Consider a single-product revenue-maximization problem where the seller monotonically decreases the price in rounds with an unknown demand model coming from a given family. Without monotonicity, the minimax regret is for the Lipschitz demand family and for a general class of parametric demand models. With monotonicity, the minimax regret is if the revenue function is Lipschitz and unimodal. However, the minimax regret for parametric families remained open. In this work, we provide a complete settlement for this fundamental problem. We introduce the crossing number to measure the complexity of a family of demand functions. In particular, the family of degree- polynomials has a crossing number . Based on conservatism under uncertainty, we present (i) a policy with an optimal regret for families with crossing number , and (ii) another policy with an optimal regret when . These bounds are asymptotically higher than the and minimax regret for the same families without the monotonicity constraint.
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