Flexible Retrieval With NMSLIB And Flexneuart | Awesome Learning to Hash Add your paper to Learning2Hash

Flexible Retrieval With NMSLIB And Flexneuart

Leonid Boytsov, Eric Nyberg . Proceedings of Second Workshop for NLP Open Source Software (NLP-OSS) 2020 – 4 citations

[Paper]   Search on Google Scholar   Search on Semantic Scholar
Hybrid ANN Methods Re-Ranking Tools & Libraries Tree Based ANN

Our objective is to introduce to the NLP community an existing k-NN search library NMSLIB, a new retrieval toolkit FlexNeuART, as well as their integration capabilities. NMSLIB, while being one the fastest k-NN search libraries, is quite generic and supports a variety of distance/similarity functions. Because the library relies on the distance-based structure-agnostic algorithms, it can be further extended by adding new distances. FlexNeuART is a modular, extendible and flexible toolkit for candidate generation in IR and QA applications, which supports mixing of classic and neural ranking signals. FlexNeuART can efficiently retrieve mixed dense and sparse representations (with weights learned from training data), which is achieved by extending NMSLIB. In that, other retrieval systems work with purely sparse representations (e.g., Lucene), purely dense representations (e.g., FAISS and Annoy), or only perform mixing at the re-ranking stage.

Similar Work