we submitted a workshop paper "ModelSpeX: Model Specification
Using Explainable Artificial Intelligence Methods" to theMLVis
2020 Workshop. We request
to acknowledge SPARTA if the paper is accepted.
Abstract:
Explainable artificial intelligence (XAI) methods aim to
reveal the non-transparent decision-making mechanisms of
black-box models (e.g., deep learning models). The
evaluation of insight generated by such XAI methods remains
challenging as the applied techniques depend on many factors
(e.g., parameters, human interpretation). We propose
ModelSpeX, a visual analytics workflow to interactively
extract human-centered rule-sets to generate model
specifications from black-box models. The workflow enables
to reason about the underlying problem, to extract rule
sets, and to evaluate the suitability of the models for a
particular task. An exemplary usage scenario walks an
analyst trough the steps of the workflow to show the
applicability.