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Master Theses

Examples of past Master Thesis topics pertaining to Big Data.

  • Analyze 3D movement data (with Faber)
  • Analyze badminton camera data (with FMTC)
  • Analyze black box collected driving data
  • Analyze click data (with Mediahuis)
  • Analyze dns data (with DNS.be)
  • Analyze energy data (3x with Sirris and 3E)
  • Analyze flight data (5x with Boeing and JetairFly)
  • Analyze healthcare data (with Agfa Healthcare, with UZ Leuven, ...)
  • Analyze maintenance data (with CERN)
  • Analyzing online buying behaviour: from e-analytics to e-marketing (Jan Vanthienen)
  • Clustering job seekers for improved prediction of unemployment duration (Wilfried Lemahieu)
  • Comparison of cross-platform sales processes (Seppe vanden Broucke)
  • Dealing with continuous variables and geographical information in non-life insurance ratemaking. Practical solutions applied to a car insurance data set
  • Decision Tree Induction with User-Defined Classification Metrics (Seppe vanden Broucke)
  • Discovering parking behavior for municipality residents (Guido Dedene)
  • Feasibility of blockchain application as medium for collaborative systems or databases (Jochen De Weerdt)
  • Fraud Dynamics: How fraud evolves over time in the network (Bart Baesens)
  • Prediction of demographic information in social networks (Bart Baesens)
  • Qualitative analysis of data-driven newspaper creation processes (Monique Snoeck)
  • Regression trees and ensembles of trees in P&C pricing.
  • Return on investment techniques for information quality investments (Guide Dedene)
  • Sales forecasting for a non-profit tutoring organization (Jan Vanthienen)
  • Sentiment analysis of social media feeds for brand popularity (Wilfried Lemahieu)
  • Simulating data-center congestion control solutions (Ferdinand Put)
  • Simulating traffic in Arena: the Bristol short track case (Ferdinand Put)
  • Teacher acceptance of E-learning technology: the use of Toledo and e-learning modules by teachers (Monique Snoeck)
  • Text mining for automated classification of scientific articles (Jochen De Weerdt)