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Maximum inner-product search

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Maximum inner-product search (MIPS) is a search problem, with a corresponding class of search algorithms which attempt to maximise the inner product between a query and the data items to be retrieved. MIPS algorithms are used in a wide variety of big data applications, including recommendation algorithms and machine learning.[1]

Formally, for a database of vectors defined over a set of labels in an inner product space with an inner product defined on it, MIPS search can be defined as the problem of determining

for a given query .

Although there is an obvious linear-time implementation, it is generally too slow to be used on practical problems. However, efficient algorithms exist to speed up MIPS search.[1][2]

Under the assumption of all vectors in the set having constant norm, MIPS can be viewed as equivalent to a nearest neighbor search (NNS) problem in which maximizing the inner product is equivalent to minimizing the corresponding distance metric in the NNS problem.[3] Like other forms of NNS, MIPS algorithms may be approximate or exact.[4]

MIPS search is used as part of DeepMind's RETRO algorithm.[5]

References

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  1. ^ a b Abuzaid, Firas; Sethi, Geet; Bailis, Peter; Zaharia, Matei (2019-03-14). "To Index or Not to Index: Optimizing Exact Maximum Inner Product Search". arXiv:1706.01449 [cs.IR].
  2. ^ Steve Mussmann, Stefano Ermon. Learning and Inference via Maximum Inner Product Search. In Proc. 33rd International Conference on Machine Learning (ICML), 2016.
  3. ^ Shrivastava, Anshumali; Li, Ping (2015-07-12). "Improved asymmetric locality sensitive hashing (ALSH) for Maximum Inner Product Search (MIPS)". Proceedings of the Thirty-First Conference on Uncertainty in Artificial Intelligence. UAI'15. Arlington, Virginia, USA: AUAI Press: 812–821. arXiv:1410.5410. ISBN 978-0-9966431-0-8.
  4. ^ Keivani, Omid; Sinha, Kaushik; Ram, Parikshit (May 2017). "Improved maximum inner product search with better theoretical guarantees". 2017 International Joint Conference on Neural Networks (IJCNN). pp. 2927–2934. doi:10.1109/IJCNN.2017.7966218. ISBN 978-1-5090-6182-2. S2CID 8352165.
  5. ^ "RETRO Is Blazingly Fast". Mitchell A. Gordon. 2022-07-01. Retrieved 2022-07-04.

See also

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