• Title of article

    Citizens as consumers: Profiling e-government services’ users in Egypt via data mining techniques

  • Author/Authors

    Mostafa، نويسنده , , Mohamed M. and El-Masry، نويسنده , , Ahmed A.، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2013
  • Pages
    15
  • From page
    627
  • To page
    641
  • Abstract
    This study uses data mining techniques to examine the effect of various demographic, cognitive and psychographic factors on Egyptian citizens’ use of e-government services. Data mining uses a broad family of computationally intensive methods that include decision trees, neural networks, rule induction, machine learning and graphic visualization. Three artificial neural network models (multi-layer perceptron neural network [MLP], probabilistic neural network [PNN] and self-organizing maps neural network [SOM]) and three machine learning techniques (classification and regression trees [CART], multivariate adaptive regression splines [MARS], and support vector machines [SVM]) are compared to a standard statistical method (linear discriminant analysis [LDA]). The variable sets considered are sex, age, educational level, e-government services perceived usefulness, ease of use, compatibility, subjective norms, trust, civic mindedness, and attitudes. The study shows how it is possible to identify various dimensions of e-government services usage behavior by uncovering complex patterns in the dataset, and also shows the classification abilities of data mining techniques.
  • Keywords
    EGYPT , e-Government services , NEURAL NETWORKS , DATA MINING , Consumer profiling
  • Journal title
    International Journal of Information Management
  • Serial Year
    2013
  • Journal title
    International Journal of Information Management
  • Record number

    1386854