Dies ist eine Übersichtsseite mit Metadaten zu dieser wissenschaftlichen Arbeit. Ein externer Link zum Volltext ist derzeit nicht verfügbar.
WILDS: A Benchmark of in-the-Wild Distribution Shifts
286
Zitationen
1
Autoren
2020
Jahr
Abstract
Distribution shifts -- where the training distribution differs from the test distribution -- can substantially degrade the accuracy of machine learning (ML) systems deployed in the wild. Despite their ubiquity in the real-world deployments, these distribution shifts are under-represented in the datasets widely used in the ML community today. To address this gap, we present WILDS, a curated benchmark of 10 datasets reflecting a diverse range of distribution shifts that naturally arise in real-world applications, such as shifts across hospitals for tumor identification; across camera traps for wildlife monitoring; and across time and location in satellite imaging and poverty mapping. On each dataset, we show that standard training yields substantially lower out-of-distribution than in-distribution performance. This gap remains even with models trained by existing methods for tackling distribution shifts, underscoring the need for new methods for training models that are more robust to the types of distribution shifts that arise in practice. To facilitate method development, we provide an open-source package that automates dataset loading, contains default model architectures and hyperparameters, and standardizes evaluations. Code and leaderboards are available at https://wilds.stanford.edu.
Ähnliche Arbeiten
A survey on deep learning in medical image analysis
2017 · 13.911 Zit.
pROC: an open-source package for R and S+ to analyze and compare ROC curves
2011 · 13.762 Zit.
Dermatologist-level classification of skin cancer with deep neural networks
2017 · 13.458 Zit.
A survey on Image Data Augmentation for Deep Learning
2019 · 12.052 Zit.
QuPath: Open source software for digital pathology image analysis
2017 · 8.387 Zit.