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  • title: Non-approximate Inference for Collective Graphical Models on Path Graphs via Discrete Difference of Convex Algorithm
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            Non-approximate Inference for Collective Graphical Models on Path Graphs via Discrete Difference of Convex Algorithm
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            Non-approximate Inference for Collective Graphical Models on Path Graphs via Discrete Difference of Convex Algorithm

            Dec 6, 2021

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            The importance of aggregated count data, which is calculated from the data of multiple individuals, continues to increase. Collective Graphical Model (CGM) is a probabilistic approach to the analysis of aggregated data. One of the most important operations in CGM is maximum a posteriori (MAP) inference of unobserved variables under given observations. Because the MAP inference problem for general CGMs has been shown to be NP-hard, an approach that solves an approximate problem has been proposed.…

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