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Captum Logo


Conda PyPI CircleCI

Captum is a model interpretability and understanding library for PyTorch. Captum means comprehension in latin and contains general purpose implementations of integrated gradients, saliency maps, smoothgrad, vargrad and others for PyTorch models. It has quick integration for models built with domain-specific libraries such as torchvision, torchtext, and others.

Captum is currently in beta and under active development!

About Captum

With the increase in model complexity and the resulting lack of transparency, model interpretability methods have become increasingly important. Model understanding is both an active area of research as well as an area of focus for practical applications across industries using machine learning. Captum provides state-of-the-art algorithms, including Integrated Gradients, to provide researchers and developers with an easy way to understand which features are contributing to a model’s output.

For model developers, Captum can be used to improve and troubleshoot models by facilitating the identification of different features that contribute to a model’s output in order to design better models and troubleshoot unexpected model outputs.

Captum helps ML researchers more easily implement interpretability algorithms that can interact with PyTorch models. Captum also allows researchers to quickly benchmark their work against other existing algorithms available in the library.

Target Audience

The primary audiences for Captum are model developers who are looking to improve their models and understand which features are important and interpretability researchers focused on identifying algorithms that can better interpret many types of models.

Captum can also be used by application engineers who are using trained models in production. Captum provides easier troubleshooting through improved model interpretability, and the potential for delivering better explanations to end users on why they’re seeing a specific piece of content, such as a movie recommendation.

Installation

Installation Requirements

  • Python >= 3.6
  • PyTorch >= 1.2
Installing the latest release

The latest release of Captum is easily installed either via Anaconda (recommended):

conda install captum -c pytorch

or via pip:

pip install captum

Manual / Dev install

If you'd like to try our bleeding edge features (and don't mind potentially running into the occasional bug here or there), you can install the latest master directly from GitHub. For a basic install, run:

git clone https://github.com/pytorch/captum.git
cd captum
pip install -e .

To customize the installation, you can also run the following variants of the above:

  • pip install -e .[insights]: Also installs all packages necessary for running Captum Insights.
  • pip install -e .[dev]: Also installs all tools necessary for development (testing, linting, docs building; see Contributing below).
  • pip install -e .[tutorials]: Also installs all packages necessary for running the tutorial notebooks.

To execute unit tests from a manual install, run:

# running a single unit test
python -m unittest -v tests.attr.test_saliency
# running all unit tests
pytest -ra

Getting Started

Captum helps you interpret and understand predictions of PyTorch models by exploring features that contribute to a prediction the model makes. It also helps understand which neurons and layers are important for model predictions.

Currently, the library uses gradient-based interpretability algorithms and attributes contributions to each input of the model with respect to different neurons and layers, both intermediate and final.

Let's apply some of those algorithms to a toy model we have created for demonstration purposes. For simplicity, we will use the following architecture, but users are welcome to use any PyTorch model of their choice.

import numpy as np

import torch
import torch.nn as nn

from captum.attr import (
    GradientShap,
    DeepLift,
    DeepLiftShap,
    IntegratedGradients,
    LayerConductance,
    NeuronConductance,
    NoiseTunnel,
)

class ToyModel(nn.Module):
    def __init__(self):
        super().__init__()
        self.lin1 = nn.Linear(3, 3)
        self.relu = nn.ReLU()
        self.lin2 = nn.Linear(3, 2)

        # initialize weights and biases
        self.lin1.weight = nn.Parameter(torch.arange(-4.0, 5.0).view(3, 3))
        self.lin1.bias = nn.Parameter(torch.zeros(1,3))
        self.lin2.weight = nn.Parameter(torch.arange(-3.0, 3.0).view(2, 3))
        self.lin2.bias = nn.Parameter(torch.ones(1,2))

    def forward(self, input):
        return self.lin2(self.relu(self.lin1(input)))

Let's create an instance of our model and set it to eval mode.

model = ToyModel()
model.eval()

Next, we need to define simple input and baseline tensors. Baselines belong to the input space and often carry no predictive signal. Zero tensor can serve as a baseline for many tasks. Some interpretability algorithms such as Integrated Gradients, Deeplift and GradientShap are designed to attribute the change between the input and baseline to a predictive class or a value that the neural network outputs.

We will apply model interpretability algorithms on the network mentioned above in order to understand the importance of individual neurons/layers and the parts of the input that play an important role in the final prediction.

