Imaging geometry through dynamics: the observable representation
classification
❄️ cond-mat.stat-mech
cond-mat.other
keywords
definedeigenvectorspointtherevariablesclosestconfigurationscoordinate
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For many stochastic processes there is an underlying coordinate space, $V$, with the process moving from point to point in $V$ or on variables (such as spin configurations) defined with respect to $V$. There is a matrix of transition probabilities (whether between points in $V$ or between variables defined on $V$) and we focus on its ``slow'' eigenvectors, those with eigenvalues closest to that of the stationary eigenvector. These eigenvectors are the ``observables,'' and they can be used to recover geometrical features of $V$.
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