In high-stakes industries like healthcare, banking, and criminal justice, where accountability and transparency are just as important as predicted performance, machine learning (ML) has emerged as a key component of decision-making. However, a lot of high-performing machine learning models—especially intricate ones like deep neural networks—are frequently regarded as "black boxes" because of their opacity, which presents problems in applications where comprehending the logic behind predictions is crucial. seeks to combine predictability and transparency by exploring ways to improve model interpretability without sacrificing speed. This study compares interpretability methods including attention mechanisms, surrogate models, and feature importance analysis to find strategies that preserve good performance levels while offering valuable insights into model choices. The effectiveness and trade-offs of these techniques are assessed through empirical testing in a number of high-stakes situations. The findings show that specific interpretability strategies might attain the best possible balance between transparency and performance, especially in situations where user confidence and legal compliance are crucial. the sector by offering recommendations for applying interpretable machine learning in delicate areas, opening the door for more reliable, accountable, and efficient AI-driven decision-making.
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J Arya
Journal of Sustainable Solutions.
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J Arya (Sat,) studied this question.
www.synapsesocial.com/papers/68af6210ad7bf08b1eae3326 — DOI: https://doi.org/10.36676/j.sust.sol.v2.i3.72