Ofir, RonLiu, JiMorse, A StephenAnderson, Brian D. O.2026-02-042026-02-04dblp:conf/cdc/OfirLMA25ORCID:/0000-0002-1493-4774/work/204381151https://hdl.handle.net/1885/733805258Consensus is a well-studied problem in distributed sensing, computation and control, yet deriving useful and easily computable bounds on the rate of convergence to consensus remains a challenge. This paper discusses the use of seminorms for this goal. A previously suggested family of seminorms is revisited, and an error made in their original presentation is corrected, where it was claimed that the a certain seminorm is equal to the well-known coefficient of ergodicity. Next, a wider family of seminorms is introduced, and it is shown that contraction in any of these seminorms guarantees convergence at an exponential rate of infinite products of matrices, generalizing known results on stochastic matrices to the class of matrices whose row sums are all equal one. Finally, it is shown that such seminorms cannot be used to bound the rate of convergence of classes larger than the well-known class of scrambling matrices.The work of the first three authors was supported in part by the Air Force Office of Scientific Research, under award numbers FA9550-23-1-0175 and FA9550-25-1-0223. The work of R. Ofir was partially supported by the Viterbi Fellowship, Technion. The work of J. Liu was supported in part by the National Science Foundation under grant 2230101.6en© 2025 IEEEConsensus Seminorms and their Applications.202510.1109/CDC57313.2025.11312882