DSAA 2018: Difference between revisions
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|Start date=2018/10/01 | |Start date=2018/10/01 | ||
|End date=2018/10/03 | |End date=2018/10/03 | ||
|Homepage=https://dsaa2018.isi.it/home | |||
|City=Turin | |City=Turin | ||
|Country=Italy | |Country=Italy | ||
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|has Proceedings Link=https://ieeexplore.ieee.org/xpl/conhome/8620128/proceeding | |has Proceedings Link=https://ieeexplore.ieee.org/xpl/conhome/8620128/proceeding | ||
}} | }} | ||
, | Topics of interest include but are not limited to: | ||
Foundations | |||
* Mathematical, probabilistic and statistical models and theories. | |||
* Machine learning theories, models and systems. | |||
* Knowledge discovery theories, models and systems. | |||
* Manifold and metric learning. | |||
* Deep learning and deep analytics. | |||
* Scalable analysis and learning. | |||
* Non-iid learning. | |||
* Heterogeneous data/information integration. | |||
* Data pre-processing, sampling and reduction. | |||
* Dimensionality reduction. | |||
* Feature selection, transformation and construction. | |||
* Large scale optimization. | |||
* High performance computing for data analytics. | |||
* Learning for streaming data. | |||
* Learning for structured and relational data. | |||
* Latent semantics and insight learning. | |||
* Mining multi-source and mixed-source information. | |||
* Mixed-type and structure data analytics. | |||
* Cross-media data analytics. | |||
* Big data visualization, modeling and analytics. | |||
* Multimedia/stream/text/visual analytics. | |||
* Relation, coupling, link and graph mining. | |||
* Personalization analytics and learning. | |||
* Web/online/social/network mining and learning. | |||
* Structure/group/community/network mining. | |||
* Cloud computing and service data analysis. | |||
* | |||
* Management, storage, retrieval and search | |||
* | |||
* Cloud architectures and cloud computing. | |||
* Data warehouses and large-scale databases. | |||
* Memory, disk and cloud-based storage and analytics. | |||
* Distributed computing and parallel processing. | |||
* High performance computing and processing. | |||
* Information and knowledge retrieval, and semantic search. | |||
* Web/social/databases query and search. | |||
* Personalized search and recommendation. | |||
* Human-machine interaction and interfaces. | |||
* Crowdsourcing and collective intelligence. | |||
* | |||
* Theoretical Foundations for Social issues | |||
* | |||
* Data science meets social science. | |||
* Security, trust and risk in big data. | |||
* Data integrity, matching and sharing. | |||
* Privacy and protection standards and policies. | |||
* Privacy preserving big data access/analytics. | |||
* Fairness and transparency in data science. | |||
Revision as of 15:50, 25 May 2020
| DSAA 2018 | |
|---|---|
5th IEEE International Conference on Data Science and Advanced Analytics
| |
| Event in series | DSAA |
| Dates | 2018/10/01 (iCal) - 2018/10/03 |
| Homepage: | https://dsaa2018.isi.it/home |
| Location | |
| Location: | Turin, Italy |
| Table of Contents | |
Topics of interest include but are not limited to:
Foundations
* Mathematical, probabilistic and statistical models and theories. * Machine learning theories, models and systems. * Knowledge discovery theories, models and systems. * Manifold and metric learning. * Deep learning and deep analytics. * Scalable analysis and learning. * Non-iid learning. * Heterogeneous data/information integration. * Data pre-processing, sampling and reduction. * Dimensionality reduction. * Feature selection, transformation and construction. * Large scale optimization. * High performance computing for data analytics. * Learning for streaming data. * Learning for structured and relational data. * Latent semantics and insight learning. * Mining multi-source and mixed-source information. * Mixed-type and structure data analytics. * Cross-media data analytics. * Big data visualization, modeling and analytics. * Multimedia/stream/text/visual analytics. * Relation, coupling, link and graph mining. * Personalization analytics and learning. * Web/online/social/network mining and learning. * Structure/group/community/network mining. * Cloud computing and service data analysis. * * Management, storage, retrieval and search * * Cloud architectures and cloud computing. * Data warehouses and large-scale databases. * Memory, disk and cloud-based storage and analytics. * Distributed computing and parallel processing. * High performance computing and processing. * Information and knowledge retrieval, and semantic search. * Web/social/databases query and search. * Personalized search and recommendation. * Human-machine interaction and interfaces. * Crowdsourcing and collective intelligence. * * Theoretical Foundations for Social issues * * Data science meets social science. * Security, trust and risk in big data. * Data integrity, matching and sharing. * Privacy and protection standards and policies. * Privacy preserving big data access/analytics. * Fairness and transparency in data science.