ICML2019:Google和Facebook在推进哪些方向?

【导读】ICML2019正在加利福尼亚的长滩市如火如荼的进行着。作为一年一度的机器学习盛宴,来自世界各地的研究学者和顶尖公司都深度参与其中,引领着一年又一年的科技进步。那么,今年这些顶尖公司又在推进什么机器学习方向呢?小编简单分析了Facebook和Google在ICML2019上的投稿和参与的一些活动,一起来看看吧。


【Google at ICML 2019】

资料来自google官方博客

https://ai.googleblog.com/2019/06/google-at-icml-2019.html


组织方面:

在ICML2019的组织上,Google有:

  • ICML Board Member 董事会成员:4人

  • ICML Senior Area Chair(高级领域主席):8人

  • ICML Area Chair(领域主席):34人


投稿方面

Google 共中稿 94篇:

  1. Challenging Common Assumptions in the Unsupervised Learning of Disentangled Representations

  2. Learning to Groove with Inverse Sequence Transformations

  3. Metric-Optimized Example Weights

  4. HOList: An Environment for Machine Learning of Higher Order Logic Theorem Proving

  5. Learning to Clear the Market

  6. Shape Constraints for Set Functions

  7. Self-Attention Generative Adversarial Networks

  8. High-Fidelity Image Generation With Fewer Labels

  9. Learning Optimal Linear Regularizers

  10. DeepMDP: Learning Continuous Latent Space Models for Representation Learning

  11. kernelPSI: a Post-Selection Inference Framework for Nonlinear Variable Selection

