Ana Fernández Vilas


Ontology type: schema:Person     


Person Info

NAME

Ana Fernández

SURNAME

Vilas

Publications in SciGraph latest 50 shown

  • 2018-11-09 Big Data Fusion Model for Heterogeneous Financial Market Data (FinDf) in INTELLIGENT SYSTEMS AND APPLICATIONS
  • 2018-11 The workforce analyzer: group discovery among LinkedIn public profiles in JOURNAL OF AMBIENT INTELLIGENCE AND HUMANIZED COMPUTING
  • 2018-08-20 Twitter permeability to financial events: an experiment towards a model for sensing irregularities in MULTIMEDIA TOOLS AND APPLICATIONS
  • 2017-04 Identifying urban crowds using geo-located Social media data: a Twitter experiment in New York City in JOURNAL OF INTELLIGENT INFORMATION SYSTEMS
  • 2017 A New MOOCs’ Recommendation Framework based on LinkedIn Data in INNOVATIONS IN SMART LEARNING
  • 2017 Combining Fog Architectures and Distributed Event-Based Systems for Mobile Sensor Location Certification in UBIQUITOUS COMPUTING AND AMBIENT INTELLIGENCE
  • 2016 Machine Learning Based Classification Approach for Predicting Students Performance in Blended Learning in THE 1ST INTERNATIONAL CONFERENCE ON ADVANCED INTELLIGENT SYSTEM AND INFORMATICS (AISI2015), NOVEMBER 28-30, 2015, BENI SUEF, EGYPT
  • 2014 Is There a Crowd? Experiences in Using Density-Based Clustering and Outlier Detection in MINING INTELLIGENCE AND KNOWLEDGE EXPLORATION
  • 2013-12 An experimental assessment of artificial within-family selection for fitness in conservation programs in CONSERVATION GENETICS
  • 2012 Social Recommendation Based on a Rich Aggregation Model in RECOMMENDER SYSTEMS FOR THE SOCIAL WEB
  • 2012 A Social P2P Approach for Personal Knowledge Management in the Cloud in ON THE MOVE TO MEANINGFUL INTERNET SYSTEMS: OTM 2012 WORKSHOPS
  • 2012 SCORM and Social Recommendation: A Web 2.0 Approach to E-learning in RECOMMENDER SYSTEMS FOR THE SOCIAL WEB
  • 2012 Challenges in Tag Recommendations for Collaborative Tagging Systems in RECOMMENDER SYSTEMS FOR THE SOCIAL WEB
  • 2012 Group Recommender Systems: New Perspectives in the Social Web in RECOMMENDER SYSTEMS FOR THE SOCIAL WEB
  • 2012 Recommendations on the Move in RECOMMENDER SYSTEMS FOR THE SOCIAL WEB
  • 2012 Implicit Trust Networks: A Semantic Approach to Improve Collaborative Recommendations in RECOMMENDER SYSTEMS FOR THE SOCIAL WEB
  • 2012 A Multi-criteria Approach for Automatic Ontology Recommendation Using Collective Knowledge in RECOMMENDER SYSTEMS FOR THE SOCIAL WEB
  • 2012 Social Recommender Systems in RECOMMENDER SYSTEMS FOR THE SOCIAL WEB
  • 2012 Conclusiones and Open Trends in RECOMMENDER SYSTEMS FOR THE SOCIAL WEB
  • 2012 Augmenting Collaborative Recommenders by Fusing Social Relationships: Membership and Friendship in RECOMMENDER SYSTEMS FOR THE SOCIAL WEB
  • 2012 Inferring Ties for Social-Aware Ambient Intelligence: The Facebook Case in AMBIENT INTELLIGENCE - SOFTWARE AND APPLICATIONS
  • 2012 Legal Aspects of Recommender Systems in the Web 2.0: Trust, Liability and Social Networking in RECOMMENDER SYSTEMS FOR THE SOCIAL WEB
  • 2011-05 TVGuide2.0: applying the Web2.0 fundamentals to IDTV in MULTIMEDIA TOOLS AND APPLICATIONS
  • 2010 Educateca: A Web 2.0 Approach to e-Learning with SCORM in SOFTWARE SERVICES FOR E-WORLD
  • 2008-09 Composing requirements specifications from multiple prioritized sources in REQUIREMENTS ENGINEERING
  • 2005 Multi-valued Model Checking in Dense-Time in SYMBOLIC AND QUANTITATIVE APPROACHES TO REASONING WITH UNCERTAINTY
  • 2004 Supporting Software Variability by Reusing Generic Incomplete Models at the Requirements Specification Stage in SOFTWARE REUSE: METHODS, TECHNIQUES, AND TOOLS
  • 2004 A Many-Valued Logic with Imperative Semantics for Incremental Specification of Timed Models in INTEGRATED FORMAL METHODS
  • 2004 Improving the Consistency Checking Process by Reusing Formal Verification Knowledge in PERSPECTIVES OF SYSTEM INFORMATICS
  • 2004 High Availability with Clusters of Web Services in ADVANCED WEB TECHNOLOGIES AND APPLICATIONS
  • 2002 Extending Timed Automaton and Real-Time Logic to Many-Valued Reasoning in FORMAL TECHNIQUES IN REAL-TIME AND FAULT-TOLERANT SYSTEMS
  • Affiliations

  • University of Vigo (current)
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