Optimal Stopping with Multi-Dimensional Comparative Loss Aversion
Abstract
Despite having the same basic prophet inequality setup and model of loss aversion, conclusions in our multi-dimensional model differs considerably from the one-dimensional model of Kleinberg et al. For example, Kleinberg et al. gives a tight closed-form on the competitive ratio that an online decision-maker can achieve as a function of λ, for any λ ≥ 0. In our multi-dimensional model, there is a sharp phase transition: if k denotes the number of dimensions, then when λ · (k-1) ≥ 1, no non-trivial competitive ratio is possible. On the other hand, when λ · (k-1) < 1, we give a tight bound on the achievable competitive ratio (similar to Kleinberg et al.). As another example, Kleinberg et al. uncovers an exponential improvement in their competitive ratio for the random-order vs. worst-case prophet inequality problem. In our model with k≥ 2 dimensions, the gap is at most a constant-factor. We uncover several additional key differences in the multi- and single-dimensional models.
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