Difference between revisions of "PAKDD 2020"
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{{Event | {{Event | ||
+ | |has general chair=Ee-Peng Lim, See-Kiong Ng | ||
+ | |has program chair=Hady Lauw, Raymond Wong, Alexandros Ntoulas | ||
+ | |has Proceedings Link=https://link.springer.com/book/10.1007%2F978-3-030-47436-2 | ||
|Acronym=PAKDD 2020 | |Acronym=PAKDD 2020 | ||
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|End date=2020/05/14 | |End date=2020/05/14 | ||
+ | |Series =PAKDD | ||
+ | |Type =Conference | ||
+ | |Country=SG | ||
+ | |State =SG/SG | ||
+ | |City =SG/SG/Singapore | ||
|Homepage=https://pakdd2020.org/ | |Homepage=https://pakdd2020.org/ | ||
− | | | + | |Start date=2020/05/11 |
− | | | + | |Title =24th Pacific-Asia Conference on Knowledge Discovery and Data Mining |
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|Accepted papers=135 | |Accepted papers=135 | ||
− | | | + | |Submitted papers=628}} |
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Due to the unexpected COVID-19 epidemic, we made all the conference | Due to the unexpected COVID-19 epidemic, we made all the conference | ||
sessions accessible online to participants around the world. | sessions accessible online to participants around the world. |
Revision as of 20:41, 3 November 2021
Event Rating
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List of all ratings can be found at PAKDD 2020/rating
PAKDD 2020 | |
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24th Pacific-Asia Conference on Knowledge Discovery and Data Mining
| |
Event in series | PAKDD |
Dates | 2020/05/11 (iCal) - 2020/05/14 |
Homepage: | https://pakdd2020.org/ |
Location | |
Location: | SG/SG/Singapore, SG/SG, SG |
Papers: | Submitted 628 / Accepted 135 (21.5 %) |
Committees | |
General chairs: | Ee-Peng Lim, See-Kiong Ng |
PC chairs: | Hady Lauw, Raymond Wong, Alexandros Ntoulas |
Table of Contents | |
Due to the unexpected COVID-19 epidemic, we made all the conference sessions accessible online to participants around the world.
Topics
- Anomaly detection and analytics
- Association analysis
- Classification
- Clustering
- Data pre-processing
- Deep learning theory and applications in KDD
- Explainable machine learning
- Factor and tensor analysis
- Feature extraction and selection
- Fraud and risk analysis
- Human, domain, organizational, and social factors in data mining
- Integration of data warehousing, OLAP, and data mining
- Interactive and online mining
- Mining behavioral data
- Mining dynamic/streaming data
- Mining graph and network data
- Mining heterogeneous/multi-source data
- Mining high dimensional data
- Mining imbalanced data
- Mining multi-media data
- Mining scientific data
- Mining sequential data
- Mining social networks
- Mining spatial and temporal data
- Mining uncertain data
- Mining unstructured and semi-structured data
- Novel models and algorithms
- Opinion mining and sentiment analysis
- Parallel, distributed, and cloud-based high-performance data mining
- Post-processing including quality assessment and validation
- Privacy preserving data mining
- Recommender systems
- Representation learning and embedding
- Security and intrusion detection
- Statistical methods and graphical models for data mining
- Supervised learning
- Theoretic foundations of KDD
- Ubiquitous knowledge discovery and agent-based data mining
- Unsupervised learning
- Visual data mining
- Applications to healthcare, bioinformatics, computational chemistry, finance, eco-informatics, marketing, gaming, cyber-security, and industry-related problems