Introduction: Studies in sociology, psychology, epidemiology, marketing or information security often face the issue of estimating the behavior rate (either individually or at the level of a population). Direct methods of behavior rate estimation are sometimes not available; hence, it is important to develop indirect methods. Earlier studies proposed an approach to risky behavior modeling based on a Bayesian belief network using the data about several last behavior episodes as its initial data. However, to apply this model in practice, we need to reduce its dependency from the initial experts’ assumptions about the relations between the elements of the model. Purpose: To propose a model modification which would not require an expert-based model structure, and to compare the modified model with the initial one. Methods: To test the model, we used an automatically generated dataset which followed some initial assumptions about the data. To form the structure of a Bayesian belief network, we used a score-based hill-climbing algorithm with Bayesian information criterion score. Results: We proposed to modify the approach to risky behavior modeling in terms of Bayesian belief network based on the data about several last behavior episodes. The initial expert-based model and the model with a data-based structure were compared. Formal scores were better for the data-based structure, while the prediction quality was slightly better for the expert-based model. Hence, we can use both these models for practical applications; the choice depends on the assumptions and limitations of a particular task.

Original languageEnglish
Pages (from-to)116-122
Number of pages7
JournalInformatsionno-Upravliaiushchie Sistemy
Volume2018
Issue number1
DOIs
StatePublished - 1 Jan 2018

    Scopus subject areas

  • Information Systems
  • Computer Science Applications
  • Human-Computer Interaction
  • Software
  • Control and Optimization
  • Control and Systems Engineering

    Research areas

  • Bayesian Belief Network, Behavior Modelling, Machine Learning, Risky Behavior, Structure Synthesis

ID: 43476412