HyperLib: Deep learning in the Hyperbolic space

Background
This library implements common Neural Network components in the hyperbolic space (using the Poincare model). The implementation of this library uses Tensorflow as a backend and can easily be used with Keras and is meant to help Data Scientists, Machine Learning Engineers, Researchers and others to implement hyperbolic neural networks.
You can also use this library for uses other than neural networks by using the mathematical functions available in the Poincare class. In the future we may implement components that can be used in models other than neural networks. You can learn more about Hyperbolic networks here, and in the references1 2 3 4.
Install
The recommended way to install is with pip
pip install hyperlib
To build from source, you need to compile the pybind11 extensions.
For example to build on linux:
conda -n hyperlib python=3.8 gxx_linux-64 pybind11
python setup.py install
Hyperlib works with python>=3.8 and tensorflow>=2.0.
Example Usage
Creating a hyperbolic neural network using Keras:
import tensorflow as tf
from tensorflow import keras
from hyperlib.nn.layers.lin_hyp import LinearHyperbolic
from hyperlib.nn.optimizers.rsgd import RSGD
from hyperlib.manifold.poincare import Poincare
hyperbolic_layer_1 = LinearHyperbolic(32, Poincare(), 1)
hyperbolic_layer_2 = LinearHyperbolic(32, Poincare(), 1)
output_layer = LinearHyperbolic(10, Poincare(), 1)
optimizer = RSGD(learning_rate=0.1)
model = tf.keras.models.Sequential([
hyperbolic_layer_1,
hyperbolic_layer_2,
output_layer
])
model.compile(
optimizer=optimizer,
loss=tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True),
metrics=[tf.keras.metrics.SparseCategoricalAccuracy()],
)
Using math functions on the Poincare ball:
import tensorflow as tf
from hyperlib.manifold.poincare import Poincare
p = Poincare()
a = tf.constant([[5.0,9.4,3.0],[2.0,5.2,8.9],[4.0,7.2,8.9]])
b = tf.constant([[4.8,1.0,2.3]])
curvature = 1
p.mobius_matvec(a, b, curvature)
Embeddings
A big advantage of hyperbolic space is its ability to represent hierarchical data. There are several techniques for embedding data in hyperbolic space; the most common is gradient methods 5.
If your data has a natural metric you can also use TreeRep6.
Input a symmetric distance matrix, or a compressed distance matrix
import numpy as np
from hyperlib.embedding.treerep import treerep
from hyperlib.embedding.sarkar import sarkar_embedding
compressed_metric = np.array([
32., 48., 51., 50., 48., 98., 148.,
26., 34., 29., 33., 84., 136.,
42., 44., 44., 92., 152.,
44., 38., 86., 142.,
42., 89., 142.,
90., 142.,
148.
])
tree = treerep(compressed_metric, return_networkx=True)
root = 0
embedding = sarkar_embedding(tree, root, tau=0.5)
Please see the examples directory for complete examples.
References