liminate
Maxing and Ranking with Few Assumptions
PAC maximum selection (maxing) and ranking of n elements via random pairwise comparisons have diverse applications and have been studied under many models and assumptions. With just one simple natural assumption: strong stochastic transitivity, we show that maxing can be performed with linearly many comparisons yet ranking requires quadratically many. With no assumptions at all, we show that for the Borda-score metric, maximum selection can be performed with linearly many comparisons and ranking can be performed with O(n log n) comparisons.
A Structural Approach to Reasoning with Quantified Boolean Formulas
Pulina, Luca (Università di Genova) | Tacchella, Armando (Università di Genova)
In this paper we approach the problem of reasoning with quantified Boolean formulas (QBFs) by combining search and resolution, and by switching between them according to structural properties of QBFs. We provide empirical evidence that QBFs which cannot be solved by search or resolution alone, can be solved by combining them, and that our approach makes a proof-of-concept implementation competitive with current QBF solvers.
- North America > United States (0.04)
- Europe > Italy (0.04)
- Asia (0.04)