Explainability in supply chain operational risk management: A systematic literature review
It is important to manage operational disruptions to ensure the success of supply chain
operations. To achieve this aim, researchers have developed techniques that determine the …
operations. To achieve this aim, researchers have developed techniques that determine the …
AI fairness in data management and analytics: A review on challenges, methodologies and applications
P Chen, L Wu, L Wang - Applied Sciences, 2023 - mdpi.com
This article provides a comprehensive overview of the fairness issues in artificial intelligence
(AI) systems, delving into its background, definition, and development process. The article …
(AI) systems, delving into its background, definition, and development process. The article …
Causal machine learning: A survey and open problems
Causal Machine Learning (CausalML) is an umbrella term for machine learning methods
that formalize the data-generation process as a structural causal model (SCM). This …
that formalize the data-generation process as a structural causal model (SCM). This …
Towards faithful model explanation in nlp: A survey
End-to-end neural Natural Language Processing (NLP) models are notoriously difficult to
understand. This has given rise to numerous efforts towards model explainability in recent …
understand. This has given rise to numerous efforts towards model explainability in recent …
Explaining NLP models via minimal contrastive editing (MiCE)
Humans have been shown to give contrastive explanations, which explain why an observed
event happened rather than some other counterfactual event (the contrast case). Despite the …
event happened rather than some other counterfactual event (the contrast case). Despite the …
Do models explain themselves? counterfactual simulatability of natural language explanations
Large language models (LLMs) are trained to imitate humans to explain human decisions.
However, do LLMs explain themselves? Can they help humans build mental models of how …
However, do LLMs explain themselves? Can they help humans build mental models of how …
Faithfulness tests for natural language explanations
Explanations of neural models aim to reveal a model's decision-making process for its
predictions. However, recent work shows that current methods giving explanations such as …
predictions. However, recent work shows that current methods giving explanations such as …
Identifying and mitigating spurious correlations for improving robustness in nlp models
Recently, NLP models have achieved remarkable progress across a variety of tasks;
however, they have also been criticized for being not robust. Many robustness problems can …
however, they have also been criticized for being not robust. Many robustness problems can …
Interpreting language models with contrastive explanations
Model interpretability methods are often used to explain NLP model decisions on tasks such
as text classification, where the output space is relatively small. However, when applied to …
as text classification, where the output space is relatively small. However, when applied to …
Contrastive data and learning for natural language processing
Current NLP models heavily rely on effective representation learning algorithms. Contrastive
learning is one such technique to learn an embedding space such that similar data sample …
learning is one such technique to learn an embedding space such that similar data sample …