A Greedy Approach for Budgeted Maximum Inner Product Search
Yu, Hsiang-Fu, Hsieh, Cho-Jui, Lei, Qi, Dhillon, Inderjit S.
–Neural Information Processing Systems
Maximum Inner Product Search (MIPS) is an important task in many machine learning applications such as the prediction phase of low-rank matrix factorization models and deep learning models. Recently, there has been substantial research on how to perform MIPS in sub-linear time, but most of the existing work does not have the flexibility to control the trade-off between search efficiency and search quality. In this paper, we study the important problem of MIPS with a computational budget. By carefully studying the problem structure of MIPS, we develop a novel Greedy-MIPS algorithm, which can handle budgeted MIPS by design. While simple and intuitive, Greedy-MIPS yields surprisingly superior performance compared to state-of-the-art approaches.
Neural Information Processing Systems
Feb-14-2020, 17:27:20 GMT