⬛ Python Individual Conditional Expectation Plot Toolbox

Overview

PyCEbox

Python Individual Conditional Expectation Plot Toolbox

Individual conditional expectation plot

A Python implementation of individual conditional expecation plots inspired by R's ICEbox. Individual conditional expectation plots were introduced in Peeking Inside the Black Box: Visualizing Statistical Learning with Plots of Individual Conditional Expectation (arXiv:1309.6392).

Quickstart

pycebox is available on PyPI and can be installed with pip install pycebox.

The tutorial recreates the first example in the above paper using pycebox.

Development

For easy development and prototyping using IPython notebooks, a Docker environment is included. To run an IPython notebook with access to your development version of pycebox, run PORT=8889 sh ./start_container.sh. A Jupyter notebook server with access to your development version of pycebox should be available at http://localhost:8889/tree.

To run the pycebox's tests in your development container

  1. Access a bash shell on the container with docker exec -it pycebox bash.
  2. Change to the pycebox directory with cd ../pycebox
  3. Run the tests with pytest test/test.py

Documentation

For details of pycebox's API, consult the documentation.

License

This library is distributed under the MIT License.

Comments
  • Typo in ice_plot() regarding _get_quantiles()

    Typo in ice_plot() regarding _get_quantiles()

    There is a typo in the ice_plot() function when calling the _get_quantiles() function. In lines 124 and 137, the ice_plot() calls __get_quantiles() (which is undefined) instead of _get_quantiles(), which results in an error if trying to use quantiles or center the ICE curves.

    opened by savvastj 6
  • Using predicted probabilities for binary classification

    Using predicted probabilities for binary classification

    Is there any way to give some form of predict_proba function to the ice() function in order to see the probability as opposed to the prediction?

    Thanks! Nema

    opened by nemasobhani 1
  • Plot mistake

    Plot mistake

    There is a problem in the visualization part. When I am trying to plot the graph in the example, I see the following mistake:


    TypeError Traceback (most recent call last) in 12 ice_plot(ice_df, frac_to_plot=0.1, 13 color_by='x3', cmap=PuOr, ---> 14 ax=ice_ax); 15 16 ice_ax.set_xlabel('$X_2$');

    C:\ProgramData\Anaconda3\lib\site-packages\pycebox\ice.py in ice_plot(ice_data, frac_to_plot, plot_points, point_kwargs, x_quantile, plot_pdp, centered, centered_quantile, color_by, cmap, ax, pdp_kwargs, **kwargs) 128 if frac_to_plot < 1.: 129 n_cols = ice_data.shape[1] --> 130 icols = np.random.choice(n_cols, size=frac_to_plot * n_cols, replace=False) 131 plot_ice_data = ice_data.iloc[:, icols] 132 else:

    mtrand.pyx in mtrand.RandomState.choice()

    TypeError: 'float' object cannot be interpreted as an integer

    opened by karakol15 4
  • "frac_to_plot" parameter in ice_plot

    Hey Austin,

    This package rocks, thanks for publishing it!

    I have a question and a potential small bug in the ice_plot method, specifically on the "frac_to_plot" parameter.

    It is my understanding that you simply take the fraction and multiply by the number of columns, and then pass this to the "size" parameter of np.random.choice(). I think we should make sure that the number being passed is an integer, not a float. Otherwise np.random.choice() will not accept a float as a parameter for "size".

    Current: icols = np.random.choice(n_cols, size=frac_to_plot * n_cols, replace=False)

    Fix: icols = np.random.choice(n_cols, size=int(frac_to_plot * n_cols), replace=False)

    Best, Andrew

    opened by andrew-cho 1
  • Extended use to classification models, fixed typecast bug

    Extended use to classification models, fixed typecast bug

    • Extended use to classification models by allowing predict_proba to be passed to the ice_plot function.
    • Fixed 'type error when size is non-int' error for np.random.choice function
    opened by sanjifr3 0
  • Averaging ICE plots across multiple runs/folds of a model

    Averaging ICE plots across multiple runs/folds of a model

    Hi Austin,

    I was wondering if it is possible to average across multiple runs/folds of the same model.

    I am trying at the moment, but the resulting ICE plots do not make sense. The per run plots make sense but when I average them across both runs and folds the data gets screwed.

    Cheers,

    Dan

    opened by danieltudosiu 0
Releases(0.0.1)
Owner
Austin Rochford
Chief Data Scientist @ Kibo Commerce, recovering mathematician, enthusiastic Bayesian
Austin Rochford
A data-driven approach to quantify the value of classifiers in a machine learning ensemble.

