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Throttling Poisson Processes

2010-12-01NeurIPS 2010Unverified0· sign in to hype

Uwe Dick, Peter Haider, Thomas Vanck, Michael Brückner, Tobias Scheffer

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Abstract

We study a setting in which Poisson processes generate sequences of decision-making events. The optimization goal is allowed to depend on the rate of decision outcomes; the rate may depend on a potentially long backlog of events and decisions. We model the problem as a Poisson process with a throttling policy that enforces a data-dependent rate limit and reduce the learning problem to a convex optimization problem that can be solved efficiently. This problem setting matches applications in which damage caused by an attacker grows as a function of the rate of unsuppressed hostile events. We report on experiments on abuse detection for an email service.

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