Learning the Value of Value Learning
By: Alex John London, Aydin Mohseni
Potential Business Impact:
Helps people agree on what's important.
Standard decision frameworks addresses uncertainty about facts but assumes fixed values. We extend the Jeffrey-Bolker framework to model refinements in values and prove a value-of-information theorem for axiological refinement. In multi-agent settings, we establish that mutual refinement will characteristically transform zero-sum games into positive-sum interactions and yields Pareto-improving Nash bargains. These results show that a framework of rational choice can be extended to model value refinement and its associated benefits. By unifying epistemic and axiological refinement under a single formalism, we broaden the conceptual foundations of rational choice and illuminate the normative status of ethical deliberation.
Similar Papers
Learning the Value of Value Learning
Artificial Intelligence
Helps people agree on what's important.
Learning the Value of Value Learning
Artificial Intelligence
Helps people agree on what's important.
Value of Information: A Framework for Human-Agent Communication
Computation and Language
Helps AI decide when to ask questions.