from December 2-6, 2024
Special Session on Reliable, Robust, and Secure
Machine Learning Algorithms
at the 31th International Conference on Neural Information Processing (ICONIP2024)
Description
The wider adoption of machine learning (ML) and artificial intelligence (AI) make several applications successful across societies such as healthcare, finance, robotics, transportation and industry operations by inducing intelligence in real-time [1-2]. Designing, developing and deploying reliable, robust, and secure ML algorithms are desirable for building trustworthy systems that offer trusted services to users with high-stakes decision making [2-4]. For instance, AI-assisted robotic surgery, automated financial trading, autonomous driving and many more modern applications are vulnerable to concept drifts, dataset shifts, misspecifications, misconfiguration of model parameters, perturbations, and adversarial attacks beyond human or even machine comprehension level, thereby posing dangerous threats to various stakeholders at different levels. Moreover, building trustworthy AI systems requires lots of research efforts in addressing different mechanisms and approaches that could enhance user and public trust. To name a few, the following topics are known to be topics of interest in trustworthy and secure AI, but are not limited to: (i) bias and fairness, (ii) explainability, (iii) robust mitigation of adversarial attacks, (iv) improved privacy and security in model building, (v) being decent, (vi) model attribution and (vii) scalability of the model under adversarial settings [1-5]. All of these topics are important and need to be addressed.
This special session aims to draw together state-of-the-art advances in machine learning (ML) to address challenges for ensuring reliability, security and privacy in trustworthy systems. The challenges in different learning paradigms are including, but are not limited to (i) robust learning, (ii) adversarial learning, (iii) stochastic, deterministic and non-deterministic learning, and (iv) secure and private learning. Nonetheless, all aspects of learning algorithms that can deal with reliable, robust and secure issues are the focus of the special session. It will focus on robustness and performance guarantee, as well as, consistency, transparency and safety of AI which is vital to ensure reliability. The special session will attract analytics experts from academics and industries to build trustworthy AI systems by developing and assessing theoretical and empirical methods, practical applications, and new ideas and identifying directions for future studies. Original contributions, as well as comparative studies among different methods, are welcome with an unbiased literature review.
Topics of Interest
Topics of the special session include (reliable/robustness/secure learning methods), including but not limited to:
Robustness of machine learning/deep learning/reinforcement learning algorithms and trustworthy systems in general.
Confidence, consistency, and uncertainty in model predictions for reliability beyond robustness.
Transparent AI concepts in data collection, model development, deployment and explainability.
Adversarial attacks - evasion, poisoning, extraction, inference, and hybrid.
New solutions to make a system robust and secure to novel or potentially adversarial inputs; to handle model misspecification, corrupted training data, addressing concept drifts, dataset shifts, and missing/manipulated data instances.
Theoretical and empirical analysis of reliable/robust/secure ML methods.
Comparative studies with competing methods without reliable/robust certified properties.
Applications of reliable/robust machine learning algorithms in domains such as healthcare, biomedical, finance, computer vision, natural language processing, big data, and all other relevant areas.
Unique societal and legal challenges facing reliability for trustworthy AI systems.
Secure learning from data having high missing values, incompleteness, noisy
Private learning from sensitive and protected data
Important dates
Paper Submission Deadline: 7 June 2024
Notification of Acceptance: 26 July 2024
Camera Ready Submission: 30 August 2024
Registration Deadline: 30 August 2024
Conference Dates: 2-6 December 2024
Submission guideline: please follow the guideline here.
Latex Template: Overleaf
Submission page: https://easychair.org/conferences/?conf=iconip2024
Invited Speaker
Title: TBA
Biography: TBA
Abstract: TBA
The Venue
The 31th International Conference on Neural Information Processing (ICONIP2024)
Dec 2-6, 2024
(Auckland, New Zealand)
The 31th International Conference on Neural Information Processing (ICONIP2024) aims to provide a leading international forum for researchers, scientists, and industry professionals who are working in neuroscience, neural networks, deep learning, and related fields to share their new ideas, progresses and achievement, through its regular sessions, special sessions, tutorials, and workshops.
ICONIP 2024 will be held physically, during Dec 2-6, 2024.