Reviews: Learning Influence Functions from Incomplete Observations

Neural Information Processing Systems 

The authors consider the problem of PAC-learning the influence function in cascade models under a incomplete observation model. For each observed cascade, only the initial seeds and random subset of final active nodes are observed---specifically, each active node is observed as being active independently with probability 1-mu. The specific learning goal is to estimate the marginal probabilities of each node being activated given any source set S. The paper considers both proper PAC learning (the estimated influence function corresponds to an actual diffusion model) and improper PAC learning (the estimated influence function is parameterized differently). For proper learning, they extend results of [14] to the case of incomplete observations. The main idea is to reduce (by a fairly straightforward reduction) the problem of learning with incomplete cascades to the problem of learning with complete observations in a modified graph (and with modified training cascades).