tags

SMC$^{2}$

Dec 2024

Sequential Rank and Preference Learning with the Bayesian Mallows Model

This paper considers rank and preference modeling for the case in which data arrive sequentially, rather than in a batch. The goal is to compute the posterior distribution incrementally in time, so that it can be quickly updated when new data arrives. To this end, we develop a sequential Monte Carlo algorithm for the Bayesian Mallows model. Published in Bayesian Analysis.

  • Mallows mixtures
  • partial rankings
  • particle filter
  • preference learning
  • SMC$^{2}$