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Tensors@IEEE-DSAA 2021 : Tensor Analytics for Emerging Applications Special Session @IEEE-DSAA21

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Link: http://dsaa2021.tensors.eu.org/
 
When Oct 6, 2021 - Oct 9, 2021
Where Online
Submission Deadline Jun 6, 2021
Notification Due Jul 25, 2021
Final Version Due Aug 8, 2021
Categories    data science   machine learning   data mining   tensor
 

Call For Papers

Call for Papers: Special Session TENSOR ANALYTICS FOR EMERGING APPLICATIONS @ IEEE DSAA 20216-9 OCTOBER 2021, ONLINE

http://dsaa2021.tensors.eu.org/

Tensor decompositions are the "Swiss knife" of data science, data mining, machine learning and signal processing. They can be used for a variety of problems such as factor analysis; co-clustering; outlier/anomaly detection; and missing value estimation and interpolation; link prediction in time-evolving networks; multivariate time series forecasting; feature extraction in classification, as well as compression/de-noising and pattern recognition in signal processing. The recent research shows that tensor-based methods beat almost all non-tensor-based methods in a wide range of real-world applications. If we want to name a single tool, equivalent to deep learning but in the unsupervised setting that tool is perhaps tensor decompositions. Even, recently it is shown that tensor decompositions have applications in compressing the parameter space of deep learning models. The main reason behind this versatility is that the natural structure of many real-world datasets is highly multi-way in many applications and tensor decompositions are capable of capturing those complex interactions across various ways of data and thus provide a better and more natural model. The Special session on "Tensor Analytics for Emerging Applications" aims at bringing together computer scientists, data scientists, and domain experts from various application areas to discuss the recent advances in algorithms, models, scalable solutions, and real-life applications. We expect diverse submissions spanning and integrating fields such as healthcare (e.g., analysis of COVID-19 data and phenotyping), industry (e.g., IoT and sensors), internet platforms (e.g., recommender systems and time-evolving social network analysis), transportation (e.g. interpolation of traffic data and analysis of spatio-temporal data), neuroscience (e.g., modelling EEG and fMRI imaging data), and remote sensing (e.g., modelling hyperspectral images).

We invite submissions that report progress in either theoretical, technical or application aspects of Tensor Analytics. The topics include, but are not limited to the following:

New Models for Tensor Decompositions
New Fitting Algorithms for Tensor Decomposition Models
New Fitting Algorithms for Constrained (e.g., non-negative) Tensor Decompositions
New Models for Coupled Tensor/Matrix Decompositions
New Efficient Algorithms for Sparse Tensors
Bayesian/Probabilistic Models
Tensor Network
Distributed, Parallel and GPU-based solutions for tensor decompositions
Sketching Solutions for Tensor Decompositions
Incremental/Streaming/Multi-Aspect-Streaming Methods for Tensor Analysis
Model and Model Order Selection for Tensors
Time-aware Tensor Decompositions
Space-time Aware Tensor Decompositions
Simulation of Synthetic and Semi-realistic Tensor Data
Benchmarking Studies
Tensor Decompositions in Deep Learning
Tensor-based Feature Extraction for Classification
Tensor-based Anomaly Detection
Tensor-based Recommender Systems
Tensor-based Social Network Analysis
Tensor-based Time Series Analysis and Forecasting
Tensor-based Data Fusion
Tensor-based Embeddings (e.g., RESCAL for knowledge graphs)
Tensor Decompositions in Data Interpolation and Missing Value Estimation
Applications in Emerging Healthcare Problems (e.g., COVID-19)
Applications in Industry (e.g., IoT and Sensors)
Applications in Medicine
Applications in Neuroscience
Applications in Remote sensing
Applications in Transportation
Applications in Biology
Applications in Physics
Real-life Case Studies
Software Packages for Tensor Decompositions

IMPORTANT DATES

Paper Submission: May 23, 2021
Paper Notification: July 25, 2021
Paper Camera Ready Due: August 8, 2021

ORGANIZERS

Evangelos E. Papalexakis,University of California Reiverside, USA
Hadi Fanaee-T, Halmstad University, Sweden

Program Committee Members

Panos Markopoulos, Assistant Professor, Rochester Institute of Technology, USA
Kijung Shin, Assistant Professor, KIST, South Korea
Xiao Fu, Assistant Professor, Oregon State University, USA
Shaden Smith, Senior Research SDE, Microsoft, USA
Joyce C Ho, Assistant Professor, Emory University, USA
Kejun Huang, Assistant Professor, University of Florida, USA
Evangelos E. Papalexakis, Assistant Professor, University of California Riverside, USA
Hadi Fanaee-T, Assistant Professor, Halmstad University, Sweden
Maryam Amoozegar, Assistant Professor, Kerman Graduate University of Technology, Iran
Sofia Fernandes, Postdoc, University of Aveiro, Portugal
Mehran Yazdi, Professor, Shiraz University, Iran

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