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Designed Measurements for Vector Count Data

机译:设计矢量计数数据的设计测量

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摘要

We consider design of linear projection measurements for a vector Poisson signal model. The projections are performed on the vector Poisson rate, X ∈ R_+~n and the observed data are a vector of counts, Y ∈ Z_+~m. The projection matrix is designed by maximizing mutual information between Y and X, I(Y;X). When there is a latent class label C ∈ {1,..., L} associated with X, we consider the mutual information with respect to Y and C, I(Y; C). New analytic expressions for the gradient of I(Y; X) and I(Y; C) are presented, with gradient performed with respect to the measurement matrix. Connections are made to the more widely studied Gaussian measurement model. Example results are presented for compressive topic modeling of a document corpora (word counting), and hyperspectral compressive sensing for chemical classification (photon counting).
机译:我们考虑为向量泊松信号模型设计线性投影测量。对向量泊松速率进行投影,x∈R_+〜n和观察到的数据是计数的向量,y∈z_+〜m。投影矩阵是通过最大化y和x之间的相互信息,i(y; x)来设计的。当存在与X相关联的潜在类标签C∈{1,...,l}时,我们考虑相对于Y和C,I(Y; C)的相互信息。呈现I(Y; x)和I(Y; C)的梯度的新分析表达式,梯度相对于测量矩阵进行。对更广泛研究的高斯测量模型进行连接。提出了用于文档语料库(单词计数)的压缩主题建模的示例结果,以及用于化学分类的高光谱压缩感测(光子计数)。

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