Call for Full Research Papers

The 35th ACM International Conference on Information and Knowledge Management (CIKM 2026)

CIKM 2026 will be held in the historic city of Rome, Italy. This premier international conference provides a vibrant forum for researchers and practitioners to exchange ideas and present cutting-edge research in information retrieval, knowledge management, and databases. We invite submissions of original, high-quality research papers on all topics related to the acquisition, organisation, storage, retrieval, and analysis of information and knowledge.

The full research papers track is the venue for presenting core technical contributions to the fields covered by CIKM. Submissions are expected to present innovative, significant, and reproducible research.

All submissions must be made electronically via the EasyChair system. The submission site will be available in due course.

SUBMISSION INFORMATION

We encourage submissions of high-quality research papers on the general areas of artificial intelligence, data science, databases, information retrieval, and knowledge management. Topics of interest include:

  • Data Acquisition and Processing: IoT data, data quality, data privacy, mitigating biases, data wrangling, data exploration, data preparation, valuation, and tradin
  • Data Integration and Aggregation: semantic processing, data provenance, data linkage, data fusion, knowledge graphs, data warehousing, data lakes, privacy and security, modeling, information credibility, AI-generated content detection and provenance)
  • Efficient Data Processing: serverless computing, data-intensive computing, database systems, indexing and compression, architectures, distributed data systems, dataspaces, customized hardware
  • Special Data Processing: multilingual text, sequential, stream, time series, spatio-temporal, (knowledge) graph, multimedia, scientific, and social media data
  • Analytics and Machine Learning: OLAP, data mining, machine learning and AI, scalable analysis algorithms, algorithmic biases, event detection and tracking, interpretability and explainability
  • Foundation Models and Neural Information Processing: large language models, graph neural networks, domain adaptation, transfer learning, in-context learning, fine-tuning and alignment, network architectures, neural ranking, neural recommendation, and neural prediction
  • Agentic AI for Information and Knowledge Tasks: tool use, planning, multi-agent systems, autonomous retrieval and decision-making, agentic workflows, orchestration of knowledge-intensive processes
  • Information Access and Retrieval: retrieval-augmented generation (RAG), retrieval models, query processing, question answering and dialogue systems, open-ended question answering, conversational information seeking, generation of knowledge graphs from unstructured data, personalization, recommender systems, filtering systems
  • Trustworthy and Responsible AI: fairness, accountability, ethics, explainability, safety, alignment, robustness, hallucination detection and mitigation, factuality and grounding, attribution, responsible deployment
  • Users and Interfaces for Information Systems: user behavior analysis, user interface design, perception of biases, interactive information retrieval, interactive analysis, spoken interfaces, human-AI collaboration, co-pilot paradigms, human-in-the-loop systems
  • Evaluation: performance studies, benchmarks, online and offline evaluation, best practices, evaluation of generative and LLM-based systems, human evaluation protocols, LLM-as-judge, reproducibility
  • Crowdsourcing: task assignment, worker reliability, optimization, trustworthiness, transparency, crowdsourcing in the era of large language models
  • Mining Multi-Modal Content: natural language processing, speech recognition, computer vision, content understanding, knowledge extraction, knowledge representations, multi-modal foundation models
  • Data Presentation: visualization, summarization, readability, VR/AR, speech input/output
  • Generative AI for Data and Knowledge Management: GenAI for structured and unstructured data processing, GenAI for data synthesis and simulation, GenAI for information summarization, content creation, and visualization, synthetic data generation, and quality
  • Resource-Efficient AI: model compression, quantization, distillation, distributed learning, inference optimization, on-device models, leveraging edge computing to reduce computational overhead

Applications: urban systems, biomedical and health informatics, legal informatics, crisis informatics, computational social science, data-enabled discovery, social networks, education, business

Submissions must be original work not previously published or concurrently submitted to another conference or journal.

  • Length and Format: Full research papers must not exceed 10 pages, including all figures, tables, and appendices, plus up to 2 additional pages exclusively for references. Submissions must adhere to the ACM Master Article Submission Templates (single-column format). Overlength papers will be rejected without review.
  • Anonymity: CIKM follows a double-blind review process. Authors must anonymise their submissions. Do not include author names, affiliations, or any identifying information in the paper. Self-citations should be handled in the third person.
  • Submission System: All submissions must be made electronically via the EasyChair system. The submission site will be available in due course.
  • Reproducibility: Authors are strongly encouraged to make their data and code available to reviewers.

IMPORTANT DATES

FULL RESEARCH PAPERS

  • May 18, 2026 – Abstract Submission Deadline

  • May 25, 2026 – Full Paper Submission Deadline

  • August 6, 2026 – Notification of Acceptance

  • TBA – Camera-Ready Submission Deadline