Thermodynamic Cost and Benefit of Memory
Susanne Still
Abstract
This Letter exposes a tight connection between the thermodynamic efficiency of information processing and predictive inference. A generalized lower bound on dissipation is derived for partially observable information engines which are allowed to use temperature differences. It is shown that the retention of irrelevant information limits efficiency. A data representation method is derived from optimizing a fundamental physical limit to information processing: minimizing the lower bound on dissipation leads to a compression method that maximally retains relevant, predictive, information. In that sense, predictive inference emerges as the strategy that least precludes energy efficiency.
Topics & Concepts
DissipationInferenceObservableComputer scienceUpper and lower boundsLimit (mathematics)Representation (politics)Connection (principal bundle)Efficient energy useStatistical physicsPhysicsArtificial intelligenceMathematicsThermodynamicsQuantum mechanicsMathematical analysisPolitical scienceElectrical engineeringGeometryLawPoliticsEngineeringAdvanced Thermodynamics and Statistical MechanicsNeural dynamics and brain functionStatistical Mechanics and Entropy