TL;DR
This paper introduces a framework for evaluating and learning in machine learning tasks where the true target is ambiguous or subjective, using logical assessment and uncertain target learning strategies.
Contribution
It develops LAF-based evaluation algorithms and UTTL-based learning strategies to enable coherent modeling under uncertain supervision, bridging logical semantics and statistical optimization.
Findings
LAF evaluation algorithms operate on original or synthesized targets.
UTTL strategies compare per-target and aggregated optimization schemes.
The framework provides a principled foundation for ML in uncertain target scenarios.
Abstract
In many real-world machine learning (ML) applications, the true target cannot be precisely defined due to ambiguity or subjectivity information. To address this challenge, under the assumption that the true target for a given ML task is not assumed to exist objectively in the real world, the EL-MIATTs (Evaluation and Learning with Multiple Inaccurate True Targets) framework has been proposed. Bridging theory and practice in implementing EL-MIATTs, in this paper, we develop two complementary mechanisms: LAF (Logical Assessment Formula)-based evaluation algorithms and UTTL (Undefinable True Target Learning)-based learning strategies with MIATTs, which together enable logically coherent and practically feasible modeling under uncertain supervision. We first analyze task-specific MIATTs, examining how their coverage and diversity determine their structural property and influence downstream…
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