Accepted Papers: Late-Breaking Workshop

  • Self-Referential Meta Learning
    Louis Kirsch, Jürgen Schmidhuber
    PDF Video Teaser
  • A Study of Zero-Cost Proxies for Remote Sensing Image Segmentation
    Chen Wei, Tai Kai Guo, Ping Yi Tang, Yao Jun Ge, Jimin Liang
    PDF Video Teaser
  • HPO: We won’t get fooled again
    René Traoré, Andrés Camero, Xiao Xiang Zhu
    PDF Video Teaser
  • Automated Architecture Search for Brain-inspired Hyperdimensional Computing
    Junhuan Yang, Yi Sheng, Sizhe Zhang, Ruixuan Wang, Kenneth Foreman, Mikell Paige, Dayane Reis, Xun Jiao, Weiwen Jiang, Lei Yang
    PDF Video Teaser *
  • Lightweight Neural Architecture Search with Parameter Remapping and Knowledge Distillation
    Hayeon Lee, Sohyun An, Minseon Kim, Sung Ju Hwang
    PDF Video Teaser *
  • Evolved Optimizer for Vision
    Xiangning Chen, Chen Liang, Da Huang, Esteban Real, Yao Liu, Kaiyuan Wang, Cho-Jui Hsieh, Yifeng Lu, Quoc V Le
    PDF Video Teaser
  • Speeding up NAS with Adaptive Subset Selection
    Vishak Prasad C, Colin White, Paarth Jain, Sibasis Nayak, Rishabh K Iyer, Ganesh Ramakrishnan
    PDF Video Teaser *
  • Bayesian AutoML for Databases via the InferenceQL Probabilistic Programming System
    Ulrich Schaechtle, Cameron Freer, Zane Shelby, Feras Saad, Vikash Mansinghka
    PDF Video Teaser
  • N-1 Experts: Unsupervised Anomaly Detection Model Selection
    Constantin Le Clei, Yasha Pushak, Fatjon Zogaj, Moein Owhadi Kareshk, Zahra Zohrevand, Robert Harlow, Hesam Fathi Moghadam, Sungpack Hong, Hassan Chafi
    PDF Video Teaser
  • Getting the Best Bang For Your Buck: Choosing What to Evaluate for Faster Bayesian Optimization
    Md Shahriar Iqbal, Jianhai Su, Lars Kotthoff, Pooyan Jamshidi
    PDF Video Teaser *
  • Simple and Effective Gradient-Based Tuning of Sequence-to-Sequence Models
    Jared Lichtarge, Chris Alberti, Shankar Kumar
    PDF Video Teaser *
  • Distribution-Based Invariant Deep Networks for Learning Meta-Features
    Gwendoline de Bie, Herilalaina Rakotoarison, Gabriel Peyré, Michele Sebag
    PDF Video Teaser
  • DHA: End-to-End Joint Optimization of Data Augmentation Policy, Hyper-parameter and Architecture
    Kaichen Zhou, Lanqing HONG, Shoukang Hu, Fengwei Zhou, Binxin Ru, Jiashi Feng, Zhenguo Li
    PDF Video Teaser
  • Assembled-OpenML: Creating Efficient Benchmarks for Ensembles in AutoML with OpenML
    Lennart Oswald Purucker, Joeran Beel
    PDF Video Teaser *
  • Improved Max-value Entropy Search for Multi-objective Bayesian Optimization with Constraints
    Daniel Fernández-Sánchez, Eduardo C. Garrido-Merchán, Daniel Hernández-Lobato
    PDF Video Teaser *
  • Dynamic and Efficient Gray-Box Hyperparameter Optimization for Deep Learning
    Martin Wistuba, Arlind Kadra, Josif Grabocka
    PDF Video Teaser *
  • LiteTransformerSearch: Training-free On-device Search for Efficient Autoregressive Language Models
    Mojan Javaheripi, Shital Shah, Subhabrata Mukherjee, Tomasz Lukasz Religa, Caio Cesar Teodoro Mendes, Gustavo Henrique de Rosa, Sebastien Bubeck, Farinaz Koushanfar, Debadeepta Dey
    PDF Video Teaser *
  • On the Generalizability and Predictability of Recommender Systems
    John P Dickerson, Sujay Khandagale, Duncan C. McElfresh, Jonathan Valverde, Colin White
    PDF Video Teaser *
  • Adaptive Gradient Methods with Local Guarantees
    Zhou Lu, Wenhan Xia, Sanjeev Arora, Elad Hazan
    PDF Video Teaser
  • Adversarial Projections to Tackle Support-Query Shifts in Few-Shot Meta-Learning
    Aroof Aimen, Bharat Ladrecha, Narayanan Chatapuram Krishnan
    PDF Video Teaser

  • GSparsity: Unifying Network Pruning and Neural Architecture Search by Group Sparsity
    Avraam Chatzimichailidis, Arber Zela, Janis Keuper, Yang Yang
    PDF Video Teaser

  • Graph Embedding for Neural Architecture Search with Input-Output Information
    Gabriela Suchopárová, Roman Neruda
    PDF Video Teaser *

  • How to Learn and Represent Abstractions: An Investigation using Symbolic Alchemy
    Badr AlKhamissi, Akshay Srinivasan, Zeb Kurth-Nelson, Samuel Ritter
    PDF Video Teaser

  • A Hardware-Aware Framework for Accelerating Neural Architecture Search Across Modalities
    Daniel Cummings, Anthony Sarah, Sharath Nittur Sridhar, Maciej Szankin, Juan Pablo Munoz, Sairam Sundaresan
    PDF Video Teaser *

  • Searching Efficient Dynamic Graph CNN for Point Cloud Processing
    Panyue Chen, Rui Wang, Ping Zhao, Guanming Liu, Zhihua Wei
    PDF Video Teaser

  • Regularized Meta-Learning for Neural Architecture Search
    Rob van Gastel, Joaquin Vanschoren
    PDF Video Teaser *

  • PASHA: Efficient HPO with Progressive Resource Allocation
    Ondrej Bohdal, Lukas Balles, Beyza Ermis, Cedric Archambeau, Giovanni Zappella
    PDF Video Teaser *

  • Towards Automated Distillation: A Systematic Study of Knowledge Distillation in Natural Language Processing
    Haoyu He, Xingjian Shi, Jonas Mueller, Sheng Zha, Mu Li, George Karypis
    PDF Video Teaser

  • ALBench: A Framework for Evaluating Active Learning in Object Detection
    Zhanpeng Feng, Shiliang Zhang, Rinyoichi Takezoe, Wenze Hu, Manmohan Chandraker, Li-jia Li, Vijay K. Narayanan, Xiaoyu Wang
    PDF Video Teaser

  • Self-Optimizing Random Forests
    Felix Mohr
    PDF Video Teaser *