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Measure of unpredictability of outcomes From Wikipedia, the free encyclopedia
The min-entropy, in information theory, is the smallest of the Rényi family of entropies, corresponding to the most conservative way of measuring the unpredictability of a set of outcomes, as the negative logarithm of the probability of the most likely outcome. The various Rényi entropies are all equal for a uniform distribution, but measure the unpredictability of a nonuniform distribution in different ways. The min-entropy is never greater than the ordinary or Shannon entropy (which measures the average unpredictability of the outcomes) and that in turn is never greater than the Hartley or max-entropy, defined as the logarithm of the number of outcomes with nonzero probability.
As with the classical Shannon entropy and its quantum generalization, the von Neumann entropy, one can define a conditional version of min-entropy. The conditional quantum min-entropy is a one-shot, or conservative, analog of conditional quantum entropy.
To interpret a conditional information measure, suppose Alice and Bob were to share a bipartite quantum state . Alice has access to system and Bob to system . The conditional entropy measures the average uncertainty Bob has about Alice's state upon sampling from his own system. The min-entropy can be interpreted as the distance of a state from a maximally entangled state.
This concept is useful in quantum cryptography, in the context of privacy amplification (See for example [1]).
If is a classical finite probability distribution, its min-entropy can be defined as[2] One way to justify the name of the quantity is to compare it with the more standard definition of entropy, which reads , and can thus be written concisely as the expectation value of over the distribution. If instead of taking the expectation value of this quantity we take its minimum value, we get precisely the above definition of .
From an operational perspective, the min-entropy equals the negative logarithm of the probability of successfully guessing the outcome of a random draw from . This is because it is optimal to guess the element with the largest probability and the chance of success equals the probability of that element.
A natural way to generalize "min-entropy" from classical to quantum states is to leverage the simple observation that quantum states define classical probability distributions when measured in some basis. There is however the added difficulty that a single quantum state can result in infinitely many possible probability distributions, depending on how it is measured. A natural path is then, given a quantum state , to still define as , but this time defining as the maximum possible probability that can be obtained measuring , maximizing over all possible projective measurements. Using this, one gets the operational definition that the min-entropy of equals the negative logarithm of the probability of successfully guessing the outcome of any measurement of .
Formally, this leads to the definition where we are maximizing over the set of all projective measurements , represent the measurement outcomes in the POVM formalism, and is therefore the probability of observing the -th outcome when the measurement is .
A more concise method to write the double maximization is to observe that any element of any POVM is a Hermitian operator such that , and thus we can equivalently directly maximize over these to get In fact, this maximization can be performed explicitly and the maximum is obtained when is the projection onto (any of) the largest eigenvalue(s) of . We thus get yet another expression for the min-entropy as: remembering that the operator norm of a Hermitian positive semidefinite operator equals its largest eigenvalue.
Let be a bipartite density operator on the space . The min-entropy of conditioned on is defined to be
where the infimum ranges over all density operators on the space . The measure is the maximum relative entropy defined as
The smooth min-entropy is defined in terms of the min-entropy.
where the sup and inf range over density operators which are -close to . This measure of -close is defined in terms of the purified distance
where is the fidelity measure.
These quantities can be seen as generalizations of the von Neumann entropy. Indeed, the von Neumann entropy can be expressed as
This is called the fully quantum asymptotic equipartition theorem.[3] The smoothed entropies share many interesting properties with the von Neumann entropy. For example, the smooth min-entropy satisfy a data-processing inequality:[4]
Henceforth, we shall drop the subscript from the min-entropy when it is obvious from the context on what state it is evaluated.
Suppose an agent had access to a quantum system whose state depends on some classical variable . Furthermore, suppose that each of its elements is distributed according to some distribution . This can be described by the following state over the system .
where form an orthonormal basis. We would like to know what the agent can learn about the classical variable . Let be the probability that the agent guesses when using an optimal measurement strategy
where is the POVM that maximizes this expression. It can be shown[citation needed] that this optimum can be expressed in terms of the min-entropy as
If the state is a product state i.e. for some density operators and , then there is no correlation between the systems and . In this case, it turns out that
Since the conditional min-entropy is always smaller than the conditional Von Neumann entropy, it follows that
The maximally entangled state on a bipartite system is defined as
where and form an orthonormal basis for the spaces and respectively. For a bipartite quantum state , we define the maximum overlap with the maximally entangled state as
where the maximum is over all CPTP operations and is the dimension of subsystem . This is a measure of how correlated the state is. It can be shown that . If the information contained in is classical, this reduces to the expression above for the guessing probability.
The proof is from a paper by König, Schaffner, Renner in 2008.[5] It involves the machinery of semidefinite programs.[6] Suppose we are given some bipartite density operator . From the definition of the min-entropy, we have
This can be re-written as
subject to the conditions
We notice that the infimum is taken over compact sets and hence can be replaced by a minimum. This can then be expressed succinctly as a semidefinite program. Consider the primal problem
This primal problem can also be fully specified by the matrices where is the adjoint of the partial trace over . The action of on operators on can be written as
We can express the dual problem as a maximization over operators on the space as
Using the Choi–Jamiołkowski isomorphism, we can define the channel such that
where the bell state is defined over the space . This means that we can express the objective function of the dual problem as
as desired.
Notice that in the event that the system is a partly classical state as above, then the quantity that we are after reduces to
We can interpret as a guessing strategy and this then reduces to the interpretation given above where an adversary wants to find the string given access to quantum information via system .
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