Documentation | External Resources | Research Paper Shapley is a Python library for evaluating binary classifiers in a machine learning ensemble. The

Benedek Rozemberczki 187 Dec 27, 2022
Tool for visualizing attention in the Transformer model (BERT, GPT-2, Albert, XLNet, RoBERTa, CTRL, etc.)

Tool for visualizing attention in the Transformer model (BERT, GPT-2, Albert, XLNet, RoBERTa, CTRL, etc.)

Jesse Vig 4.7k Jan 01, 2023
Visualization Toolbox for Long Short Term Memory networks (LSTMs)

Visualization Toolbox for Long Short Term Memory networks (LSTMs)

Hendrik Strobelt 1.1k Jan 04, 2023
Quickly and easily create / train a custom DeepDream model

Dream-Creator This project aims to simplify the process of creating a custom DeepDream model by using pretrained GoogleNet models and custom image dat

56 Jan 03, 2023
An Empirical Review of Optimization Techniques for Quantum Variational Circuits

QVC Optimizer Review Code for the paper "An Empirical Review of Optimization Techniques for Quantum Variational Circuits". Each of the python files ca

Owen Lockwood 5 Jun 28, 2022
Neural network visualization toolkit for tf.keras

Neural network visualization toolkit for tf.keras

Yasuhiro Kubota 262 Dec 19, 2022
Lime: Explaining the predictions of any machine learning classifier

lime This project is about explaining what machine learning classifiers (or models) are doing. At the moment, we support explaining individual predict

Marco Tulio Correia Ribeiro 10.3k Jan 01, 2023
Visualizer for neural network, deep learning, and machine learning models

Netron is a viewer for neural network, deep learning and machine learning models. Netron supports ONNX (.onnx, .pb, .pbtxt), Keras (.h5, .keras), Tens

Lutz Roeder 20.9k Dec 28, 2022
A ultra-lightweight 3D renderer of the Tensorflow/Keras neural network architectures

A ultra-lightweight 3D renderer of the Tensorflow/Keras neural network architectures

Souvik Pratiher 16 Nov 17, 2021
Model analysis tools for TensorFlow

TensorFlow Model Analysis TensorFlow Model Analysis (TFMA) is a library for evaluating TensorFlow models. It allows users to evaluate their models on

1.2k Dec 26, 2022
Contrastive Explanation (Foil Trees), developed at TNO/Utrecht University

Contrastive Explanation (Foil Trees) Contrastive and counterfactual explanations for machine learning (ML) Marcel Robeer (2018-2020), TNO/Utrecht Univ

M.J. Robeer 41 Aug 29, 2022
TensorFlowTTS: Real-Time State-of-the-art Speech Synthesis for Tensorflow 2 (supported including English, Korean, Chinese, German and Easy to adapt for other languages)

🤪 TensorFlowTTS provides real-time state-of-the-art speech synthesis architectures such as Tacotron-2, Melgan, Multiband-Melgan, FastSpeech, FastSpeech2 based-on TensorFlow 2. With Tensorflow 2, we c

3k Jan 04, 2023
JittorVis - Visual understanding of deep learning model.

JittorVis - Visual understanding of deep learning model.

182 Jan 06, 2023
Lucid library adapted for PyTorch

Lucent PyTorch + Lucid = Lucent The wonderful Lucid library adapted for the wonderful PyTorch! Lucent is not affiliated with Lucid or OpenAI's Clarity

Lim Swee Kiat 520 Dec 26, 2022
Portal is the fastest way to load and visualize your deep neural networks on images and videos 🔮

Portal is the fastest way to load and visualize your deep neural networks on images and videos 🔮

Datature 243 Jan 05, 2023
Visualization toolkit for neural networks in PyTorch! Demo -->

FlashTorch A Python visualization toolkit, built with PyTorch, for neural networks in PyTorch. Neural networks are often described as "black box". The

Misa Ogura 692 Dec 29, 2022
Delve is a Python package for analyzing the inference dynamics of your PyTorch model.

Delve is a Python package for analyzing the inference dynamics of your PyTorch model.

Delve 73 Dec 12, 2022
Visualize a molecule and its conformations in Jupyter notebooks/lab using py3dmol

Mol Viewer This is a simple package wrapping py3dmol for a single command visualization of a RDKit molecule and its conformations (embed as Conformer

Benoît BAILLIF 1 Feb 11, 2022
A collection of research papers and software related to explainability in graph machine learning.

A collection of research papers and software related to explainability in graph machine learning.

AstraZeneca 1.9k Dec 26, 2022
🎆 A visualization of the CapsNet layers to better understand how it works

CapsNet-Visualization For more information on capsule networks check out my Medium articles here and here. Setup Use pip to install the required pytho

Nick Bourdakos 387 Dec 06, 2022