“…One of the outstanding features of Gaussian Process (GP) prediction, in particular, is its usability to design Bayesian Optimization (BO) algorithms (Moćkus et al, 1978;Jones et al, 1998;Frazier, 2018) and further sequential design strategies (Risk and Ludkovski, 2018;Binois et al, 2019;Bect et al, 2019). While in most usual BO and related contributions the focus is on continuous problems with vector-valued inputs, there has been a growing interest recently for GP-related modelling and BO in the presence of discrete and mixed discrete-continuous inputs (Kondor and Lafferty, 2002;Gramacy and Taddy, 2010;Fortuin et al, 2018;Roustant et al, 2018;Garrido-Merchan and Hernández-Lobato, 2018;Ru et al, 2019;Griffiths and Hernández-Lobato, 2019). Here we focus specifically on kernels dedicated to finite set-valued inputs and their application to GP modelling and BO, notably (but not only) in combinatorial optimization.…”