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arxiv: 1801.00183 · v2 · pith:JOS4D6AKnew · submitted 2017-12-30 · ⚛️ physics.data-an

Point Divergence Gain and Multidimensional Data Sequences Analysis

classification ⚛️ physics.data-an
keywords alphadivergencegainpointentropymultidimensionalanalysisdistributions
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We introduce novel information-entropic variables -- a Point Divergence Gain (${\Omega}^{(l \rightarrow m)}_\alpha$), a Point Divergence Gain Entropy ($I_\alpha$), and a Point Divergence Gain Entropy Density ($P_\alpha$) -- which are derived from the R\'{e}nyi entropy and describe spatio-temporal changes between two consecutive discrete multidimensional distributions. The behavior of ${\Omega}^{(l \rightarrow m)}_\alpha$ is simulated for typical distributions and, together with $I_\alpha$ and $P_\alpha$, applied in analysis and characterization of series of multidimensional datasets of computer-based and real images.

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