On The Structure of Parametric Tournaments with Application to Ranking from Pairwise Comparisons
–Neural Information Processing Systems
We consider the classical problem of finding the minimum feedback arc set on tournaments (MFAST). The problem is NP-hard in general and we study it for important classes of tournaments that arise naturally in the problem of learning to rank from pairwise comparisons. Specifically, we consider tournaments classes that arise out of parametric preference matrices that can lead to cyclic preference relations. We investigate their structural properties via forbidden sub tournament configurations. Towards this, we introduce Tournament Dimension - a combinatorial parameter that characterizes the size of a forbidden configuration for rank r tournament classes i.e., classes that arise out of pairwise preference matrices which lead to rank r skew-symmetric matrices under a suitable link function.
Neural Information Processing Systems
Mar-19-2025, 14:14:13 GMT