  12. Learning from a Learner

  13. Rate Distortion For Model Compression:From Theory To Practice

  14. An Investigation into Neural Net Optimization via Hessian Eigenvalue Density

  15. Graph Matching Networks for Learning the Similarity of Graph Structured Objects

  16. Subspace Robust Wasserstein Distances

  17. Training Well-Generalizing Classifiers for Fairness Metrics and Other Data-Dependent Constraints

  18. The Effect of Network Width on Stochastic Gradient Descent and Generalization: an Empirical Study

  19. A Theory of Regularized Markov Decision Processes

  20. Area Attention

  21. EfficientNet: Rethinking Model Scaling for Convolutional Neural Networks

  22. Static Automatic Batching In TensorFlow

  23. The Evolved Transformer

  24. Policy Certificates: Towards Accountable Reinforcement Learning

  25. Self-similar Epochs: Value in Arrangement

  26. The Value Function Polytope in Reinforcement Learning

  27. Adversarial Examples Are a Natural Consequence of Test Error in Noise

  28. SOLAR: Deep Structured Representations for Model-Based Reinforcement Learning

  29. Garbage In, Reward Out: Bootstrapping Exploration in Multi-Armed Bandits

  30. Imperceptible, Robust, and Targeted Adversarial Examples for Automatic Speech Recognition

  31. Direct Uncertainty Prediction for Medical Second Opinions

  32. A Large-Scale Study on Regularization and Normalization in GANs

  33. Learning a Compressed Sensing Measurement Matrix via Gradient Unrolling

  34. NATTACK: Learning the Distributions of Adversarial Examples for an Improved Black-Box Attack on Deep Neural Networks

  35. Distributed Weighted Matching via Randomized Composable Coresets

  36. Monge blunts Bayes: Hardness Results for Adversarial Training

  37. Generalized Majorization-Minimization

  38. NAS-Bench-101: Towards Reproducible Neural Architecture Search

  39. Variational Russian Roulette for Deep Bayesian Nonparametrics

  40. Surrogate Losses for Online Learning of Stepsizes in Stochastic Non-Convex Optimization

  41. Improved Parallel Algorithms for Density-Based Network Clustering

  42. The Advantages of Multiple Classes for Reducing Overfitting from Test Set Reuse

  43. Submodular Streaming in All Its Glory: Tight Approximation, Minimum Memory and Low Adaptive Complexity

  44. Hiring Under Uncertainty

  45. A Tree-Based Method for Fast Repeated Sampling of Determinantal Point Processes

  46. Statistics and Samples in Distributional Reinforcement Learning

  47. Provably Efficient Maximum Entropy Exploration

  48. Active Learning with Disagreement Graphs

  49. MixHop: Higher-Order Graph Convolutional Architectures via Sparsified Neighborhood Mixing

  50. Understanding the Impact of Entropy on Policy Optimization

  51. Matrix-Free Preconditioning in Online Learning

  52. State-Reification Networks: Improving Generalization by Modeling the Distribution of Hidden Representations

  53. Online Convex Optimization in Adversarial Markov Decision Processes

  54. Bounding User Contributions: A Bias-Variance Trade-off in Differential Privacy

  55. Complementary-Label Learning for Arbitrary Losses and Models

  56. Learning Latent Dynamics for Planning from Pixels

  57. Unifying Orthogonal Monte Carlo Methods

  58. Differentially Private Learning of Geometric Concepts

  59. Online Learning with Sleeping Experts and Feedback Graphs

  60. Adaptive Scale-Invariant Online Algorithms for Learning Linear Models

  61. TensorFuzz: Debugging Neural Networks with Coverage-Guided Fuzzing

  62. Online Control with Adversarial Disturbances

  63. Adversarial Online Learning with Noise

  64. Escaping Saddle Points with Adaptive Gradient Methods

  65. Fairness Risk Measures

  66. DBSCAN++: Towards Fast and Scalable Density Clustering

  67. Learning Linear-Quadratic Regulators Efficiently with only √T Regret

  68. Understanding and correcting pathologies in the training of learned optimizers

  69. Parameter-Efficient Transfer Learning for NLP

  70. Efficient Full-Matrix Adaptive Regularization

  71. Efficient On-Device Models Using Neural Projections

  72. Flexibly Fair Representation Learning by Disentanglement

  73. Recursive Sketches for Modular Deep Learning

  74. POLITEX: Regret Bounds for Policy Iteration Using Expert Prediction

  75. Anytime Online-to-Batch, Optimism and Acceleration

  76. Insertion Transformer: Flexible Sequence Generation via Insertion Operations

  77. Robust Inference via Generative Classifiers for Handling Noisy Labels

  78. A Better k-means++ Algorithm via Local Search

  79. Analyzing and Improving Representations with the Soft Nearest Neighbor Loss

  80. Learning to Generalize from Sparse and Underspecified Rewards

  81. MeanSum: A Neural Model for Unsupervised Multi-Document Abstractive Summarization

  82. CHiVE: Varying Prosody in Speech Synthesis with a Linguistically Driven Dynamic Hierarchical Conditional Variational Network

  83. Similarity of Neural Network Representations Revisited

  84. Online Algorithms for Rent-Or-Buy with Expert Advice

  85. Breaking the Softmax Bottleneck via Learnable Monotonic Pointwise Non-linearities

  86. Non-monotone Submodular Maximization with Nearly Optimal Adaptivity and Query Complexity

  87. Agnostic Federated Learning

  88. Categorical Feature Compression via Submodular Optimization

  89. Cross-Domain 3D Equivariant Image Embeddings

  90. Faster Algorithms for Binary Matrix Factorization

  91. On Variational Bounds of Mutual Information

  92. Guided Evolutionary Strategies: Augmenting Random Search with Surrogate Gradients

  93. Semi-Cyclic Stochastic Gradient Descent

  94. Stochastic Deep Networks


小编将这些文章的题目,剔除掉常用词,如Learning, Model, Deep等,然后可视化出来,结果如下:


Wordshop方面:

Google 参与组织了17个Workshop:

