Publication | Open Access
EXMOS: Explanatory Model Steering through Multifaceted Explanations and Data Configurations
26
Citations
42
References
2024
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningMachine Learning ToolModel-based ReasoningExplanatory Model SteeringData ConfigurationModel CompositionInteractive Machine LearningData ScienceInteractive Machine-learning SystemsManagementData IntegrationInterpretabilityPredictive AnalyticsExplainable AiComputer ScienceDomain ExpertsExplanation-based LearningAutomated ReasoningModel InterpretabilityHealth InformaticsData Modeling
Explanations in interactive machine-learning systems facilitate debugging and improving prediction models. However, the effectiveness of various global model-centric and data-centric explanations in aiding domain experts to detect and resolve potential data issues for model improvement remains unexplored. This research investigates the influence of data-centric and model-centric global explanations in systems that support healthcare experts in optimising models through automated and manual data configurations. We conducted quantitative (n=70) and qualitative (n=30) studies with healthcare experts to explore the impact of different explanations on trust, understandability and model improvement. Our results reveal the insufficiency of global model-centric explanations for guiding users during data configuration. Although data-centric explanations enhanced understanding of post-configuration system changes, a hybrid fusion of both explanation types demonstrated the highest effectiveness. Based on our study results, we also present design implications for effective explanation-driven interactive machine-learning systems.
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