The Dirichlet compound multinomial (DCM) distribution has recently been shown to be a good model for documents because it
captures the phenomenon of word burstiness, unlike standard models such as the multinomial distribution. This paper investigates
the DCM Fisher kernel, a function for comparing documents derived from the DCM. We show that the DCM Fisher kernel has components
that are similar to the term frequency (TF) and inverse document frequency (IDF) factors of the standard TF-IDF method for
representing documents. Experiments show that the DCM Fisher kernel performs better than alternative kernels for nearest-neighbor
document classification, but that the TF-IDF representation still performs best.