19,258 research outputs found

    Number of cliques in graphs with a forbidden subdivision

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    We prove that for all positive integers tt, every nn-vertex graph with no KtK_t-subdivision has at most 250tn2^{50t}n cliques. We also prove that asymptotically, such graphs contain at most 2(5+o(1))tn2^{(5+o(1))t}n cliques, where o(1)o(1) tends to zero as tt tends to infinity. This strongly answers a question of D. Wood asking if the number of cliques in nn-vertex graphs with no KtK_t-minor is at most 2ctn2^{ct}n for some constant cc.Comment: 10 pages; to appear in SIAM J. Discrete Mat

    Neural Ideal Point Estimation Network

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    Understanding politics is challenging because the politics take the influence from everything. Even we limit ourselves to the political context in the legislative processes; we need a better understanding of latent factors, such as legislators, bills, their ideal points, and their relations. From the modeling perspective, this is difficult 1) because these observations lie in a high dimension that requires learning on low dimensional representations, and 2) because these observations require complex probabilistic modeling with latent variables to reflect the causalities. This paper presents a new model to reflect and understand this political setting, NIPEN, including factors mentioned above in the legislation. We propose two versions of NIPEN: one is a hybrid model of deep learning and probabilistic graphical model, and the other model is a neural tensor model. Our result indicates that NIPEN successfully learns the manifold of the legislative bill texts, and NIPEN utilizes the learned low-dimensional latent variables to increase the prediction performance of legislators' votings. Additionally, by virtue of being a domain-rich probabilistic model, NIPEN shows the hidden strength of the legislators' trust network and their various characteristics on casting votes
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