DSAA 2018: Difference between revisions

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|Acronym=DSAA 2018
|Acronym=DSAA 2018
|Title=5th IEEE International Conference on Data Science and Advanced Analytics
|Title=5th IEEE International Conference on Data Science and Advanced Analytics
|Ordinal=5
|Series=DSAA
|Series=DSAA
|Type=Conference
|Type=Conference
|Start date=2018/10/01
|Start date=2018/10/01
|End date=2018/10/03
|End date=2018/10/03
|City=Turin
|Homepage=https://dsaa2018.isi.it/home
|City=Torino
|Country=Italy
|Country=Italy
|Accepted papers=49
|Has coordinator=Laetitia Gauvin, Michele Tizzoni
|has general chair=Francesco Bonchi, Foster Provost
|has program chair=Tina Eliassi-Rad, Ciro Cattuto, Rayid Ghani
|has tutorial chair=Gabriella Pasi, Richard De Veaux
|Accepted papers=74
|has Proceedings Link=https://ieeexplore.ieee.org/xpl/conhome/8620128/proceeding
|has Proceedings Link=https://ieeexplore.ieee.org/xpl/conhome/8620128/proceeding
}}
}}
, DSAA 2018, Turin, Italy, October 1-3, 2018
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.

Latest revision as of 14:50, 16 December 2020

DSAA 2018
5th IEEE International Conference on Data Science and Advanced Analytics
Ordinal 5
Event in series DSAA
Dates 2018/10/01 (iCal) - 2018/10/03
Homepage: https://dsaa2018.isi.it/home
Location
Location: Torino, Italy
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Committees
Organizers: Laetitia Gauvin, Michele Tizzoni
General chairs: Francesco Bonchi, Foster Provost
PC chairs: Tina Eliassi-Rad, Ciro Cattuto, Rayid Ghani
Seminars Chair: Gabriella Pasi, Richard De Veaux
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.