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Learnability of Influence in Networks

机译:网络影响力的易学性

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摘要

We show PAC learnability of influence functions for three common influence models, namely, the Linear Threshold (LT), Independent Cascade (IC) and Voter models, and present concrete sample complexity results in each case. Our results for the LT model are based on interesting connections with neural networks; those for the IC model are based an interpretation of the influence function as an expectation over random draw of a subgraph and use covering number arguments; and those for the Voter model are based on a reduction to linear regression. We show these results for the case in which the cascades are only partially observed and we do not see the time steps in which a node has been influenced. We also provide efficient polynomial time learning algorithms for a setting with full observation, i.e. where the cascades also contain the time steps in which nodes are influenced.
机译:我们展示了PAC对三种常见影响模型(线性阈值(LT),独立级联(IC)和Voter模型)的影响函数的可学习性,并给出了每种情况下的具体样本复杂度结果。我们对LT模型的结果基于与神经网络的有趣联系。 IC模型的解释基于对影响函数的解释,该影响函数是对子图的随机抽取的期望,并使用覆盖数字的参数;而Voter模型的模型则基于线性回归的简化。对于仅部分观察到级联并且看不到节点受到影响的时间步长的情况,我们显示了这些结果。我们还为具有充分观察力的设置提供了有效的多项式时间学习算法,即级联还包含影响节点的时间步长。

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