Preprocessing operations and the reverse compression
Matheus Capela, Fabio Costa

TL;DR
This paper introduces reverse compression, a novel data compression method that relies solely on the channel, applicable to classical and quantum data, especially when data statistics are unknown.
Contribution
The paper proposes a new reverse compression technique that depends only on the channel, applicable to both classical and quantum information, and explores its theoretical properties.
Findings
Noiseless reverse compression is only possible in trivial cases.
Meaningful noisy reverse compression can occur under certain conditions.
The method applies to classical and quantum erasure channels.
Abstract
The task of compression of data -- as stated by the source coding theorem -- is one of the cornerstones of information theory. Data compression usually exploits statistical redundancies in the data according to its prior distribution. Motivated by situations where one does not have access to the statistics of data, but has some information about a transformation that is going to be applied to it, we propose a novel method for data compression called reverse compression. It is defined in such a way that works for both classical and quantum information processes, and furthermore relies exclusively on the channel to be used: all input data leading to indistinguishable outputs is compressed to the same state, regardless of their prior distribution. Moreover, this process can be characterized as a higher order operation within the type of preprocessing. We also consider as an example the…
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Taxonomy
TopicsQuantum Mechanics and Applications · Quantum Information and Cryptography · Quantum Computing Algorithms and Architecture
