opportune 发表于 2025-3-30 11:29:34
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Link Prediction in Multi-modal Social Networks majority of earlier work in link prediction infers new interactions between users by mainly focusing on a single network type. However, users also form several . social networks through their daily interactions like commenting on people’s posts or rating similarly the same products. Prior work primHarbor 发表于 2025-3-30 16:38:51
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Integer Bayesian Network Classifiers. These networks allow for efficient implementation in hardware while maintaining a (partial) probabilistic interpretation under scaling. An algorithm for the computation of margin maximizing integer parameters is presented and its efficiency is demonstrated. The resulting parameters have superior c出汗 发表于 2025-3-31 10:10:23
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On Learning Matrices with Orthogonal Columns or Disjoint Supportssed a strictly convex matrix norm for orthogonal transfer. We show that this norm converges to a particular atomic norm when its convexity parameter decreases, leading to new algorithmic solutions to minimize it. We also investigate concave formulations of this norm, corresponding to more aggressive