ICML Workshop on Negative Dependence in ML

Event Dates

Jun 14, 2019 - Jun 15, 2019

Location

Long Beach, California

Submission Deadline

Apr 29, 2019

Whether selecting training data, finding an optimal experimental design, exploring in reinforcement learning, or designing recommender systems, selecting a high-quality but diverse set of items is a core challenge for ML.

Any task that requires selecting multiple, non-similar items leverages the concept of negative dependence. Negatively-dependent measures and submodularity are powerful, theoretically-grounded tools that can aid in this selection.

Determinantal point processes are arguably the most popular negatively-dependent measure, with past applications including recommender systems, neural network pruning, ensemble learning, summarization, and kernel reconstruction. However, the spectrum of negatively-dependent measures is much broader.

This workshop will discuss with the ICML audience the rich mathematical tools associated with negative dependence, delving into the key theoretical concepts that underlie negatively-dependent measures and investigating fundamental applications.

SUBMISSIONS

We invite submissions of papers on any topic related to negative dependence in machine learning, including (but not limited to):

– Submodular optimization

– Determinantal point processes

– Volume sampling

– Recommender systems

– Experimental design

– Variance-reduction methods

– Exploitation/exploration trade-offs (RL, Bayesian Optimization, etc.)

– Batched active learning

– Strongly Rayleigh measures

ORGANIZERS

– Mike Gartrell (Criteo AI Lab)

– Jennifer Gillenwater (Google Research NY)

– Alex Kulesza (Google Research NY)

– Zelda Mariet (MIT)