A comprehensive review of model compression techniques in machine learning
This paper critically examines model compression techniques within the machine learning
(ML) domain, emphasizing their role in enhancing model efficiency for deployment in …
(ML) domain, emphasizing their role in enhancing model efficiency for deployment in …
A comprehensive survey on trustworthy recommender systems
As one of the most successful AI-powered applications, recommender systems aim to help
people make appropriate decisions in an effective and efficient way, by providing …
people make appropriate decisions in an effective and efficient way, by providing …
Data collection and quality challenges in deep learning: A data-centric ai perspective
Data-centric AI is at the center of a fundamental shift in software engineering where machine
learning becomes the new software, powered by big data and computing infrastructure …
learning becomes the new software, powered by big data and computing infrastructure …
Sample selection for fair and robust training
Fairness and robustness are critical elements of Trustworthy AI that need to be addressed
together. Fairness is about learning an unbiased model while robustness is about learning …
together. Fairness is about learning an unbiased model while robustness is about learning …
Beyond generalization: a theory of robustness in machine learning
The term robustness is ubiquitous in modern Machine Learning (ML). However, its meaning
varies depending on context and community. Researchers either focus on narrow technical …
varies depending on context and community. Researchers either focus on narrow technical …
Multivariate time series prediction of complex systems based on graph neural networks with location embedding graph structure learning
X Shi, K Hao, L Chen, B Wei, X Liu - Advanced Engineering Informatics, 2022 - Elsevier
Graph convolutional neural networks (GNNs) have an excellent expression ability for
complex systems. However, the smoothing hypothesis based GNNs have certain limitations …
complex systems. However, the smoothing hypothesis based GNNs have certain limitations …
Can we trust fair-AI?
There is a fast-growing literature in addressing the fairness of AI models (fair-AI), with a
continuous stream of new conceptual frameworks, methods, and tools. How much can we …
continuous stream of new conceptual frameworks, methods, and tools. How much can we …
Policy advice and best practices on bias and fairness in AI
The literature addressing bias and fairness in AI models (fair-AI) is growing at a fast pace,
making it difficult for novel researchers and practitioners to have a bird's-eye view picture of …
making it difficult for novel researchers and practitioners to have a bird's-eye view picture of …
LSANNet: A lightweight convolutional neural network for maize leaf disease identification
F Zhang, R Bao, B Yan, M Wang, Y Zhang, S Fu - Biosystems Engineering, 2024 - Elsevier
Abstract Maize (Zea Mays) is a major food crop and is of great importance to ensure national
food security. However, maize leaf diseases occur from time to time, which poses a serious …
food security. However, maize leaf diseases occur from time to time, which poses a serious …
Information retrieval versus deep learning approaches for generating traceability links in bilingual projects
Software traceability links are established between diverse artifacts of the software
development process in order to support tasks such as compliance analysis, safety …
development process in order to support tasks such as compliance analysis, safety …