English

Submodular meets Structured: Finding Diverse Subsets in Exponentially-Large Structured Item Sets

Machine Learning 2014-11-10 v1 Artificial Intelligence Computer Vision and Pattern Recognition Information Retrieval Machine Learning

Abstract

To cope with the high level of ambiguity faced in domains such as Computer Vision or Natural Language processing, robust prediction methods often search for a diverse set of high-quality candidate solutions or proposals. In structured prediction problems, this becomes a daunting task, as the solution space (image labelings, sentence parses, etc.) is exponentially large. We study greedy algorithms for finding a diverse subset of solutions in structured-output spaces by drawing new connections between submodular functions over combinatorial item sets and High-Order Potentials (HOPs) studied for graphical models. Specifically, we show via examples that when marginal gains of submodular diversity functions allow structured representations, this enables efficient (sub-linear time) approximate maximization by reducing the greedy augmentation step to inference in a factor graph with appropriately constructed HOPs. We discuss benefits, tradeoffs, and show that our constructions lead to significantly better proposals.

Keywords

Cite

@article{arxiv.1411.1752,
  title  = {Submodular meets Structured: Finding Diverse Subsets in Exponentially-Large Structured Item Sets},
  author = {Adarsh Prasad and Stefanie Jegelka and Dhruv Batra},
  journal= {arXiv preprint arXiv:1411.1752},
  year   = {2014}
}
R2 v1 2026-06-22T06:50:34.313Z