会议信息
ER 2025: International Conference on Conceptual Modeling
https://er2025.ensma.fr/截稿日期: |
2025-05-19 |
通知日期: |
2025-07-30 |
会议日期: |
2025-10-20 |
会议地点: |
Futuroscope, France |
届数: |
44 |
CCF: c CORE: a QUALIS: a2 浏览: 39516 关注: 43 参加: 10
征稿
The 44th International Conference on Conceptual Modeling (ER 2025) is the premier international conference for research and practice on Conceptual Modelling. The conference provides a vibrant forum for discussing and extending the state-of-the-art conceptual modeling foundations, emerging and future challenges, and the pivotal role conceptual modeling plays in a variety of applications. In celebrating its 44th anniversary this year, we especially invite contributions on the theme of:
BUILDING TRUST THROUGH CONCEPTUAL MODELING
Building trust in digital ecosystems has gained a heightened importance in an increasingly contested world. This year’s theme focuses on the important role conceptual modeling plays in creating systems that are trustworthy, inclusive, and transparent. We invite the Conceptual Modelling community to deliberate on how traditional modeling principles and frameworks can contribute and adapt to new advancements in AI, data ecosystems, and autonomous platforms while upholding ethical standards and fostering trust in digital innovations.
We welcome submissions of original research on a variety of topics on conceptual modeling, including well-established and emerging areas of research and practice, as well as submissions that lead to new foundations, links, applications, or enlarge current boundaries of conceptual modeling. We also invite industry reports and vision papers.
Specific examples of relevant topics include but are not limited to:
Foundations of conceptual modeling:
Human-centred and inclusive modeling
Model explainability and transparency
Role of modeling in engendering trust and building trustworthy systems
Automated and AI-assisted conceptual modeling
Complexity management of large conceptual models
Concept formalization, including data manipulation languages and techniques, formal concept analysis, and integrity constraints
Domain-specific modeling
Discovery of models, (anti-)patterns, and structures
Evolution, exchange, integration, and transformation of models
Justification and evaluation of models
Interactive, dynamic and adaptive modeling systems
Logic-based knowledge representation and reasoning
Multi-level and multi-perspective modeling
Ontological and cognitive foundations
Quality paradigms and metrics
Semantics in conceptual modeling
Theories and methodologies for conceptual modeling
Verification and validation of conceptual models
Conceptual modeling for:
Data access, acquisition, integration, maintenance, preparation, transformation, and visualization
Data management, including database design, performance optimization, privacy and security, provenance, transactions, queries
Data value, variety, velocity, veracity, volume, and other dimensions
Data-centric AI development
Distributed, decentralized, ledger-based, parallel, and P2P databases
Graph and network databases
Object-oriented and object-relational databases
SQL, NewSQL and NoSQL databases
Spatial and temporal databases
Event-based and stream architectures
Multimedia and text databases
Approximate, probabilistic, and uncertain databases
Web, Semantic Web, knowledge graphs, and cloud databases
Synthetic data and simulation modeling
Other data spaces
Conceptual modeling in:
AI, data mining, data science, machine learning, explainable AI, LLMs, statistics
Business, climate, compliance, economics, education, energy, entertainment, government, health, law, sustainability, etc
Collaboration, crowdsourcing, games, and social networks
Business intelligence and analytics, Data warehousing
Engineering, such as agile development, requirements engineering, reverse engineering, model-driven engineering
Enterprises, including the modeling of business rules, capabilities, goals, services, processes, values, software, and systems
Ethics, fairness, responsibility, or trust
Digital twins, fog and edge computing, Industry 4.0, internet of things
Information classification, filtering, retrieval, summarization, and visualization
Scientific data management, including FAIR practices
Metaverse and Extended Reality (XR)
Conceptual modeling showcased by:
Computational tools that advance the state-of-the-art
Ethnographic, qualitative, empirical case studies, and experience reports of applications
Comparative and benchmarking studies
最后更新 Dou Sun 在 2025-04-05
录取率
| 时间 | 提交数 | 录取数 | 录取率(%) |
|---|---|---|---|
| 2005 | 169 | 31 | 18.3% |
| 2004 | 293 | 57 | 19.5% |
| 2003 | 153 | 38 | 24.8% |
| 2002 | 130 | 30 | 23.1% |
| 2001 | 182 | 39 | 21.4% |
| 2000 | 140 | 37 | 26.4% |
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相关期刊
| CCF | 全称 | 影响因子 | 出版商 | ISSN |
|---|---|---|---|---|
| Information Fusion | 15.5 | Elsevier | 1566-2535 | |
| Abstract and Applied Analysis | Hindawi | 1085-3375 | ||
| Discover Applied Sciences | 2.800 | Springer | 3004-9261 | |
| Artificial Intelligence Review | 13.9 | Springer | 0269-2821 | |
| b | IEEE Transactions on Neural Networks and Learning Systems | 8.9 | IEEE | 1045-9227 |
| ACM Transactions on Parallel Computing | 0.900 | ACM | 2329-4949 | |
| Computational Statistics & Data Analysis | 1.500 | Elsevier | 0167-9473 | |
| Computer Law & Security Review | 3.300 | Elsevier | 0267-3649 | |
| Computers, Materials & Continua | 2.000 | Tech Science Press | 1546-2218 | |
| Problems of Information Transmission | 0.500 | Springer | 0032-9460 |
| 全称 | 影响因子 | 出版商 |
|---|---|---|
| Information Fusion | 15.5 | Elsevier |
| Abstract and Applied Analysis | Hindawi | |
| Discover Applied Sciences | 2.800 | Springer |
| Artificial Intelligence Review | 13.9 | Springer |
| IEEE Transactions on Neural Networks and Learning Systems | 8.9 | IEEE |
| ACM Transactions on Parallel Computing | 0.900 | ACM |
| Computational Statistics & Data Analysis | 1.500 | Elsevier |
| Computer Law & Security Review | 3.300 | Elsevier |
| Computers, Materials & Continua | 2.000 | Tech Science Press |
| Problems of Information Transmission | 0.500 | Springer |