11,478 research outputs found

    Greedy Algorithms for Optimal Distribution Approximation

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    The approximation of a discrete probability distribution t\mathbf{t} by an MM-type distribution p\mathbf{p} is considered. The approximation error is measured by the informational divergence D(tp)\mathbb{D}(\mathbf{t}\Vert\mathbf{p}), which is an appropriate measure, e.g., in the context of data compression. Properties of the optimal approximation are derived and bounds on the approximation error are presented, which are asymptotically tight. It is shown that MM-type approximations that minimize either D(tp)\mathbb{D}(\mathbf{t}\Vert\mathbf{p}), or D(pt)\mathbb{D}(\mathbf{p}\Vert\mathbf{t}), or the variational distance pt1\Vert\mathbf{p}-\mathbf{t}\Vert_1 can all be found by using specific instances of the same general greedy algorithm.Comment: 5 page

    Information-Preserving Markov Aggregation

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    We present a sufficient condition for a non-injective function of a Markov chain to be a second-order Markov chain with the same entropy rate as the original chain. This permits an information-preserving state space reduction by merging states or, equivalently, lossless compression of a Markov source on a sample-by-sample basis. The cardinality of the reduced state space is bounded from below by the node degrees of the transition graph associated with the original Markov chain. We also present an algorithm listing all possible information-preserving state space reductions, for a given transition graph. We illustrate our results by applying the algorithm to a bi-gram letter model of an English text.Comment: 7 pages, 3 figures, 2 table

    Information Loss and Anti-Aliasing Filters in Multirate Systems

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    This work investigates the information loss in a decimation system, i.e., in a downsampler preceded by an anti-aliasing filter. It is shown that, without a specific signal model in mind, the anti-aliasing filter cannot reduce information loss, while, e.g., for a simple signal-plus-noise model it can. For the Gaussian case, the optimal anti-aliasing filter is shown to coincide with the one obtained from energetic considerations. For a non-Gaussian signal corrupted by Gaussian noise, the Gaussian assumption yields an upper bound on the information loss, justifying filter design principles based on second-order statistics from an information-theoretic point-of-view.Comment: 12 pages; a shorter version of this paper was published at the 2014 International Zurich Seminar on Communication

    Influence of Doppler Bin Width on GPS Acquisition Probabilities

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    Acquisition is a search in two continuous dimensions, where the digital algorithms require a partitioning of the search space into cells. Depending on the partitioning of the Doppler frequency domain, more than one cell might contain significant signal energy. We present an expression for the expected values of the cells' energies to analyze the impact of the Doppler bin width on detection and false alarm probabilities.Comment: 24 pages, 12 figures; submitte
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