학술논문

Uncover: Toward Interpretable Models for Detecting New Star Cluster Members
Document Type
Periodical
Source
IEEE Transactions on Visualization and Computer Graphics IEEE Trans. Visual. Comput. Graphics Visualization and Computer Graphics, IEEE Transactions on. 29(9):3855-3872 Sep, 2023
Subject
Computing and Processing
Bioengineering
Signal Processing and Analysis
Stars
Predictive models
Anomaly detection
Extraterrestrial measurements
Data models
Computational modeling
Data science
Interpretable models
model selection
novelty detection
star clusters
Language
ISSN
1077-2626
1941-0506
2160-9306
Abstract
In this design study, we present Uncover, an interactive tool aimed at astronomers to find previously unidentified member stars in stellar clusters. We contribute data and task abstraction in the domain of astronomy and provide an approach for the non-trivial challenge of finding a suitable hyper-parameter set for highly flexible novelty detection models. We achieve this by substituting the tedious manual trial and error process, which usually results in finding a small subset of passable models with a five-step workflow approach. We utilize ranges of a priori defined, interpretable summary statistics models have to adhere to. Our goal is to enable astronomers to use their domain expertise to quantify model goodness effectively. We attempt to change the current culture of blindly accepting a machine learning model to one where astronomers build and modify a model based on their expertise. We evaluate the tools’ usability and usefulness in a series of interviews with domain experts.