Title: Deep Submodular Functions

Advisors: Jeff Bilmes and Pedro Domingos

Abstract: We propose and study a new class of submodular functions called deep submodular functions (DSFs). We define DSFs and situate them within the broader context of classes of submodular functions in relationship both to various matroid ranks and sums of concave composed with modular functions (SCMs). Notably, we find that DSFs constitute a strictly broader class than SCMs, thus motivating their use, but that they do not comprise all submodular functions. Interestingly, some DSFs can be seen as special cases of certain deep neural networks (DNNs), hence the name. Finally, we show how to learn DSFs in a max-margin framework, and successfully apply this to both synthetic and real-world data instances.

Place: 
CSE 203
When: 
Friday, August 26, 2016 - 14:00 to Friday, April 26, 2024 - 06:39