Publication | Closed Access
Learning semantic representations using convolutional neural networks for web search
693
Citations
11
References
2014
Year
Unknown Venue
Convolutional Neural NetworkEngineeringMachine LearningSearch QueriesSemantic SearchQuery ModelLearning To RankSemantic WebText MiningWord EmbeddingsNatural Language ProcessingInformation RetrievalData ScienceComputational LinguisticsLanguage StudiesSemantic LearningDeep LearningRetrieval Augmented GenerationVector Space ModelConvolutional Neural NetworksNew ModelsLinguisticsSemantic Representation
This paper presents a series of new latent semantic models based on a convolutional neural network (CNN) to learn low-dimensional semantic vectors for search queries and Web documents. By using the convolution-max pooling operation, local contextual information at the word n-gram level is modeled first. Then, salient local fea-tures in a word sequence are combined to form a global feature vector. Finally, the high-level semantic information of the word sequence is extracted to form a global vector representation. The proposed models are trained on clickthrough data by maximizing the conditional likelihood of clicked documents given a query, us-ing stochastic gradient ascent. The new models are evaluated on a Web document ranking task using a large-scale, real-world data set. Results show that our model significantly outperforms other se-mantic models, which were state-of-the-art in retrieval performance prior to this work.
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