To make computations deterministic, let's fix random seeds.

torch.manual_seed(123)
np.random.seed(123)

Let's define our input and baseline tensors. Baselines are used in some interpretability algorithms such as IntegratedGradients, DeepLift, GradientShap, NeuronConductance, LayerConductance, InternalInfluence and NeuronIntegratedGradients.

input = torch.rand(2, 3)
baseline = torch.zeros(2, 3)

Next we will use IntegratedGradients algorithms to assign attribution scores to each input feature with respect to the first target output.

ig = IntegratedGradients(model)
attributions, delta = ig.attribute(input, baseline, target=0, return_convergence_delta=True)
print('IG Attributions:', attributions)
print('Convergence Delta:', delta)

Output:

IG Attributions: tensor([[-0.5922, -1.5497, -1.0067],
                         [ 0.0000, -0.2219, -5.1991]])
Convergence Delta: tensor([2.3842e-07, -4.7684e-07])

The algorithm outputs an attribution score for each input element and a convergence delta. The lower the absolute value of the convergence delta the better is the approximation. If we choose not to return delta, we can simply not provide return_convergence_delta input argument. The absolute value of the returned deltas can be interpreted as an approximation error for each input sample. It can also serve as a proxy of how accurate the integral approximation for given inputs and baselines is. If the approximation error is large, we can try larger number of integral approximation steps by setting n_steps to a larger value. Not all algorithms return approximation error. Those which do, though, compute it based on the completeness property of the algorithms.

Positive attribution score means that the input in that particular position positively contributed to the final prediction and negative means the opposite. The magnitude of the attribution score signifies the strength of the contribution. Zero attribution score means no contribution from that particular feature.

Similarly, we can apply GradientShap, DeepLift and other attribution algorithms to the model.

GradientShap first chooses a random baseline from baselines' distribution, then adds gaussian noise with std=0.09 to each input example n_samples times. Afterwards, it chooses a random point between each example-baseline pair and computes the gradients with respect to target class (in this case target=0). Resulting attribution is the mean of gradients * (inputs - baselines)

gs = GradientShap(model)

# We define a distribution of baselines and draw `n_samples` from that
# distribution in order to estimate the expectations of gradients across all baselines
baseline_dist = torch.randn(10, 3) * 0.001
attributions, delta = gs.attribute(input, stdevs=0.09, n_samples=4, baselines=baseline_dist,
                                   target=0, return_convergence_delta=True)
print('GradientShap Attributions:', attributions)
print('Convergence Delta:', delta)

Output

GradientShap Attributions: tensor([[-0.1542, -1.6229, -1.5835],
                                   [-0.3916, -0.2836, -4.6851]])
Convergence Delta: tensor([ 0.0000, -0.0005, -0.0029, -0.0084, -0.0087, -0.0405,  0.0000, -0.0084])

Deltas are computed for each n_samples * input.shape[0] example. The user can, for instance, average them:

deltas_per_example = torch.mean(delta.reshape(input.shape[0], -1), dim=1)

in order to get per example average delta.

Below is an example of how we can apply DeepLift and DeepLiftShap on the ToyModel described above. Current implementation of DeepLift supports only Rescale rule. For more details on alternative implementations, please see the DeepLift paper.

dl = DeepLift(model)
attributions, delta = dl.attribute(input, baseline, target=0, return_convergence_delta=True)
print('DeepLift Attributions:', attributions)
print('Convergence Delta:', delta)

Output

DeepLift Attributions: tensor([[-0.5922, -1.5497, -1.0067],
                               [ 0.0000, -0.2219, -5.1991])
Convergence Delta: tensor([0., 0.])

DeepLift assigns similar attribution scores as IntegratedGradients to inputs, however it has lower execution time. Another important thing to remember about DeepLift is that it currently doesn't support all non-linear activation types. For more details on limitations of the current implementation, please see the DeepLift paper.

Similar to integrated gradients, DeepLift returns a convergence delta score per input example. The approximation error is then the absolute value of the convergence deltas and can serve as a proxy of how accurate the algorithm's approximation is.

Now let's look into DeepLiftShap. Similar to GradientShap, DeepLiftShap uses baseline distribution. In the example below, we use the same baseline distribution as for GradientShap.

dl = DeepLiftShap(model)
attributions, delta = dl.attribute(input, baseline_dist, target=0, return_convergence_delta=True)
print('DeepLiftSHAP Attributions:', attributions)
print('Convergence Delta:', delta)

Output

DeepLiftShap Attributions: tensor([[-5.9169e-01, -1.5491e+00, -1.0076e+00],
                                   [-4.7101e-03, -2.2300e-01, -5.1926e+00]], grad_fn=<MeanBackward1>)
Convergence Delta: tensor([-4.6120e-03, -1.6267e-03, -5.1045e-04, -1.4184e-03, -6.8886e-03,
                           -2.2224e-02,  0.0000e+00, -2.8790e-02, -4.1285e-03, -2.7295e-02,
                           -3.2349e-03, -1.6265e-03, -4.7684e-07, -1.4191e-03, -6.8889e-03,
                           -2.2224e-02,  0.0000e+00, -2.4792e-02, -4.1289e-03, -2.7296e-02])

DeepLiftShap uses DeepLift to compute attribution score for each input-baseline pair and averages it for each input across all baselines.

