The Data Science Lab
since 2005
  • Home
  • Research
      • Research grants
      • Research interests
      • Research leadership
      • Student theses
      • Humanoid Ameca
      • AI Server
        • GPU
        • Request
        • Allocation
  • Consultancy
      • Consulting projects
      • Cooperate training
      • Enterprise innovation
      • Impact cases
      • Our clients
      • Partnership
  • People
      • Awards and honors
      • Staff
      • Team members
  • Activities
      • Events and services
      • Talks
      • Tutorials
      • Workshops
  • Publications
  • Communities
      • ACM ANZKDD Chapter
      • Big data summit
      • Data Analytics book series
      • DSAA conferences
      • IEEE TF-DSAA
      • IEEE TF-BESC
      • JDSA Springer
      • DataSciences.Info
      • MQ's DSAI
  • Resources
      • Actionable knowledge discovery
      • Agent mining
      • AI: Artificial-intelligence
      • AI4Tech: AI enabling technologies
      • AI4Finance: AI for FinTech
      • AI robots & humanoid AI
      • Algorithmic trading
      • Banking analytics
      • Behavior analytics, computing, informatics
      • Coupling and interaction learning
      • COVID-19 global research and modeling
      • Data science knowledge map
      • Data science dictionary
      • Data science terms
      • Data science tools
      • Data science thinking
      • Domain driven data mining
      • Educational data mining
      • Large-scale statistical learning
      • Metasynthetic engineering
      • Market surveillance
      • Negative Sequence Analysis
      • Non-IID Learning
      • Pattern relation analysis
      • Recommender systems
      • Smart beach analytics
      • Social security analytics
      • Tax analytics
  • About us
Call for Papers: Intelligent Recommendation with Advanced AI and Learning

• Paper submission due: 15 December 2019
• First-round review due: 25 February 2020
• Revision due: 30 March 2020
• Final decision notification: 10 April 2020
• Camera-ready submission due: 30 April 2020
• Publication: Sept./Oct. 2020

Recommendation has become one of the most important applications of artificial intelligence (AI), data science, and advanced analytics theories and techniques. It is deeply integrated into our daily life. Data science, advanced learning, and AI techniques constitute the formal background employed to build advanced intelligent recommendations. This special issue aims to collect the state-of-the-art theories, tools, and applications for intelligent recommendation, enabled by advanced learning and AI techniques, data science, and advanced analytics.

Scope of Interest

Advanced AI and learning have been driving a variety of intelligent recommendation issues, including intent and preference modelling, non-IID recommendations, personalized recommendations, real-time recommendations, next-best recommendations, cross-domain recommendations, etc. in a context-aware, real-time, sequential, and user/product/domain-specific manner. This special issue aims to collect the most recent theoretical and practical advances in RS, including cutting-edge theories, foundations and learning systems as well as actionable tools and impactful case studies of intelligent recommendations, supported by advanced AI and machine learning techniques, in particular, deep learning, data science, and advanced analytics.

Topics of interest include but are not restricted to:

  • Actionable and explainable recommendations
  • Context-aware recommendations
  • Cross-domain recommendations
  • Dynamic recommendations
  • Group recommendations
  • Intent and preference learning in recommendations
  • Large-scale recommendations
  • Multi-purpose recommendations
  • Next-best action recommendation
  • Non-IID (non-independent and identically distributed) recommendations
  • Online interactive recommendations
  • Personalized recommendations
  • Precision recommendations
  • Recommendations on massive sparse data
  • Real-time recommendations
  • Session-based recommendations
  • Sequential recommendations
  • Social recommendations
  • User modelling and profiling in recommendations
  • Impactful recommendation applications and systems

All submissions must comply with the IEEE Intelligent Systems’ submission guidelines and will be reviewed by research peers.

Guest Editors

  • Shoujin Wang, Macquarie University, Australia (shoujin.wang@mq.edu.au)
  • Gabriella Pasi, University of Milano-Bicocca, Italy (pasi@disco.unimib.it)
  • Liang Hu, University of Shanghai for Science and Technology, China (rainmilk@gmail.com)
  • Longbing Cao, University of Technology Sydney, Australia (longbing.cao@uts.edu.au)

Questions?

Contact the Guest Editors at is5-20@computer.org

About us
School of Computing, Faculty of Science and Engineering, Macquarie University, Australia
Level 3, 4 Research Park Drive, Macquarie University, NSW 2109, Australia
Tel: +61-2-9850 9583
Staff: firstname.surname(a)mq.edu.au
Students: firstname.surname(a)student.mq.edu.au
Contacts@datasciences.org