Gaurav Goswami, Nalini K. Ratha, et al.
AAAI 2018
Just as semantic hashing (Salakhutdinov and Hinton 2009) can accelerate information retrieval, binary valued embeddings can significantly reduce latency in the retrieval of graphical data. We introduce a simple but effective model for learning such binary vectors for nodes in a graph. By imagining the embeddings as independent coin flips of varying bias, continuous optimization techniques can be applied to the approximate expected loss. Embeddings optimized in this fashion consistently outperform the quantization of both spectral graph embeddings and various learned real-valued embeddings, on both ranking and pre-ranking tasks for a variety of datasets.
Gaurav Goswami, Nalini K. Ratha, et al.
AAAI 2018
Michael Katz, Dany Moshkovich, et al.
AAAI 2018
Balaji Ganesan, Avirup Saha, et al.
ISWC-Posters 2020
Chia-Yu Chen, Jungwook Choi, et al.
AAAI 2018