It computes deltas for each input example-baseline pair, thus resulting to input.shape[0] * baseline.shape[0] delta values.

Similar to GradientShap in order to compute example-based deltas we can average them per example:

deltas_per_example = torch.mean(delta.reshape(input.shape[0], -1), dim=1)

In order to smooth and improve the quality of the attributions we can run IntegratedGradients and other attribution methods through a NoiseTunnel. NoiseTunnel allows us to use SmoothGrad, SmoothGrad_Sq and VarGrad techniques to smoothen the attributions by aggregating them for multiple noisy samples that were generated by adding gaussian noise.

Here is an example how we can use NoiseTunnel with IntegratedGradients.

ig = IntegratedGradients(model)
nt = NoiseTunnel(ig)
attributions, delta = nt.attribute(input, nt_type='smoothgrad', stdevs=0.02, n_samples=4,
      baselines=baseline, target=0, return_convergence_delta=True)
print('IG + SmoothGrad Attributions:', attributions)
print('Convergence Delta:', delta)

Output

IG + SmoothGrad Attributions: tensor([[-0.4574, -1.5493, -1.0893],
                                      [ 0.0000, -0.2647, -5.1619]])
Convergence Delta: tensor([ 0.0000e+00,  2.3842e-07,  0.0000e+00, -2.3842e-07,  0.0000e+00,
        -4.7684e-07,  0.0000e+00, -4.7684e-07])

The number of elements in the delta tensor is equal to: n_samples * input.shape[0] In order to get a example-based delta, we can, for example, average them:

deltas_per_example = torch.mean(delta.reshape(input.shape[0], -1), dim=1)

Let's look into the internals of our network and understand which layers and neurons are important for the predictions.

We will start with the NeuronConductance. NeuronConductance helps us to identify input features that are important for a particular neuron in a given layer. It decomposes the computation of integrated gradients via the chain rule by defining the importance of a neuron as path integral of the derivative of the output with respect to the neuron times the derivatives of the neuron with respect to the inputs of the model.

In this case, we choose to analyze the first neuron in the linear layer.

nc = NeuronConductance(model, model.lin1)
attributions = nc.attribute(input, neuron_index=1, target=0)
print('Neuron Attributions:', attributions)

Output

Neuron Attributions: tensor([[ 0.0000,  0.0000,  0.0000],
                             [ 1.3358,  0.0000, -1.6811]])

Layer conductance shows the importance of neurons for a layer and given input. It is an extension of path integrated gradients for hidden layers and holds the completeness property as well.

It doesn't attribute the contribution scores to the input features but shows the importance of each neuron in selected layer.

lc = LayerConductance(model, model.lin1)
attributions, delta = lc.attribute(input, baselines=baseline, target=0, return_convergence_delta=True)
print('Layer Attributions:', attributions)
print('Convergence Delta:', delta)

Outputs

Layer Attributions: tensor([[ 0.0000,  0.0000, -3.0856],
                            [ 0.0000, -0.3488, -4.9638]], grad_fn=<SumBackward1>)
Convergence Delta: tensor([0.0630, 0.1084])

Similar to other attribution algorithms that return convergence delta, LayerConductance returns the deltas for each example. The approximation error is then the absolute value of the convergence deltas and can serve as a proxy of how accurate integral approximation for given inputs and baselines is.

More details on the list of supported algorithms and how to apply Captum on different types of models can be found in our tutorials.

Captum Insights

Captum provides a web interface called Insights for easy visualization and access to a number of our interpretability algorithms.

To analyze a sample model on CIFAR10 via Captum Insights run

python -m captum.insights.example

and navigate to the URL specified in the output.

Captum Insights Screenshot

To build Insights you will need Node >= 8.x and Yarn >= 1.5.

To build and launch from a checkout in a conda environment run

conda install -c conda-forge yarn
BUILD_INSIGHTS=1 python setup.py develop
python captum/insights/example.py

Captum Insights Jupyter Widget

Captum Insights also has a Jupyter widget providing the same user interface as the web app. To install and enable the widget, run

jupyter nbextension install --py --symlink --sys-prefix captum.insights.widget
jupyter nbextension enable captum.insights.widget --py --sys-prefix

To build the widget from a checkout in a conda environment run

conda install -c conda-forge yarn
BUILD_INSIGHTS=1 python setup.py develop

Contributing

See the CONTRIBUTING file for how to help out.

References for algorithms mentioned here

License

Captum is BSD licensed, as found in the LICENSE file.

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