# General Resource Theories in Quantum Mechanics and Beyond: Operational   Characterization via Discrimination Tasks

**Authors:** Ryuji Takagi, Bartosz Regula

arXiv: 1901.08127 · 2019-10-02

## TL;DR

This paper provides an operational framework linking resource theories to discrimination tasks across quantum mechanics and general probabilistic theories, unifying resource quantification and transformation characterization.

## Contribution

It introduces a generalized robustness measure for resources in states, measurements, and channels, fully characterizing their advantage in discrimination tasks within any GPT.

## Key findings

- Robustness measures quantify maximum advantage in discrimination tasks.
- Discrimination tasks fully characterize allowed resource transformations.
- Measurement robustness relates to increased accessible information.

## Abstract

We establish an operational characterization of general convex resource theories -- describing the resource content of not only states, but also measurements and channels, both within quantum mechanics and in general probabilistic theories (GPTs) -- in the context of state and channel discrimination. We find that discrimination tasks provide a unified operational description for quantification and manipulation of resources by showing that the family of robustness measures can be understood as the maximum advantage provided by any physical resource in several different discrimination tasks, as well as establishing that such discrimination problems can fully characterize the allowed transformations within the given resource theory.   Specifically, we introduce quantifiers of resourcefulness of states, measurements, and channels in any GPT based on the generalized robustness, and show that they exactly characterize the maximum advantage that a given resource provides over all free states, measurements, or channels in a class of state or channel discrimination tasks. In quantum mechanics, we show that the robustness of measurement can be alternatively understood as the maximal increase in one-shot accessible information when compared to free measurements. We furthermore endow the standard robustness of a state with an operational meaning as the quantifier of the maximum advantage in binary channel discrimination tasks. Finally, we show that several classes of channel and state discrimination tasks can form complete families of monotones fully characterizing the transformations of states and measurements under any chosen class of free operations. Our results establish a fundamental connection between operational tasks of discrimination and core concepts of resource theories, valid for all physical theories with no additional assumptions about the structure of the GPT required.

## Full text

_Full body text omitted from this summary view._ Fetch the complete paper as Markdown: https://tomesphere.com/paper/1901.08127/full.md

## Figures

1 figure with captions in the complete paper: https://tomesphere.com/paper/1901.08127/full.md

## References

145 references — full list in the complete paper: https://tomesphere.com/paper/1901.08127/full.md

---
Source: https://tomesphere.com/paper/1901.08127