Empirical Decision Theory
Christoph Jansen (1), Georg Schollmeyer (2), Thomas Augustin (2), Julian Rodemann (3) ((1) Lancaster University Leipzig, (2) Ludwig-Maximilians-Universit\"at M\"unchen, (3) CISPA Helmholtz Center for Information Security Saarbr\"ucken)

TL;DR
This paper introduces an empirical decision model that avoids explicit state specification by using observed act-consequence data, enabling decision analysis directly from empirical protocols.
Contribution
It proposes a novel decision framework based on observed act-consequence pairs, overcoming the need for explicit states of the world in classical decision theory.
Findings
Develops protocol-based empirical choice functions.
Provides methods for statistical estimation and testing of choice functions.
Demonstrates application in AI prompting strategies.
Abstract
Analyzing decision problems under uncertainty commonly relies on idealizing assumptions about the describability of the world, with the most prominent examples being the closed world and the small world assumption. Most assumptions are operationalized by introducing states of the world, conditional on which the decision situation can be analyzed without any remaining uncertainty. Conversely, most classical decision-theoretic approaches are not applicable if the states of the world are inaccessible. We propose a decision model that retains the appeal and simplicity of the original theory, but completely overcomes the need to specify the states of the world explicitly. The main idea of our approach is to address decision problems in a radically empirical way: instead of specifying states and consequences prior to the decision analysis, we only assume a protocol of observed…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Bayesian Modeling and Causal Inference · Ethics and Social Impacts of AI
