This paper introduces a probability density estimator based on Green's
function identities. A density model is constructed under the sole assumption
that the probability density is differentiable. The method is implemented as a
binary likelihood estimator for classification purposes, so issues such as
mis-modeling and overtraining are also discussed. The identity behind the
density estimator can be interpreted as a real-valued, non-scalar kernel method
which is able to reconstruct differentiable density functions.Comment: 7 pages, 4 figures. JPCS accepted it as a proceedings to the ACAT
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