TL;DR
This paper introduces the Active Selection of Classification Features (ASCF) problem, aiming to select the most informative instances for acquiring expensive features, demonstrated through real-world benchmarks and neuroimaging applications.
Contribution
It formulates the novel ASCF problem, proposes two utility-based methods, and evaluates their effectiveness on benchmark datasets and neuroimaging data.
Findings
Proposed utility-based approaches outperform baseline methods.
Effective in selecting informative instances for expensive feature acquisition.
Demonstrated applicability in neuroimaging research for mental disorders.
Abstract
Some data analysis applications comprise datasets, where explanatory variables are expensive or tedious to acquire, but auxiliary data are readily available and might help to construct an insightful training set. An example is neuroimaging research on mental disorders, specifically learning a diagnosis/prognosis model based on variables derived from expensive Magnetic Resonance Imaging (MRI) scans, which often requires large sample sizes. Auxiliary data, such as demographics, might help in selecting a smaller sample that comprises the individuals with the most informative MRI scans. In active learning literature, this problem has not yet been studied, despite promising results in related problem settings that concern the selection of instances or instance-feature pairs. Therefore, we formulate this complementary problem of Active Selection of Classification Features (ASCF): Given a…
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