Using the random-cluster representation of the q-state Potts models we
consider the pooling of data from cluster-update Monte Carlo simulations for
different thermal couplings K and number of states per spin q. Proper
combination of histograms allows for the evaluation of thermal averages in a
broad range of K and q values, including non-integer values of q. Due to
restrictions in the sampling process proper normalization of the combined
histogram data is non-trivial. We discuss the different possibilities and
analyze their respective ranges of applicability.Comment: 12 pages, 9 figures, RevTeX