adivit
Adivit is a theoretical framework in decision theory and artificial intelligence that describes how an agent accumulates and uses evidence to reach a decision. The term has appeared in speculative and introductory discussions but is not widely standardized in the literature.
In adivit, evidence arrives in a sequence. An internal belief state is updated additively by each new
A stopping rule triggers when the belief state crosses a preset threshold; the model can also include
Relation to other models: adivit is similar to sequential sampling models such as the diffusion model but
Applications and use cases include cognitive experiments to test human decision strategies, real-time decision systems in
Limitations and criticism include reliance on additive independence assumptions, potential oversimplification of evidence interactions, parameterization challenges,