Unsupervised Neural Generative Semantic Hashing

3 Jun 2019Casper HansenChristian HansenJakob Grue SimonsenStephen AlstrupChristina Lioma

Fast similarity search is a key component in large-scale information retrieval, where semantic hashing has become a popular strategy for representing documents as binary hash codes. Recent advances in this area have been obtained through neural network based models: generative models trained by learning to reconstruct the original documents... (read more)

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