| |||||||||||||||
DMBD 2023 : 8th International Conference on Data Mining and Big Data | |||||||||||||||
Link: https://www.iasei.org/dmbd2023/ | |||||||||||||||
| |||||||||||||||
Call For Papers | |||||||||||||||
The Eighth International Conference on Data Mining and Big Data (DMBD' 2023) serves as an international forum for researchers and practitioners to exchange latest advantages in theories, algorithms, models, and applications of data mining and big data as well as artificial intelligence techniques. Data mining refers to the activity of going through big data sets to look for relevant or pertinent information Big data contains huge amount of data and information and is worth researching in depth.
DMBD'2023 is the eighth event after the preceding Guangzhou, Belgrade, Chiang Mai, Shanghai, Fukuoka, Bali and Beijing events where more than hundreds of delegates from all over the world to attend and share their latest achievements, innovative ideas, marvelous designs and excel implementations. This year's main theme is FinTech, and we will pay special attention to technologies and applications in the area of FinTech. DMBD'2023 will be held during December 9th-12th, 2023 in Sanya, China. Sanya,located in the southernmost of Hainan Island, known as Lucheng, also known as "Eastern Hawaii", is the southernmost tropical coastal tourism city in China. It ranks first among China's four first-tier tourist cities "Sanwei Hangxia" and boasts the most beautiful seaside scenery on the island. Papers presented at DMBD'2023 will be published Springer-Nature in Communications in Computer and Information Science (CCIS) (indexed by EI, ISTP, DBLP, SCOPUS, ISI, Web of Science, etc.) The downloads of our meeting's proceedings reach the top 25% of all publications of Springer-Nature. Topics: 1. Data Mining Classification and prediction Clustering task Case-Based,Similarity-Based reasoning Mining text, semi-structured, spatio-temporal, streaming, graph, web, multimedia data Systems for data mining Machine learning Reinforcement learning Meta learning 2. Big Data Data models and architectures Deep learning architectures for handling big data Privacy and security in big data analytics Online and adaptive learning for big data streams Data analytics and metrics Tools and technologies QoS in big data Large-scale text generation model Large-scale generative adversarial network Other large-scale model 3. FinTech Quantitative investment Intelligent investment strategy Quantitative strategy Quantization system Market microstructure Risk prediction Credit modeling Financial theories Financial intelligent system Financial Large-scale model 4. Applications Techniques for Big Data Processing Fraud detection and anomaly detection in large-scale datasets Big data analytics for business intelligence Smart city applications and urban analytics Financial data analysis and stock market prediction Recommender systems for online platforms and personalized recommendations Network security Intelligent diagnosis Other applications |
|