Prequential Probability: Principles and Properties

Forcaster has to predict, sequentially, a string of uncertain quantities (X1,X2,... ), whose values are determined and revealed, one by one, by Nature. Various criteria may be proposed to assess Forecaster's empirical performance. The weak prequential principle requires that such a criterion sh...

Ausführliche Beschreibung

Bibliographische Detailangaben
Veröffentlicht in:Bernoulli. - International Statistical Institute and Bernoulli Society for Mathematical Statistics and Probability, 1995. - 5(1999), 1, Seite 125-162
1. Verfasser: Dawid, A. Philip (VerfasserIn)
Weitere Verfasser: Vovk, Vladimir G.
Format: Online-Aufsatz
Sprache:English
Veröffentlicht: 1999
Zugriff auf das übergeordnete Werk:Bernoulli
Schlagworte:Farthingale Forecasting Goodness of fit Limit theorems of probability theory Martingale Perfect-information game Strong prequential principle Weak prequential principle Mathematics Environmental studies Behavioral sciences
Beschreibung
Zusammenfassung:Forcaster has to predict, sequentially, a string of uncertain quantities (X1,X2,... ), whose values are determined and revealed, one by one, by Nature. Various criteria may be proposed to assess Forecaster's empirical performance. The weak prequential principle requires that such a criterion should depend on Forecaster's behaviour or strategy only through the actual forecasts issued. A wide variety of appealing criteria are shown to respect this principle. We further show that many such criteria also obey the strong prequential principle, which requires that, when both Nature and Forecaster make their choices in accordance with a common joint distribution P for (X1,X2,... ), certain stochastic properties, underlying and justifying the criterion and inferences based on it, hold regardless of the detailed specification of P. In order to understand further this compliant behaviour, we introduce the prequential framework, a game-theoretic basis for probability theory in which it is impossible to violate the prequential principles, and we describe its connections with classical probability theory. In this framework, in order to show that some criterion for assessing Forecaster's empirical performance is valid, we have to exhibit a winning strategy for a third player, Statistician, in a certain perfect-information game. We demonstrate that many performance criteria can be formulated and are valid in this framework and, therefore, satisfy both prequential principles.
ISSN:13507265
DOI:10.2307/3318616