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Box Embeddings: An open-source library for representation learning using geometric structures

10 September 2021
Tejas Chheda
Purujit Goyal
Trang H. Tran
Dhruvesh Patel
Michael Boratko
S. Dasgupta
Andrew McCallum
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Abstract

A major factor contributing to the success of modern representation learning is the ease of performing various vector operations. Recently, objects with geometric structures (eg. distributions, complex or hyperbolic vectors, or regions such as cones, disks, or boxes) have been explored for their alternative inductive biases and additional representational capacities. In this work, we introduce Box Embeddings, a Python library that enables researchers to easily apply and extend probabilistic box embeddings.

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