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High Accuracy Is Not Enough: Epistemic Bias in Machine Learning Task Formulation | Synapse
March 3, 2026
Open Access
High Accuracy Is Not Enough: Epistemic Bias in Machine Learning Task Formulation
GG
Grazia Garzo
University of Siena
AP
Alessandro Palumbo
Key Points
High accuracy in machine learning tasks may conceal underlying epistemic bias, impacting overall effectiveness.
Evidence shows that even highly accurate algorithms can be misled by incorrect task formulations, affecting their reliability.
Observational analysis focused on algorithm outputs in various contexts indicates significant variability in performance.
Awareness of epistemic bias in machine learning could enhance algorithm design and implementation going forward.
Abstract
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Garzo et al. (Thu,) studied this question.
synapsesocial.com/papers/69a7622dc6e9836116a3064f
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