New In ML at NeurIPS 2023

NewInML will be held at NeurIPS, Dec 11th 2023.
We are updating the website frequently. Stay tuned! If you have any question, please contact us by: contactnewinml@gmail.com

Workshop Summary

With the booming research in artificial intelligence, the community is welcoming every day many newcomers. A lack of mentoring and inclusive environment becomes gradually significant. Our goal is to welcome new researchers in the community and provide them with some guidance to contribute to Machine Learning research fully and effectively.

Invited Speakers

Hugo Larochelle

Adjunct Professor, Université de Montréal & Google & Canada CIFAR AI Chair

Been Kim

Senior Staff Research Scientist at Google DeepMind

Milind Tambe

Gordon McKay Professor of Computer Science & Director of CRCS - Harvard University. Principal Scientist & Director, AI for Social Good Google Research

Devi Parikh

Senior Director of Generative AI, Meta & Associate Professor at Georgia Tech

Surbhi Goel

Magerman Term Assistant Professor at University of Pennsylvania

Alexander Rodríguez

Assistant Professor at University of Michigan

David Abel

Senior Research Scientist at Google DeepMind

Brian Liou

Rora

Program Schedule

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09:00am – 10:00am

Room 208 - 210

Perspectives on knowledge acquisition and mobilization with neural networks

Hugo Larochelle
Abstract: In this talk, I’ll share my thoughts on the state of progress in designing AI systems with neural networks. I’ll frame a perspective that views our success as relying on two separate and equally critical steps, that I refer to as neural knowledge acquisition and neural knowledge mobilization. Then I’ll describe my own research journey from that point of view using various examples, discuss lessons learned and highlight what I think are the opportunities and challenges ahead.
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10:00am – 10:15am

Break

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10:15am – 11:15am

Room 208 - 210

Winging it: the secret sauce in the face of chaos

Been Kim
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11:15am – 11:30am

Break

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11:30am – 12:30pm

Room 208 - 210

Slow Science (Panel Discussion)

Panelists: Alexander Rodriguez, Surbhi Goel, David Abel, Devi Parikh
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12:30pm – 1:30pm

Lunch Break

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1:30pm – 2:30pm

Room 208 - 210

Integrating ML+Optimization: Driving Social Impact in public health and conservation

Milind Tambe
Abstract: For more than 15 years, my team and I have been focused on AI for social impact, deploying end-to-end systems in areas of public health, conservation and public safety. In this talk, I will highlight the results from our deployments for social impact in public health and conservation, as well as required innovations in integrating machine learning and optimization. First in terms of public health, I will present recent results from our work in India with the world’s two largest mobile health programs for maternal and child care that have served millions of beneficiaries. Additionally, I will highlight results from earlier projects on HIV prevention and others. In terms of conservation, I will highlight efforts for protecting endangered wildlife in national parks around the globe. To address challenges of ML+optimizaton common to all of these applications, we have advanced the state of the art in decision focused learning, restless multi-armed bandits, influence maximization in social networks and green security games. In pushing this research agenda, our ultimate goal is to facilitate local communities and non-profits to directly benefit from advances in AI tools and techniques.
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2:30pm – 3:30pm

Room 208 - 210

The Secret to Advancing Your AI Career in the 2024 Job Market

Brian Liou
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3:30pm – 4:30pm

Room 208 - 210

Poster Session

Call for Papers

Unlike in other ML conferences and workshops, our goal is to help you get familiar with the paper submission and review cycle. We are accepting papers in two tracks:

  • Reproducibility track

    In this track, you will investigate the reproducibility of your favourite recently published conference papers and submit a brief report on your findings. Your goal is to test the empirical claims made in the paper, robustness of the proposed method, sensitivity to the hyperparameters, check the correctness of the proofs, or fine-tune the baselines to validate the results. You may use the code provided by the authors of the original paper to investigate.

  • Extended abstracts

    The goal of this track is to provide you with appropriate guidance in order to develop you idea into a full conference paper in future. You will write a report on your primary, preliminary-stage research briefly explaining the idea, relevant literature, and observations from preliminary experiments if you have any.

