Online convex optimization for cumulative constraints
Jianjun Yuan · Andrew Lamperski
2018 Poster
Abstract
We propose the algorithms for online convex
optimization which lead to cumulative squared constraint violations
of the form
$\sum\limits_{t=1}^T\big([g(x_t)]_+\big)^2=O(T^{1-\beta})$, where
$\beta\in(0,1)$. Previous literature has
focused on long-term constraints of the form
$\sum\limits_{t=1}^Tg(x_t)$. There, strictly feasible solutions
can cancel out the effects of violated constraints.
In contrast, the new form heavily penalizes large constraint
violations and cancellation effects cannot occur.
Furthermore, useful bounds on the single step constraint violation
$[g(x_t)]_+$ are derived.
For convex objectives, our regret bounds generalize
existing bounds, and for strongly convex objectives we give improved
regret bounds.
In numerical experiments, we show that our algorithm closely follows
the constraint boundary leading to low cumulative violation.
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