be in PDF, formatted in the style of LNCS conference proceedings. For details and available templates (Latex, Microsoft Word), see the Springer’s conference proceedings guidelines (https://www.springer.com/gp/computer-science/lncs/conference-proceedings-guidelines).

The following page limits (references excluded) apply:
- Research and In-use papers: 15 pages;
- Position papers: 8 pages.

Submissions must be in English and must be prepared for single-blind review. Manuscripts that are already uploaded on Arxiv but not published anywhere are allowed for submission. However, dual submissions are not allowed.

Neither plagiarism nor self-plagiarism is tolerated. Please be advised that a plagiarism-checking tool may be applied to screen for plagiarism.

*Large Language Models Policy of EKAW-24.* Papers that include text generated from a Large Language Model (LLM), such as ChatGPT, are prohibited unless this generated text is presented as a part of the experimental analysis of the article. AI tools may be used to edit and polish authors' work, such as using LLMs for light editing of their text (e.g., automate grammar checks, word autocorrect, and other editing work), but the text "produced entirely" by AI is not allowed. We rely on the LLM policy as stated in ICML 2023 (https://icml.cc/Conferences/2023/llm-policy).

# Registration

One full registration for the conference at the regular rate is required for each accepted paper.

# Organisation

Program Chairs
* Mehwish Alam (Télécom Paris, Institut Polytechnique de Paris, France)
* Marco Rospocher (University of Verona, Italy)

General Chairs
* Laura Hollink (Centrum Wiskunde & Informatica, Amsterdam, Netherlands)
* Marieke van Erp (KNAW Humanities Cluster, Amsterdam, Netherlands)

 

Related Resources

eKNOW 2025   The Seventeenth International Conference on Information, Process, and Knowledge Management
IEEE-Ei/Scopus-ITCC 2025   2025 5th International Conference on Information Technology and Cloud Computing (ITCC 2025)-EI Compendex
ECKM 2025   26th European Conference on Knowledge Management
Ei/Scopus-ACAI 2024   2024 7th International Conference on Algorithms, Computing and Artificial Intelligence(ACAI 2024)
PAKDD 2025   29th Pacific-Asia Conference on Knowledge Discovery and Data Mining
SPIE-Ei/Scopus-DMNLP 2025   2025 2nd International Conference on Data Mining and Natural Language Processing (DMNLP 2025)-EI Compendex&Scopus
ecml-pkdd-journal-track 2025   Journal Track with ECML PKDD 2025
IEEE-Ei/Scopus-CNIOT 2025   2025 IEEE 6th International Conference on Computing, Networks and Internet of Things (CNIOT 2025) -EI Compendex
LDK 2025   Fifth Conference on Language, Data and Knowledge