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Workshop
Sat Dec 12 04:45 AM -- 02:45 PM (PST)
I Can’t Believe It’s Not Better! Bridging the gap between theory and empiricism in probabilistic machine learning
Jessica Forde · Francisco Ruiz · Melanie Fernandez Pradier · Aaron Schein · Finale Doshi-Velez · Isabel Valera · David Blei · Hanna Wallach





Workshop Home Page

We’ve all been there. A creative spark leads to a beautiful idea. We love the idea, we nurture it, and name it. The idea is elegant: all who hear it fawn over it. The idea is justified: all of the literature we have read supports it. But, lo and behold: once we sit down to implement the idea, it doesn’t work. We check our code for software bugs. We rederive our derivations. We try again and still, it doesn’t work. We Can’t Believe It’s Not Better [1].

In this workshop, we will encourage probabilistic machine learning researchers who Can’t Believe It’s Not Better to share their beautiful idea, tell us why it should work, and hypothesize why it does not in practice. We also welcome work that highlights pathologies or unexpected behaviors in well-established practices. This workshop will stress the quality and thoroughness of the scientific procedure, promoting transparency, deeper understanding, and more principled science.

Focusing on the probabilistic machine learning community will facilitate this endeavor, not only by gathering experts that speak the same language, but also by exploiting the modularity of probabilistic framework. Probabilistic machine learning separates modeling assumptions, inference, and model checking into distinct phases [2]; this facilitates criticism when the final outcome does not meet prior expectations. We aim to create an open-minded and diverse space for researchers to share unexpected or negative results and help one another improve their ideas.

Intro (Welcome Intro)
Invited Talk: Max Welling - The LIAR (Learning with Interval Arithmetic Regularization) is Dead (Talk)
Invited Talk: Danielle Belgrave - Machine Learning for Personalised Healthcare: Why is it not better? (Talk)
Invited Talk: Mike Hughes - The Case for Prediction Constrained Training (Talk)
Margot Selosse---A bumpy journey: exploring deep Gaussian mixture models (Spotlight Talk)
Diana Cai---Power posteriors do not reliably learn the number of components in a finite mixture (Spotlight Talk)
W Ronny Huang---Understanding Generalization through Visualizations (Spotlight Talk)
Udari Madhushani---It Doesn’t Get Better and Here’s Why: A Fundamental Drawback in Natural Extensions of UCB to Multi-agent Bandits (Spotlight Talk)
Erik Jones---Selective Classification Can Magnify Disparities Across Groups (Spotlight Talk)
Yannick Rudolph---Graph Conditional Variational Models: Too Complex for Multiagent Trajectories? (Spotlight Talk)
Coffee Break (Gather.town available: https://bit.ly/3gxkLA7) (Coffee Break)
Poster Session in gather.town: https://bit.ly/3gxkLA7 (Poster Session)
Charline Le Lan---Perfect density models cannot guarantee anomaly detection (Contributed Talk)
Fan Bao---Variational (Gradient) Estimate of the Score Function in Energy-based Latent Variable Models (Contributed Talk)
Emilio Jorge---Inferential Induction: A Novel Framework for Bayesian Reinforcement Learning (Contributed Talk)
Lunch Break (Gather.town available: https://bit.ly/3gxkLA7) (Lunch)
Invited Talk: Andrew Gelman - It Doesn’t Work, But The Alternative Is Even Worse: Living With Approximate Computation (Talk)
Invited Talk: Roger Grosse - Why Isn’t Everyone Using Second-Order Optimization? (Talk)
Invited Talk: Weiwei Pan - What are Useful Uncertainties for Deep Learning and How Do We Get Them? (Talk)
Vincent Fortuin---Bayesian Neural Network Priors Revisited (Spotlight Talk)
Ziyu Wang---Further Analysis of Outlier Detection with Deep Generative Models (Spotlight Talk)
Siwen Yan---The Curious Case of Stacking Boosted Relational Dependency Networks (Spotlight Talk)
Maurice Frank - Problems using deep generative models for probabilistic audio source separation (Spotlight Talk)
Ramiro Camino---Oversampling Tabular Data with Deep Generative Models: Is it worth the effort? (Spotlight Talk)
Ângelo Gregório Lovatto---Decision-Aware Model Learning for Actor-Critic Methods: When Theory Does Not Meet Practice (Spotlight Talk)
Coffee Break (Gather.town available: https://bit.ly/3gxkLA7) (Break)
Tin D. Nguyen---Independent versus truncated finite approximations for Bayesian nonparametric inference (Contributed Talk)
Ricky T. Q. Chen---Self-Tuning Stochastic Optimization with Curvature-Aware Gradient Filtering (Contributed Talk)
Elliott Gordon-Rodriguez---Uses and Abuses of the Cross-Entropy Loss: Case Studies in Modern Deep Learning (Contributed Talk)
Poster Session (in gather.town): https://bit.ly/3gxkLA7 (Poster Session (in gather.town))
Breakout Discussions (in gather.town): https://bit.ly/3gxkLA7
Panel & Closing (Panel)