[AISWorld] CFP: The Int. Conference on Deep Learning and Machine Learning in Emerging Applications (Deep-ML 2019)

Deep ML deepml.info at gmail.com
Mon Mar 11 05:31:38 EDT 2019


------------------------ Call for Papers -----------------------------

The International Conference on Deep Learning and Machine Learning in
Emerging Applications (Deep-ML 2019)

26-28 August 2019, Istanbul, Turkey

http://www.ficloud.org/deep-ml-2019/

-----------------------------------------------------------------------------

Deep learning and machine learning are the state-of-the-art at providing
models, methods, tools and techniques for developing autonomous and
intelligent systems which can revolutionize industrial and commercial
applications in various fields such as online commerce, intelligent
transportation, healthcare and medicine, security, manufacturing,
education, games, and various other industrial applications. Google, for
example, exploits the techniques of deep learning in voice and image
recognition applications, while Amazon uses such techniques in helping
customers in their online purchase decisions.
The International Conference on Deep Learning and Machine Learning in
Emerging Applications (Deep-ML) provides a leading forum for researchers,
developers, practitioners, and professional from public sectors and
industries in order to meet and share latest solutions and ideas in solving
cutting edge problems in modern information society and economy.

The conference comprises a set of tracks that focus on specific challenges
in deep learning and machine learning and their applications in emerging
areas. Topics of interest include, but are not limited to, the
following:


1) Deep and Machine Learning Models and Techniques:

Novel machine and deep learning
Active learning; Incremental learning and online learning
Agent-based learning; Manifold learning
Multi-task learning
Bayesian networks and applications
Case-based reasoning methods
Statistical models and learning
Computational learning; Evolutionary algorithms and learning
Evolutionary neural networks
Fuzzy logic-based learning
Genetic optimization
Clustering, classification and regression
Neural network models and learning
Parallel and distributed learning
Reinforcement learning
Supervised, semi-supervised and unsupervised learning
Tensor Learning

2) Deep and Machine Learning for Big Data Analytics:

Deep/Machine learning based theoretical and computational models
Novel techniques for big data storage and processing
Data analysis, insights and hidden pattern
Data analysis and decision making
Data wrangling, munching and cleaning
Data integration and fusion
Data visualization
Data and information quality, efficiency and scalability
Security threat detection using big data analytics
Visualizing security threats
Enhancing privacy and trust
Data analytics in complex applications – finance, business, healthcare,
engineering, medicine, law, transportation, and telecommunication
3) Deep and Machine Learning for Data Mining and Knowledge:

Data mining in the web and online systems
Multimedia; images and video data mining
Feature extraction and classification
Information retrieval and extraction
Distributed and P2P data search
Sentiment analysis
Mining high velocity data streams
Anomaly detection in streaming data
Mining social media and social networks
Mining sensor and computer networks data
Mining spatial and temporal datasets
Data classification, clustering, and association
Knowledge acquisition and learning
Knowledge representation and reasoning
Knowledge discovery in large datasets

4) Deep and Machine Learning Application Areas:

Bioinformatics and biomedical informatics
Finance, business and retail
Intelligent transportation
Healthcare, medicine and clinical decision support
Computer vision
Human activity recognition
Information retrieval and web search
Cybersecurity
Natural language processing
Recommender systems
Social media and networks

5) Deep and Machine Learning for Computing and Network Platforms:

Network and communication systems
Software defined networks
Wireless and sensor networks
Internet of Things (IoT)
Cloud Computing
Edge and Fog Computing


Paper Submission:

Full papers must be in English and should be between 12 to 14 pages. Short
papers should be limited to 8 pages. Papers must be formatted in Springer's
LNCS format.
Submitted research papers may not overlap with papers that have already
been published or that are simultaneously submitted to a journal or a
conference with proceedings.

ORGANISING COMMITTEE

General Co-Chairs:

Joao Gama, University of Porto, Portugal
Edwin Lughofer, Johannes Kepler University Linz, Austria

Program Co-Chairs:

Irfan Awan, University of Bradford, UK
Hadi Larijani, Glasgow Caledonian University, UK

Local Organising Co-Chairs:

Perin Ünal, Teknopar, Turkey
Sezer Gören, Ugurdag Yeditepe University, Turkey
Tacha Serif, Yeditepe University, Turkey

Publication Chair:

Muhammad Younas, Oxford Brookes University, UK

Journal Special Issue Coordinator:

Lin Guan, Loughborough University, UK

Workshop Coordinator:

Filipe Portela, University of Minho, Portugal

Publicity Chair:

Esra N. Yolaçan, Osman Gazi University, Turkey



More information about the AISWorld mailing list