The world’s premier research
conference in Data Mining
The IEEE International Conference on Data Mining (ICDM) has been established itself as the world’s premier research conference in data mining. It provides an international forum for presentation of original research results, as well as exchange and dissemination of innovative and practical development experiences. The conference covers all aspects of data mining, including algorithms, software, systems, and applications. ICDM draws researchers, application developers, and practitioners from a wide range of data mining related areas such as big data, deep learning, pattern recognition, statistical and machine learning,databases, data warehousing, data visualization, knowledge-based systems, and high-performance computing. By promoting novel, high-quality research findings, and innovative solutions to challenging data mining problems, the conference seeks to advance the state-of-the-art in data mining.
Topics of interest
Topics of interest include, but are not limited to:
- Foundations, algorithms, models, and theory of data mining, including big data mining.
- Deep learning and statistical methods for data mining.
- Mining from heterogeneous data sources, including text, semi-structured, spatio-temporal, streaming, graph, web, and multimedia data.
- Data mining systems and platforms, and their efficiency, scalability, security, and privacy.
- Data mining for modelling, visualization, personalization, and recommendation.
- Data mining for cyber-physical systems and complex, time-evolving networks.
- Advantages and potential limitations of data mining with large models.
- Applications of data mining in social sciences, physical sciences, engineering, life sciences, climate science, web, marketing, finance, precision medicine, health informatics, and other domains.
We particularly encourage submissions in emerging topics of high importance such as ethical data analytics, automated data analytics, data-driven reasoning, interpretable modeling, modeling with evolving environments, multi-modal data mining, and heterogeneous data integration and mining..