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Explainable artificial intelligence through graph theory by generalized social network analysis-based classifier.

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We introduce Graph Social Network Analysis classifier (GSNAc), a visual machine learning model that transforms tabular data into networks for classification. GSNAc offers superior performance and interpretable, visual predictions.

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Area of Science:

  • Machine Learning
  • Data Science
  • Network Science

Background:

  • Social Network Analysis-based Classifier (SNAc) previously handled time-series numerical data.
  • Existing methods may lack interpretability and visual representation for complex datasets.

Purpose of the Study:

  • To extend SNAc for tabular data classification, including numerical and categorical features.
  • To develop a visual, interpretable machine learning classifier named GSNAc.
  • To demonstrate GSNAc's effectiveness and compare its performance against established classifiers.

Main Methods:

  • Tabular data is converted into a network graph where samples are nodes and similarities are edges.
  • A visualizable 'graph classifier model-GCM' is extracted by simplifying and enriching the network graph.
  • Classification is performed by mapping test nodes into the GCM and evaluating average similarity using vectorial and topological metrics.

Main Results:

  • GSNAc demonstrated superior or comparable performance against well-established machine learning classifiers on benchmark datasets.
  • The method successfully transforms multidimensional tabular data into a 2D visualizable network domain.
  • The classifier provides a visually comprehensible and interpretable prediction process.

Conclusions:

  • GSNAc is an effective supervised visual machine learning classifier for diverse tabular data.
  • The primary contribution is the transformation of data into a visual network for enhanced interpretability.
  • GSNAc offers a human-comprehensible and highly visual approach to machine learning classification.