Timezone: »
Machine learning research has benefited considerably from the adoption of standardised public benchmarks. While the importance of these benchmarks is undisputed, we argue against the current incentive system and its heavy reliance upon performance as a proxy for scientific progress. The status quo incentivises researchers to “beat the state of the art”, potentially at the expense of deep scientific understanding and rigorous experimental design. Since typically only positive results are rewarded, the negative results inevitably encountered during research are often omitted, allowing many other groups to unknowingly and wastefully repeat these negative findings.
Pre-registration is a publishing and reviewing model that aims to address these issues by changing the incentive system. A pre-registered paper is a regular paper that is submitted for peer-review without any experimental results, describing instead an experimental protocol to be followed after the paper is accepted. This implies that it is important for the authors to make compelling arguments from theory or past published evidence. As for reviewers, they must assess these arguments together with the quality of the experimental design, rather than comparing numeric results. While pre-registration has been highly adopted in fields such as medicine and psychology, there is little such experience inthe machine learning community. In this workshop, we propose to conduct a full pre-registration review-cycle for machine learning. Our proposal follows an initial small-scale trial of pre-registration in computer vision (Henriques et al., 2019) and builds on a successful pilot study in pre-registration at NeurIPS 2020 (Bertinetto et al., 2020). We have already received a number of requests to repeat the workshop, indicating strong community interest.
Mon 4:00 a.m. - 4:10 a.m.
|
Opening remarks
(
Talk
)
SlidesLive Video » A short introduction to the pre-registration format, its motivation, and a summary of positive/negative results from previous years' papers. |
🔗 |
Mon 4:10 a.m. - 4:40 a.m.
|
Invited Talk - Sarahanne Field
(
Talk
)
SlidesLive Video » |
Sarahanne Field 🔗 |
Mon 4:40 a.m. - 5:00 a.m.
|
PCA Retargeting: Encoding Linear Shape Models as Convolutional Mesh Autoencoders - Eimear O'Sullivan
(
Talk
)
SlidesLive Video » |
🔗 |
Mon 5:00 a.m. - 5:20 a.m.
|
Spotlights 1 (5 x 3 minutes)
(
Short videos
)
SlidesLive Video » |
🔗 |
Mon 5:20 a.m. - 5:40 a.m.
|
Unsupervised Resource Allocation with Graph Neural Networks - Miles Cranmer
(
Talk
)
SlidesLive Video » |
🔗 |
Mon 5:40 a.m. - 6:10 a.m.
|
Break
|
🔗 |
Mon 6:10 a.m. - 6:40 a.m.
|
Invited Talk - Dima Damen
(
Talk
)
SlidesLive Video » |
Dima Damen 🔗 |
Mon 6:40 a.m. - 7:10 a.m.
|
Invited Talk - Hugo Larochelle
(
Talk
)
SlidesLive Video » |
Hugo Larochelle 🔗 |
Mon 7:10 a.m. - 7:30 a.m.
|
Spotlights 2 (5 x 3 minutes)
(
Short videos
)
SlidesLive Video » |
🔗 |
Mon 7:30 a.m. - 8:30 a.m.
|
Poster Session ( Virtual posters ) link » | 🔗 |
Mon 8:30 a.m. - 9:00 a.m.
|
Break
|
🔗 |
Mon 9:00 a.m. - 9:30 a.m.
|
Invited Talk - Paul Smaldino
(
Talk
)
SlidesLive Video » |
Paul Smaldino 🔗 |
Mon 9:30 a.m. - 9:50 a.m.
|
Confronting Domain Shift in Trained Neural Networks - Carianne Martinez
(
Talk
)
SlidesLive Video » |
🔗 |
Mon 9:50 a.m. - 10:05 a.m.
|
Discussion Panel - 2020 authors' experience
(
Discussion Panel
)
SlidesLive Video » |
🔗 |
Mon 10:05 a.m. - 11:05 a.m.
|
Open Discussion
|
🔗 |
Mon 11:05 a.m. - 11:10 a.m.
|
Closing Remarks
SlidesLive Video » |
🔗 |
Author Information
Samuel Albanie (Oxford University)
João Henriques (University of Oxford)
Luca Bertinetto (FiveAI Ltd.)
