ICDMML 2019
时间: 2019-01-22
发布者:
文章来源: 计算机科学与技术学院
审核人:
浏览次数: 2121
| |||||||||||
Call For Papers | |||||||||||
2019 International Conference on Data Mining and Machine Learning (ICDMML 2019) will be held on April 29 - 30 2019 in Hong Kong. The symposium will focus on the frontier topics in the theoretical and applied Data Mining, Machine Learning and AI subjects. Basic Information Paper Review All submissions to the ICDMML will be sent to at least 2 reviewers and evaluated based on originality, technical and research content, relevance to conference, contributions, and readability. The full paper submissions will be chosen based on technical merit, interest, applicability, and how well they fit a coherent and balanced technical program. Important Dates 28th February 2019 to March 29th 2019 Conference Date: April 29-30 2019 Publishing The accepted papers will be published by ACM International Conference Proceedings Series. The ISBN number assigned to ICDMML 2019 is 978-1-4503-6090-6. Indexes Press will submit the proceedings to Ei Compendex, Scopus for indexing. CFP link: http://www.icdmml.org/cfp.html 1 Artificial Intelligence including the following topics but not limited to Artificial Intelligence Biometric Identification Biocomputing and Bioinformatics Computational Intelligence Cognitive Processing Computer Vision Deep learining Document Recognition and Understanding Humanoid Robot Intelligent Information Processing Intelligent Modeling and Control Theory Intelligent Vehicle Intelligent Video Surveillance Machine Learning Mass Information Processing Multimedia Information Processing Nature Language Processing Nonlinear System Pattern Recognition Quantum Computation and Quantum Information Space Robot Speech and Character Recognition Signal Processing Unmanned Aircraft Word Recognition 2 Data Mining including the following topics but not limited to Abnormality and data detection Algorithms for new, structured, data types, such as arising in chemistry, biology, environment, and other scientific domains Big data analytic and High performance implementations of data mining algorithms Developing a unifying theory of data mining Distributed data mining and mining multi-agent data Mining high speed data streams Mining in networked settings: web, social and computer networks, and online communities Mining sequences and sequential data Mining sensor data Mining spatial and temporal datasets Mining textual and unstructured datasets Novel data mining algorithms in traditional areas (such as classification, regression, clustering, probabilistic modeling, and association analysis) 3 Machine Learning including the following topics but not limited to Active learning Computational learning theory Distance measurement learning Deep learning Incremental learning and online learning Integrated learning Limit learning Machine learning new theory Manifold learning Multi - task learning Multi - sign learning Reinforcement learning Manifold learning Semi-supervised learning Submission link: http://www.icdmml.org/submission.html Contact Us: Url: www.ICDMML.org HK Tel: +852-5607-9095 Tel: +86-027-59262825 Tel: +86-18571546145 Email: ICDMML@ieti.net |