1. What have the authors contributed in "Irgan: a minimax game for unifying generative and discriminative information retrieval models" ?
The authors propose a game theoretical minimax game to iteratively optimise both models.. On one hand, the discriminative model, aiming to mine signals from labelled and unlabelled data, provides guidance to train the generative model towards ing the underlying relevance distribution over documents given the query.. With the competition between these two models, the authors show that the unied framework takes advantage of both schools of thinking: ( i ) the generative model learns to t the relevance distribution over documents via the signal from the discriminative model, and ( ii ) the discriminative model is able to exploit the unlabelled data selected by the generative model to achieve a beer estimation for document ranking.
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2. What have the authors stated for future works in "Irgan: a minimax game for unifying generative and discriminative information retrieval models" ?
The authors also plan to extend their framework and test it over the generation of the word tokens.
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