Alex Hernandez-Garcia (Mila - Quebec AI Institute)
Hazel Doughty (University of Amsterdam)
Gul Varol (Ecole des Ponts ParisTech)
More from the Same Authors
-
2022 Poster: RLIP: Relational Language-Image Pre-training for Human-Object Interaction Detection »
Hangjie Yuan · Jianwen Jiang · Samuel Albanie · Tao Feng · Ziyuan Huang · Dong Ni · Mingqian Tang -
2022 : Physics-Constrained Deep Learning for Climate Downscaling »
Paula Harder · Qidong Yang · Venkatesh Ramesh · Prasanna Sattigeri · Alex Hernandez-Garcia · Campbell Watson · Daniela Szwarcman · David Rolnick -
2022 : Generating physically-consistent high-resolution climate data with hard-constrained neural networks »
Paula Harder · Qidong Yang · Venkatesh Ramesh · Prasanna Sattigeri · Alex Hernandez-Garcia · Campbell Watson · Daniela Szwarcman · David Rolnick -
2022 : Multi-Objective GFlowNets »
Moksh Jain · Sharath Chandra Raparthy · Alex Hernandez-Garcia · Jarrid Rector-Brooks · Yoshua Bengio · Santiago Miret · Emmanuel Bengio -
2022 : PhAST: Physics-Aware, Scalable, and Task-specific GNNs for accelerated catalyst design »
ALEXANDRE DUVAL · Victor Schmidt · Alex Hernandez-Garcia · Santiago Miret · Yoshua Bengio · David Rolnick -
2023 Poster: Contrastive Lift: 3D Object Instance Segmentation by Slow-Fast Contrastive Fusion »
Yash Bhalgat · Iro Laina · João Henriques · Andrea Vedaldi · Andrew Zisserman -
2023 Poster: Extracting Reward Functions from Diffusion Models »
Felipe Nuti · Tim Franzmeyer · João Henriques -
2022 Workshop: Vision Transformers: Theory and applications »
Fahad Shahbaz Khan · Gul Varol · Salman Khan · Ping Luo · Rao Anwer · Ashish Vaswani · Hisham Cholakkal · Niki Parmar · Joost van de Weijer · Mubarak Shah -
2022 Spotlight: RLIP: Relational Language-Image Pre-training for Human-Object Interaction Detection »
Hangjie Yuan · Jianwen Jiang · Samuel Albanie · Tao Feng · Ziyuan Huang · Dong Ni · Mingqian Tang -
2022 Workshop: Self-Supervised Learning: Theory and Practice »
Ishan Misra · Pengtao Xie · Gul Varol · Yale Song · Yuki Asano · Xiaolong Wang · Pauline Luc -
2022 Poster: ReCo: Retrieve and Co-segment for Zero-shot Transfer »
Gyungin Shin · Weidi Xie · Samuel Albanie -
2022 Poster: Learn what matters: cross-domain imitation learning with task-relevant embeddings »
Tim Franzmeyer · Philip Torr · João Henriques -
2021 Poster: Keeping Your Eye on the Ball: Trajectory Attention in Video Transformers »
Mandela Patrick · Dylan Campbell · Yuki Asano · Ishan Misra · Florian Metze · Christoph Feichtenhofer · Andrea Vedaldi · João Henriques -
2021 Oral: Keeping Your Eye on the Ball: Trajectory Attention in Video Transformers »
Mandela Patrick · Dylan Campbell · Yuki Asano · Ishan Misra · Florian Metze · Christoph Feichtenhofer · Andrea Vedaldi · João Henriques -
2020 Workshop: The pre-registration experiment: an alternative publication model for machine learning research »
Luca Bertinetto · João Henriques · Samuel Albanie · Michela Paganini · Gul Varol -
2020 : Opening Remarks »
Luca Bertinetto -
2018 Poster: Gather-Excite: Exploiting Feature Context in Convolutional Neural Networks »
Jie Hu · Li Shen · Samuel Albanie · Gang Sun · Andrea Vedaldi -
2016 Poster: Learning feed-forward one-shot learners »
Luca Bertinetto · João Henriques · Jack Valmadre · Philip Torr · Andrea Vedaldi -
2014 Poster: Fast Training of Pose Detectors in the Fourier Domain »
João Henriques · Pedro Martins · Rui F Caseiro · Jorge Batista