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TimeSHAP

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TimeSHAP is a model-agnostic, recurrent explainer that builds upon KernelSHAP and extends it to the sequential domain. TimeSHAP computes event/timestamp- feature-, and cell-level attributions. As sequences can be arbitrarily long, TimeSHAP also implements a pruning algorithm based on Shapley Values, that finds a subset of consecutive, recent events that contribute the most to the decision.

This repository is the code implementation of the TimeSHAP algorithm present in the paper TimeSHAP: Explaining Recurrent Models through Sequence Perturbations published at KDD 2021.

Links to the paper here, and to the video presentation here.

Install TimeSHAP

Via Pip
pip install timeshap
Via Github

Clone the repository into a local directory using:

git clone https://github.com/feedzai/timeshap.git

Move into the cloned repo and install the package:

cd timeshap
pip install .
Test your installation

Start a Python session in your terminal using

python

And import TimeSHAP

import timeshap

TimeSHAP in 30 seconds

Inputs

  • Model being explained;
  • Instance(s) to explain;
  • Background instance.

Outputs

  • Local pruning output; (explaining a single instance)
  • Local event explanations; (explaining a single instance)
  • Local feature explanations; (explaining a single instance)
  • Global pruning statistics; (explaining multiple instances)
  • Global event explanations; (explaining multiple instances)
  • Global feature explanations; (explaining multiple instances)

Model Interface

In order for TimeSHAP to explain a model, an entry point must be provided. This Callable entry point must receive a 3-D numpy array, (#sequences; #sequence length; #features) and return a 2-D numpy array (#sequences; 1) with the corresponding score of each sequence.

In addition, to make TimeSHAP more optimized, it is possible to return the hidden state of the model together with the score (if applicable). Although this is optional, we highly recommended it, as it has a very high impact. If you choose to return the hidden state, this hidden state should either be: (see notebook for specific examples)

  • a 3-D numpy array, (#rnn layers, #sequences, #hidden_dimension) (class ExplainedRNN on notebook);
  • a tuple of numpy arrays that follows the previously described characteristic (usually used when using stacked RNNs with different hidden dimensions) (class ExplainedGRU2Layer on notebook);
  • a tuple of tuples of numpy arrays (usually used when using LSTM's) (class ExplainedLSTM on notebook);; TimeSHAP is able to explain any black-box model as long as it complies with the previously described interface, including both PyTorch and TensorFlow models, both examplified in our tutorials (PyTorch, TensorFlow).

Example provided in our tutorials:

  • TensorFLow
model = tf.keras.models.Model(inputs=inputs, outputs=ff2)
f = lambda x: model.predict(x)
  • Pytorch - (Example where model receives and returns hidden states)
model_wrapped = TorchModelWrapper(model)
f_hs = lambda x, y=None: model_wrapped.predict_last_hs(x, y)
Model Wrappers

In order to facilitate the interface between models and TimeSHAP, TimeSHAP implements ModelWrappers. These wrappers, used on the PyTorch tutorial notebook, allow for greater flexibility of explained models as they allow:

  • Batching logic: useful when using very large inputs or NSamples, which cannot fit on GPU memory, and therefore batching mechanisms are required;
  • Input format/type: useful when your model does not work with numpy arrays. This is the case of our provided PyToch example;
  • Hidden state logic: useful when the hidden states of your models do not match the hidden state format required by TimeSHAP

TimeSHAP Explanation Methods

TimeSHAP offers several methods to use depending on the desired explanations. Local methods provide detailed view of a model decision corresponding to a specific sequence being explained. Global methods aggregate local explanations of a given dataset to present a global view of the model.

Local Explanations

Pruning

local_pruning() performs the pruning algorithm on a given sequence with a given user defined tolerance and returns the pruning index along the information for plotting.

plot_temp_coalition_pruning() plots the pruning algorithm information calculated by local_pruning().

Event level explanations

local_event() calculates event level explanations of a given sequence with the user-given parameteres and returns the respective event-level explanations.

plot_event_heatmap() plots the event-level explanations calculated by local_event().

Feature level explanations

local_feat() calculates feature level explanations of a given sequence with the user-given parameteres and returns the respective feature-level explanations.

plot_feat_barplot() plots the feature-level explanations calculated by local_feat().

Cell level explanations

local_cell_level() calculates cell level explanations of a given sequence with the respective event- and feature-level explanations and user-given parameteres, returing the respective cell-level explanations.

plot_cell_level() plots the feature-level explanations calculated by local_cell_level().

Local Report

local_report() calculates TimeSHAP local explanations for a given sequence and plots them.

Global Explanations

Global pruning statistics

prune_all() performs the pruning algorithm on multiple given sequences.

pruning_statistics() calculates the pruning statistics for several user-given pruning tolerances using the pruning data calculated by prune_all(), returning a pandas.DataFrame with the statistics.

Global event level explanations

event_explain_all() calculates TimeSHAP event level explanations for multiple instances given user defined parameters.

plot_global_event() plots the global event-level explanations calculated by event_explain_all().

Global feature level explanations

feat_explain_all() calculates TimeSHAP feature level explanations for multiple instances given user defined parameters.

plot_global_feat() plots the global feature-level explanations calculated by feat_explain_all().

Global report

global_report() calculates TimeSHAP explanations for multiple instances, aggregating the explanations on two plots and returning them.

Tutorial

In order to demonstrate TimeSHAP interfaces and methods, you can consult AReM.ipynb. In this tutorial we get an open-source dataset, process it, train Pytorch recurrent model with it and use TimeSHAP to explain it, showcasing all previously described methods.

Additionally, we also train a TensorFlow model on the same dataset AReM_TF.ipynb.

Repository Structure

Citing TimeSHAP

@inproceedings{bento2021timeshap,
    author = {Bento, Jo\~{a}o and Saleiro, Pedro and Cruz, Andr\'{e} F. and Figueiredo, M\'{a}rio A.T. and Bizarro, Pedro},
    title = {TimeSHAP: Explaining Recurrent Models through Sequence Perturbations},
    year = {2021},
    isbn = {9781450383325},
    publisher = {Association for Computing Machinery},
    address = {New York, NY, USA},
    url = {https://doi.org/10.1145/3447548.3467166},
    doi = {10.1145/3447548.3467166},
    booktitle = {Proceedings of the 27th ACM SIGKDD Conference on Knowledge Discovery & Data Mining},
    pages = {2565–2573},
    numpages = {9},
    keywords = {SHAP, Shapley values, TimeSHAP, XAI, RNN, explainability},
    location = {Virtual Event, Singapore},
    series = {KDD '21}
}