ICML2022有意思的文章

ICML2022放榜了,很久没写博客了,今天摸鱼把ICML2022的接收列表翻了一遍,挑了一些自己感兴趣的下次读, 先放论文列表,有兴趣的自取。

Oral

  • Head2Toe: Utilizing Intermediate Representations for Better Transfer Learning
  • Bounding Training Data Reconstruction in Private (Deep) Learning
  • Measuring Representational Robustness of Neural Networks Through Shared Invariances
  • ModLaNets: Learning Generalisable Dynamics via Modularity and Physical Inductive Bias
  • Hierarchical Shrinkage: Improving the accuracy and interpretability of tree-based models

Spotlights

  • Does the Data Induce Capacity Control in Deep Learning?
  • Accelerating Shapley Explanation via Contributive Cooperator Selection
  • Prototype Based Classification from Hierarchy to Fairness
  • Measuring the Effect of Training Data on Deep Learning Predictions via Randomized Experiments
  • Fair Representation Learning through Implicit Path Alignment
  • Feature selection using e-values
  • Mitigating Neural Network Overconfidence with Logit Normalization
  • Active Multi-Task Representation Learning
  • Dataset Condensation with Contrastive Signals
  • Extracting Latent State Representations with Linear Dynamics from Rich Observations
  • How to Fill the Optimal Set? Population Gradient Descent with Harmless Diversity
  • Fair and Fast k-Center Clustering for Data Summarization
  • Channel Importance Matters in Few-Shot Image Classification
  • Label-Free Explainability for Unsupervised Models
  • A psychological theory of explainability
  • From data to functa: Your data point is a function and you should treat it like one
  • Understanding Robust Overfitting of Adversarial Training and Beyond
  • Learning Stable Classifiers by Transferring Unstable Features
  • Interpretable Neural Networks with Frank-Wolfe: Sparse Relevance Maps and Relevance Orderings
  • XAI for Transformers: Better Explanations through Conservative Propagation
  • Role-based Multiplex Network Embedding
  • Meaningfully debugging model mistakes using conceptual counterfactual explanations
  • Forgetting-free Continual Learning with Winning Subnetworks
  • Wide Neural Networks Forget Less Catastrophically
  • Measuring dissimilarity with diffeomorphism invariance
  • Efficient Learning of CNNs using Patch Based Features
  • Multi-scale Feature Learning Dynamics: Insights for Double Descent

Accepted papers

  • Achieving Fairness at No Utility Cost via Data Reweighing
  • Confidence Score for Source-Free Unsupervised Domain Adaptation
  • Probabilistic Bilevel Coreset Selection
  • Transfer and Marginalize: Explaining Away Label Noise with Privileged Information
  • On the Effects of Artificial Data Modification
  • Provable Domain Generalization via Invariant-Feature Subspace Recovery
  • More Than a Toy: Random Matrix Models Predict How Real-World Neural Representations Generalize
  • Information-Intensive Dataset Condensation
  • Datamodels: Understanding Predictions with Data and Data with Predictions
  • Benefits of Deep and Wide Convolutional Residual Networks: Function Approximation under Smoothness Constraint
  • What Can Linear Interpolation of Neural Network Loss Landscapes Tell Us?
  • Understanding Instance-Level Impact of Fairness Constraints
  • Disentangling Disease-related Representation from Obscure for Disease Prediction
  • A new similarity measure for covariate shift with applications to nonparametric regression
  • Representation Topology Divergence: A Method for Comparing Neural Network Representations

你可能感兴趣的:(论文分享,深度学习,机器学习)