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Trustworthy Machine Learning under Distribution Shifts

About

Machine Learning (ML) has been a foundational topic in artificial intelligence (AI), providing both theoretical groundwork and practical tools for its exciting advancements. From ResNet for visual recognition to Transformer for vision-language alignment, the AI models have achieved superior capability to humans. Furthermore, the scaling law has enabled AI to initially develop general intelligence, as demonstrated by Large Language Models (LLMs). To this stage, AI has had an enormous influence on society and yet still keeps shaping the future for humanity. However, distribution shift remains a persistent ``Achilles' heel'', fundamentally limiting the reliability and general usefulness of ML systems. Moreover, generalization under distribution shift would also cause trust issues for AIs. Motivated by these challenges, my research focuses on \textit{Trustworthy Machine Learning under Distribution Shifts}, with the goal of expanding AI's robustness, versatility, as well as its responsibility and reliability. We carefully study the three common distribution shifts into: (1) Perturbation Shift, (2) Domain Shift, and (3) Modality Shift. For all scenarios, we also rigorously investigate trustworthiness via three aspects: (1) Robustness, (2) Explainability, and (3) Adaptability. Based on these dimensions, we propose effective solutions and fundamental insights, meanwhile aiming to enhance the critical ML problems, such as efficiency, adaptability, and safety.

Zhuo Huang• 2025

Related benchmarks

TaskDatasetResultRank
Image ClassificationCIFAR-100--
622
Image ClassificationImageNet A
Top-1 Acc75.1
553
Image ClassificationImageNet V2--
487
Image ClassificationMNIST
Accuracy81.3
263
Image ClassificationPACS--
230
Image ClassificationImageNet-R
Accuracy92.8
148
Image ClassificationOfficeHome
Average Accuracy70.3
131
Domain GeneralizationDomainBed (test)
VLCS Accuracy80.1
110
Image ClassificationImageNet-C (test)--
110
Image ClassificationPACS
Accuracy87.8
100
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