In both tracks you will receive feedback and guidance from one senior reviewer to help you improve your draft in order to publish the idea as a conference paper eventually. Participants may also ask for specific advice on writing, experiment design, visualizations among others. All submissions go through the OpenReview system and follow NeurIPS 2023 instructions (see below). The submissions are private: it is only visible to the organizers and the reviewers of your paper. The authors' names and reviewers' names are visible to each other during the review process to promote friendly discussion.

You can download the style and latex files to prepare your submission from here - New in ML workshop - NeurIPS 2023.zip. Papers may only be up to three pages long, including figures, acknowledgments and references. Papers that exceed the page limit will not be reviewed, or in any other way considered for presentation at the workshop.

We accept papers from all topics in machine learning including but not limited to:

  • Applications (e.g., vision, language, speech and audio);
  • Deep learning (e.g., architectures, generative models, optimization for deep networks);
  • Evaluation (e.g., methodology, meta studies, replicability and validity);
  • General machine learning (supervised, unsupervised, online, active, etc.);
  • Infrastructure (e.g., libraries, improved implementation and scalability, distributed solutions);
  • Machine learning for sciences (e.g. climate, health, life sciences, physics, social sciences);
  • Neuroscience and cognitive science (e.g., neural coding, brain-computer interfaces);
  • Optimization (e.g., convex and non-convex, stochastic, robust);
  • Probabilistic methods (e.g., variational inference, causal inference, Gaussian processes);
  • Reinforcement learning (e.g., decision and control, planning, hierarchical RL, robotics);
  • Social and economic aspects of machine learning (e.g., fairness, interpretability, human-AI interaction, privacy, safety, strategic behavior);
  • Theory (e.g., control theory, learning theory, algorithmic game theory).

Call for Reviewer/Mentor: If you are interested in being a reviewer/mentor for our workshop, please fill this form.

We welcome anyone interested to be a reviewer. Your role will be to provide constructive feedback to the assigned submission and more specifically to engage with the author(s) to help them improve their submission (clarity, writing, technical quality, experimental design). The submissions come in two tracks: (1) Reproducibility where the authors reproduce results from a recent paper, and your goal is to evaluate the quality of ablation studies performed; (2) Extended abstract where authors submit a long form of abstract, and your goal is to provide a plan to the authors that will help them convert their abstract into a full paper for the next NeurIPS conference. Reviewer application form: If you are interested in being an area chair, please apply with this form before Sept. 24.



NeurIPS 2023 Openreview Instructions

We are using OpenReview to manage submissions. The reviews and author responses will not be public and we will not be soliciting comments from the general public during the reviewing process. Anyone who plans to submit a paper as an author or a co-author will need to create (or update) their OpenReview profile by the full paper submission deadline. Your OpenReview profile can be edited by logging in and clicking on your name in openreview. The OpenReview profiles must be up to date, with all publications by the authors, and their current affiliations. The easiest way to import publications is through DBLP but it is not required, see FAQ. Submissions without updated OpenReview profiles will be desk rejected. The information entered in the profile is critical for ensuring that conflicts of interest and reviewer matching are handled properly.



Important Dates

  • August 21, 2023: Abtract submission open on OpenReview.
  • September 29, 2023 October 5, 2023: AOE Abtract submission deadline.
  • October 8, 2023: Discussion with reviewer starts.
  • October 20, 2023: Notification of acceptance (poster at the workshop).
  • December 11, 2023: New in ML workshop day.

Organizers

ZhenXu

Tsinghua University

Mélisande Teng

Université de Montréal / Mila

Shiyu Huang

4Paradigm Inc.

Zhimeng Jiang

Texas A&M University

Nishanth Anand

McGill University Mila

Subhrajyoti Dasgupta

Université de Montréal / Mila

Rohan Sukumaran

Université de Montréal / Mila

Reyhane Askari

FAIR / Mila / Université de Montréal

Benno Krojer

McGill University Mila

Diganta Misra

Mila / CMU / Landskape AI

Ching Lam Choi

Chinese University of Hong Kong / Mila

Beheshteh Tolouei Rakhshan

Université de Montréal / Mila

Sangnie Bhardwaj

Mila / Google Research