English

Computing optimal k-regret minimizing sets with top-k depth contours

Databases 2012-07-27 v1 Computational Geometry

Abstract

Regret minimizing sets are a very recent approach to representing a dataset D with a small subset S of representative tuples. The set S is chosen such that executing any top-1 query on S rather than D is minimally perceptible to any user. To discover an optimal regret minimizing set of a predetermined cardinality is conjectured to be a hard problem. In this paper, we generalize the problem to that of finding an optimal k$regret minimizing set, wherein the difference is computed over top-k queries, rather than top-1 queries. We adapt known geometric ideas of top-k depth contours and the reverse top-k problem. We show that the depth contours themselves offer a means of comparing the optimality of regret minimizing sets using L2 distance. We design an O(cn^2) plane sweep algorithm for two dimensions to compute an optimal regret minimizing set of cardinality c. For higher dimensions, we introduce a greedy algorithm that progresses towards increasingly optimal solutions by exploiting the transitivity of L2 distance.

Keywords

Cite

@article{arxiv.1207.6329,
  title  = {Computing optimal k-regret minimizing sets with top-k depth contours},
  author = {Sean Chester and Alex Thomo and S. Venkatesh and Sue Whitesides},
  journal= {arXiv preprint arXiv:1207.6329},
  year   = {2012}
}

Comments

10 pages, 9 figures

R2 v1 2026-06-21T21:42:07.049Z