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Exploring and interacting with the set of good sparse generalized additive models
In real applications, interaction between machine learning models and domain experts is
critical; however, the classical machine learning paradigm that usually produces only a …
critical; however, the classical machine learning paradigm that usually produces only a …
[HTML][HTML] Exploring the interrelationships between composition, rheology, and compressive strength of self-compacting concrete: An exploration of explainable boosting …
This study introduces a novel methodology for enhancing the compressive strength of self-
compacting concrete (SCC) via the use of the Explainable Boosting Machine (EBM), a …
compacting concrete (SCC) via the use of the Explainable Boosting Machine (EBM), a …
[HTML][HTML] Proposing an inherently interpretable machine learning model for shear strength prediction of reinforced concrete beams with stirrups
Advanced machine learning (ML) models are utilized for accurate shear strength prediction
of reinforced concrete beams (RCB), but their lack of interpretability makes it unclear how …
of reinforced concrete beams (RCB), but their lack of interpretability makes it unclear how …
Exploring accuracy and interpretability trade-off in tabular learning with novel attention-based models
Apart from high accuracy, what interests many researchers and practitioners in real-life
tabular learning problems (eg, fraud detection and credit scoring) is uncovering hidden …
tabular learning problems (eg, fraud detection and credit scoring) is uncovering hidden …
No more black-boxes: estimate deformation capacity of non-ductile RC shear walls based on generalized additive models
Abstract Machine learning techniques have gained attention in earthquake engineering for
their accurate predictions, but their opaque black-box models create ambiguity in the …
their accurate predictions, but their opaque black-box models create ambiguity in the …
[HTML][HTML] Explainable machine learning with pairwise interactions for predicting conversion from mild cognitive impairment to Alzheimer's disease utilizing multi …
J Cai, W Hu, J Ma, A Si, S Chen, L Gong, Y Zhang… - Brain Sciences, 2023 - mdpi.com
Background: Predicting cognition decline in patients with mild cognitive impairment (MCI) is
crucial for identifying high-risk individuals and implementing effective management. To …
crucial for identifying high-risk individuals and implementing effective management. To …
Estimate deformation capacity of non-ductile rc shear walls using explainable boosting machine
ZT Deger, GT Kaya, JW Wallace - ar** countries, vehicle emissions are a major source of atmospheric pollution,
worsened by aging vehicle fleets and less stringent emissions regulations. This results in …
worsened by aging vehicle fleets and less stringent emissions regulations. This results in …
Interpretability and Multiplicity: A Path to Trustworthy Machine Learning
C Zhong - 2024 - search.proquest.com
Abstract Machine learning has been increasingly deployed for myriad high-stakes decisions
that deeply impact people's lives. This is concerning, because not every model can be …
that deeply impact people's lives. This is concerning, because not every model can be …
Human-in-the-loop Machine Learning System via Model Interpretability
Z Chen - 2023 - search.proquest.com
The interpretability of a machine learning system is crucial in situations where it involves
human-model interaction or affects the well-being of society. By making the decision process …
human-model interaction or affects the well-being of society. By making the decision process …