  1. 1st Workshop on Understanding and Improving Generalization in Deep Learning

  2. Climate Change: How Can AI Help?

  3. Generative Modeling and Model-Based Reasoning for Robotics and AI

  4. Human In the Loop Learning (HILL)

  5. ICML 2019 Time Series Workshop

  6. Joint Workshop on On-Device Machine Learning & Compact Deep Neural Network Representations (ODML-CDNNR)

  7. Negative Dependence: Theory and Applications in Machine Learning

  8. Reinforcement Learning for Real Life

  9. Uncertainty and Robustness in Deep Learning

  10. Theoretical Physics for Deep Learning

  11. Workshop on the Security and Privacy of Machine Learning

  12. Exploration in Reinforcement Learning Workshop

  13. ICML Workshop on Imitation, Intent, and Interaction (I3)

  14. Identifying and Understanding Deep Learning Phenomena

  15. Workshop on Multi-Task and Lifelong Reinforcement Learning

  16. Workshop on Self-Supervised Learning

  17. Invertible Neural Networks and Normalizing Flows


小编将这些workshop的题目,剔除掉常用词,如Learning, Model, Deep等,然后可视化出来,结果如下(注意,由于workshop的不多,又去掉了一些常用词和停用词,这个词云表达出来的信息可能有偏差,具体情况,可以自行浏览17个workshop的title):


【Facebook at ICML 2019】

资料来自Facebook官方博客

https://ai.facebook.com/blog/facebook-research-at-icml-2019/


组织方面:

小编暂未找到Facebook在ICML2019会议中的参与组织的情况


投稿方面:

Facebook共中稿22篇

  1. A Fully Differentiable Beam Search Decoder

  2. AdaGrad Stepsizes: Sharp Convergence Over Non-convex Landscapes

  3. Deep Counterfactual Regret Minimization

  4. Discovering Context Effects from Raw Choice Data

  5. ELF OpenGo: An Analysis and Open Reimplementation of AlphaZero

  6. First-Order Adversarial Vulnerability of Neural Networks and Input Dimension

  7. Garbage In, Reward Out: Bootstrapping Exploration in Multi-Armed Bandits

  8. GDPP: Learning Diverse Generations Using Determinental Point Processes

  9. GEOMetrics: Exploiting Geometric Structure for Graph-Encoded Objects

  10. Making Deep Q Learning Methods Robust to Time Discretization

  11. Manifold Mixup: Learning Better Representations by Interpolating Hidden States

  12. Mixture Models for Diverse Machine Translation: Tricks of the Trade

  13. Multi-modal Content Localization in Videos Using Weak Supervision

  14. Non-Monotonic Sequential Text Generation

  15. Probabilistic Neural-Symbolic Models for Interpretable Visual Question Answering

  16. Self-Supervised Exploration via Disagreement

  17. Separating Value Functions Across Time-Scales

  18. Stochastic Gradient Push for Distributed Deep Learning

  19. TarMAC: Targeted Multi-Agent Communication

  20. Trainable Decoding of Sets of Sequences for Neural Sequence Models

  21. Unreproducible Research Is Reproducible

  22. White-box vs. Black-box: Bayes Optimal Strategies for Membership Inference


小编将这些文章的题目,剔除掉常用词,如Learning, Model等,然后可视化出来,结果如下(注意,由于paper不多,又去掉了一些常用词和停用词,这个词云表达出来的信息可能有偏差,具体情况,可以自行浏览22个paper的title):




Workshop方面:

Facebook共参与组织5个Workshop

  1. Generative Modeling and Model-Based Reasoning for Robotics and AI

  2. Identifying and Understanding Deep Learning Phenomena

  3. Multi-Task and Lifelong Reinforcement Learning

  4. Reinforcement Learning for Real Life

  5. Self-Supervised Learning

由于workshop比较少,这里就不可视化了。


本文只是对Google和Facebook在ICML2019上的投稿和参与情况进行简单分析,更进一步的分析,将会在近期发出,敬请期待。


-END-


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