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arxiv: 1202.0264 · v4 · pith:H6E5QKBHnew · submitted 2012-02-01 · 🧮 math.FA

Faa di Bruno's formula for Gateaux differentials and interacting stochastic population processes

classification 🧮 math.FA
keywords processesbrunocalculusderivedifferentialsformulagateauxinteracting
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The problem of estimating interacting systems of multiple objects is important to a number of different fields of mathematics, physics, and engineering. Drawing from a range of disciplines, including statistical physics, variational calculus, point process theory, and statistical sensor fusion, we develop a unified probabilistic framework for modelling systems of this nature. In order to do this, we derive a new result in variational calculus, Faa di Bruno's formula for Gateaux differentials. Using this result, we derive the Chapman-Kolmogorov equation and Bayes' rule for stochastic population processes with interactions and hierarchies. We illustrate the general approach through case studies in multi-target tracking, branching processes and renormalization.

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