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    Area of Science:

    • Machine Learning
    • Data Visualization
    • Scientific Computing

    Background:

    • Partial dependence plots (PDPs) and individual conditional expectation (ICE) plots are crucial for interpreting machine learning (ML) models on tabular data.
    • Analyzing these plots becomes challenging with a high number of features, hindering efficient model exploration.

    Purpose of the Study:

    • To develop and evaluate new techniques for ranking and filtering PDP and ICE plots.
    • To enhance the efficiency of ML practitioners in exploring model behavior and identifying significant feature impacts.
    • To integrate these novel techniques into a user-friendly visual analytics tool.

    Main Methods:

    • Development of novel algorithms for ranking and filtering PDP and ICE plots.
    • Adaptation and integration of existing line clustering strategies for ICE plots.
    • Implementation of these techniques within PDPilot, a visual analytics tool for Jupyter notebooks.
    • Empirical study involving 7 ML practitioners to assess the usability of the developed techniques.

    Main Results:

    • The study presents new, effective techniques for prioritizing and selecting relevant PDP and ICE plots.
    • The integration into PDPilot facilitates efficient exploration and analysis of ML model behavior.
    • User study demonstrates the practical utility of the developed ranking, filtering, and clustering methods.

    Conclusions:

    • The developed techniques significantly improve the efficiency of analyzing ML models using PDP and ICE plots.
    • PDPilot, with its integrated features, offers a valuable tool for ML practitioners.
    • These advancements contribute to more interpretable and understandable machine learning models.