Weighted regret-based likelihood: a new approach to describing uncertainty

5 Sep 2013Joseph Y. Halpern

Recently, Halpern and Leung suggested representing uncertainty by a weighted set of probability measures, and suggested a way of making decisions based on this representation of uncertainty: maximizing weighted regret. Their paper does not answer an apparently simpler question: what it means, according to this representation of uncertainty, for an event E to be more likely than an event E'... (read more)

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