Approximate Nearest Neighbor Negative Contrastive Learning for Dense Text Retrieval

235 indexed citations

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This paper, published in 2021, received 235 indexed citations. Written by Lee Xiong, Chenyan Xiong, Ye Li, Jialin Liu, Paul N. Bennett and Junaid Ahmed covering the research area of Artificial Intelligence and Computer Vision and Pattern Recognition. It is primarily cited by scholars working on Artificial Intelligence (224 citations), Computer Vision and Pattern Recognition (102 citations) and Information Systems (38 citations). Published in International Conference on Learning Representations.

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This paper is also available at doi.org/w2703820.

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