NIPS-20 待读的Paper


2020.10.6

NIPS-2020 1900 accepted papers

(一般在 author notification 后过几天放出来)

粗略搜索了一些相关的论文

Interesting paper

  • Self-Distillation as Instance-Specific Label Smoothing
  • Provably Consistent Partial-Label Learning
  • Learning from Label Proportions: A Mutual Contamination Framework
  • Rethinking Importance Weighting for Deep Learning under Distribution Shift

Noisy labels

  • Parts-dependent Label Noise: Towards Instance-dependent Label Noise
  • Dual T: Reducing Estimation Error for Transition Matrix in Label-noise Learning
  • Identifying Mislabeled Data using the Area Under the Margin Ranking
  • Coresets for Robust Training of Deep Neural Networks against Noisy Labels
  • Early-Learning Regularization Prevents Memorization of Noisy Labels
  • A Topological Filter for Learning with Label Noise
  • What Do Neural Networks Learn When Trained With Random Labels?

Class-imbalance Learning

  • MESA: Effective Ensemble Imbalanced Learning with MEta-SAmpler

  • Posterior Re-calibration for Imbalanced Datasets

  • Generative Modeling of Factorized Representations in Class-Imbalanced Data

  • Rethinking the Value of Labels for Improving Class-Imbalanced Learning

  • Devil in the Momentum: Long-Tailed Classification by Removing Momentum Causal Effect

  • Balanced Meta-Softmax for Long-Tailed Visual Recognition

  • What Neural Networks Memorize and Why: Discovering the Long Tail via Influence Estimation

  • Fast Unbalanced Optimal Transport on Tree

  • Distribution Aligning Refinery of Pseudo-label for Imbalanced Semi-supervised Learning (glz 12-组会)

PU Learning

  • Learning from Positive and Unlabeled Data with Arbitrary Positive Shift
  • A Variational Approach for Learning from Positive and Unlabeled Data
  • Semi-Supervised Partial Label Learning via Confidence-Rated Margin Maximization
  • Temporal Positive-unlabeled Learning for Biomedical Hypothesis Generation via Risk Estimation
  • Partial Optimal Transport with applications on Positive-Unlabeled Learning

Domain Adaptation:

  • Domain Adaptation with Conditional Distribution Matching and Generalized Label Shift

Model calibration

  • Improving model calibration with accuracy versus uncertainty optimization

点云,3D 重建

  • CaSPR: Learning Canonical Spatiotemporal Point Cloud Representations
  • Group Contextual Encoding for 3D Point Clouds
  • PIE-NET: Parametric Inference of Point Cloud Edges
  • Rotation-Invariant Local-to-Global Representation Learning for 3D Point Cloud
  • Self-Supervised Few-Shot Learning on Point Clouds


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