Multislice PHATE (M-PHATE) is a dimensionality reduction algorithm for the visualization of time-evolving data. To learn more about M-PHATE, you can read our preprint on arXiv in which we apply it to the evolution of neural networks over the course of training. Above we show a demonstration of M-PHATE applied to a 3-layer MLP over 300 epochs of training, colored by epoch (left), hidden layer (center) and the digit label that most strongly activates each hidden unit (right). Below, you see the same network with dropout applied in training embedded in 3D, also colored by most active unit.
Multislice PHATE (M-PHATE) combines a novel multislice kernel construction with the PHATE visualization. Our kernel captures the dynamics of an evolving graph structure, that when when visualized, gives unique intuition about the evolution of a system; in our preprint, we show this applied to a neural network over the course of training and re-training. We compare M-PHATE to other dimensionality reduction techniques, showing that the combined construction of the multislice kernel and the use of PHATE provide significant improvements to visualization. In two vignettes, we demonstrate the use M-PHATE on established training tasks and learning methods in continual learning, and in regularization techniques commonly used to improve generalization performance.
The multislice kernel used in M-PHATE consists of building graphs over time slices of data (e.g. epochs in neural network training) and then connecting these slices by connecting each point to itself over time, weighted by its similarity. The result is a highly sparse, structured kernel which provides insight into the evolving structure of the data.
For more details, check out our NeurIPS publication, read the tweetorial or have a look at our poster.
pip install --user m-phate
pip install --user git+https://github.com/scottgigante/m-phate.git
Below we apply M-PHATE to simulated data of 50 points undergoing random motion.
import numpy as np
import m_phate
import scprep
# create fake data
n_time_steps = 100
n_points = 50
n_dim = 25
np.random.seed(42)
data = np.cumsum(np.random.normal(0, 1, (n_time_steps, n_points, n_dim)), axis=0)
# embedding
m_phate_op = m_phate.M_PHATE()
m_phate_data = m_phate_op.fit_transform(data)
# plot
time = np.repeat(np.arange(n_time_steps), n_points)
scprep.plot.scatter2d(m_phate_data, c=time, ticks=False, label_prefix="M-PHATE")
To apply M-PHATE to neural networks, we provide helper classes to store the samples from the network during training. In order to use these, you must install tensorflow
and keras
.
import numpy as np
import keras
import scprep
import m_phate
import m_phate.train
import m_phate.data
# load data
x_train, x_test, y_train, y_test = m_phate.data.load_mnist()
# select trace examples
trace_idx = [np.random.choice(np.argwhere(y_test[:, i] == 1).flatten(),
10, replace=False)
for i in range(10)]
trace_data = x_test[np.concatenate(trace_idx)]
# build neural network
lrelu = keras.layers.LeakyReLU(alpha=0.1)
inputs = keras.layers.Input(
shape=(x_train.shape[1],), dtype='float32', name='inputs')
h1 = keras.layers.Dense(128, activation=lrelu, name='h1')(inputs)
h2 = keras.layers.Dense(64, activation=lrelu, name='h2')(h1)
h3 = keras.layers.Dense(128, activation=lrelu, name='h3')(h2)
outputs = keras.layers.Dense(10, activation='softmax', name='output_all')(h3)
# build trace model helper
model_trace = keras.models.Model(inputs=inputs, outputs=[h1, h2, h3])
trace = m_phate.train.TraceHistory(trace_data, model_trace)
# compile network
model = keras.models.Model(inputs=inputs, outputs=outputs)
model.compile(optimizer='adam', loss='categorical_crossentropy',
metrics=['categorical_accuracy', 'categorical_crossentropy'])
# train network
model.fit(x_train, y_train, batch_size=128, epochs=200,
verbose=1, callbacks=[trace],
validation_data=(x_test,
y_test))
# extract trace data
trace_data = np.array(trace.trace)
epoch = np.repeat(np.arange(trace_data.shape[0]), trace_data.shape[1])
# apply M-PHATE
m_phate_op = m_phate.M_PHATE()
m_phate_data = m_phate_op.fit_transform(trace_data)
# plot the result
scprep.plot.scatter2d(m_phate_data, c=epoch, ticks=False,
label_prefix="M-PHATE")
For detailed examples, see our sample notebooks in keras
and tensorflow
in examples
:
- Keras
- Tensorflow
The key to tuning the parameters of M-PHATE is essentially balancing the tradeoff between interslice connectivity and intraslice connectivity. This is primarily achieved with interslice_knn
and intraslice_knn
. You can see an example of the effects of parameter tuning in this notebook.
We provide scripts to reproduce all of the empirical figures in the preprint.
To run them:
git clone https://github.com/scottgigante/m-phate
cd m-phate
pip install --user .
# change this if you want to store the data elsewhere
DATA_DIR=~/data/checkpoints/m_phate
# choose between cifar and mnist
DATASET="mnist"
EXTRA_ARGS="--dataset ${DATASET}"
# remove to use validation data
EXTRA_ARGS="${EXTRA_ARGS} --sample-train-data"
chmod +x scripts/generalization/generalization_train.sh
chmod +x scripts/task_switching/classifier_mnist_task_switch_train.sh
./scripts/generalization/generalization_train.sh "${DATA_DIR}" "${EXTRA_ARGS}"
./scripts/task_switching/classifier_mnist_task_switch_train.sh "${DATA_DIR}" "${EXTRA_ARGS}"
python scripts/demonstration_plot.py "${DATA_DIR}" "${DATASET}"
python scripts/comparison_plot.py "${DATA_DIR}" "${DATASET}"
python scripts/generalization_plot.py "${DATA_DIR}" "${DATASET}"
python scripts/task_switch_plot.py "${DATA_DIR}" "${DATASET}"
- Provide support for PyTorch
- Notebook examples for:
- Classification, pytorch
- Autoencoder, pytorch
- Build readthedocs page
If you have any questions, please feel free to open an issue.