Adversarial Sampling and Training for Semi-Supervised Information Retrieval

9 Nov 2018Dae Hoon ParkYi Chang

Ad-hoc retrieval models with implicit feedback often have problems, e.g., the imbalanced classes in the data set. Too few clicked documents may hurt generalization ability of the models, whereas too many non-clicked documents may harm effectiveness of the models and efficiency of training... (read more)

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