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Workshops

The purpose of workshops is to provide a more interactive and focused platform for presenting and discussing new and emerging ideas. The format of paper presentations may include oral presentations, poster presentations, keynote lectures and panels. Depending on the number of presentations, workshops can be scheduled for 1 day or 2 days. All accepted papers will be published in a special section of the conference proceedings book, under an ISBN reference, and on CD-ROM support. All papers presented at the conference venue will be available at the SCITEPRESS Digital Library. SCITEPRESS is a member of CrossRef and every paper is given a DOI (Digital Object Identifier). The proceedings are submitted for indexation by Thomson Reuters Conference Proceedings Citation Index (ISI), INSPEC, DBLP, EI (Elsevier Engineering Village Index) and Scopus.

Workshop proposals are accepted until:

August 31, 2017


If you wish to propose a new Workshop please kindly fill out and submit this Expression of Interest form.

WORKSHOPS LIST

AI4Health 2018Artificial Intelligence for Health (BIOSTEC)
Chair(s): Giovanna Sannino and Ivanoe De Falco

Artificial Intelligence for Health - AI4Health 2018

Paper Submission: November 7, 2017
Authors Notification: November 21, 2017
Camera Ready and Registration: November 29, 2017

Co-chairs

Giovanna Sannino
CNR - ICAR
Italy
 
Ivanoe De Falco
CNR - ICAR
Italy
 
Scope

The workshop on Artificial Intelligence for Health - AI4Health 2018 - aims at bringing together researchers from academia, industry, government, and medical centers in order to present the state of the art and discuss the latest advances in the emerging area of the use of Artificial Intelligence and Soft Computing techniques in the fields of medicine, health care and wellbeing. AI4Health is expected to cover the whole range of theoretical and practical aspects, technologies and systems related to the application of artificial intelligence and soft computing methodologies to issues as machine learning, deep learning, knowledge discovery, decision support, regression, forecasting, optimization, and feature selection in the healthcare and wellbeing domain.




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