IRGAN: A Minimax Game for Unifying Generative and Discriminative Information Retrieval Models
WJWang, JunYLYu, LantaoZWZhang, WeinanGYGong, YuXYXu, Yinghui
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Abstract
This paper provides a unified account of two schools of thinking in information retrieval modelling: the generative retrieval focusing on predicting relevant documents given a query, and the discriminative retrieval focusing on predicting relevancy given a query-document pair. We 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 fitting the underlying relevance distribution over documents given the query. On the other hand, the generative model, acting as an attacker to the current discriminative model, generates difficult examples…
Citation impact
559
total citations
- FWCI
- —
- Percentile
- —
- References
- 62
Citations per year
Authors
8- WJWang, JunCorresponding
- YLYu, Lantao
- ZWZhang, Weinan
- GYGong, Yu
- XYXu, Yinghui
Topics & keywords
Keywords
- Computer science
UN Sustainable Development Goals
- Reduced inequalities
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