Summary Explorer is a tool to visually explore the state-of-the-art in text summarization.

Overview

Summary Explorer

Summary Explorer is a tool to visually inspect the summaries from several state-of-the-art neural summarization models across multiple datasets. It provides a guided assessment of summary quality dimensions such as coverage, faithfulness and position bias. You can inspect summaries from a single model or compare multiple models.

The tool currently hosts the outputs of 55 summarization models across three datasets: CNN DailyMail, XSum, and Webis TL;DR.

To integrate your model in Summary Explorer, please prepare your summaries as described here and contact us.

Use cases

1. View Content Coverage of the Summaries Content Coverage

2. Inspect Hallucinations Hallucinations

3. View Named Entity Coverage of the Summaries Named Entity Coverage

4. Inspect Faithfulness via Relation Alignment Relation Coverage

5. Compare Agreement among Summaries Summary Agreement

6. View Position Bias of a Model Position Bias

Local Deployment

Download the database dump from here and set up the tool as instructed here. The text processing pipeline and sample data can be found here.

Note: The tool is in active development and we plan to add new features. Please feel free to report any issues and provide suggestions.

Citation

@misc{syed2021summary,
      title={Summary Explorer: Visualizing the State of the Art in Text Summarization}, 
      author={Shahbaz Syed and Tariq Yousef and Khalid Al-Khatib and Stefan Jänicke and Martin Potthast},
      year={2021},
      eprint={2108.01879},
      archivePrefix={arXiv},
      primaryClass={cs.CL}
}

Acknowledgements

We sincerely thank all the authors who made their code and model outputs publicly available, meta evaluations of Fabbri et al., 2020 and Bhandari et al., 2020, and the summarization leaderboard at NLP-Progress.

We hope this encourages more authors to share their models and summaries to help track the qualitative progress in text summarization research.

Owner
Webis
Web Technology & Information Systems Group (Webis Group)
Webis
pytorch implementation of "Distilling a Neural Network Into a Soft Decision Tree"

Soft-Decision-Tree Soft-Decision-Tree is the pytorch implementation of Distilling a Neural Network Into a Soft Decision Tree, paper recently published

Kim Heecheol 262 Dec 04, 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
🎆 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
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
Logging MXNet data for visualization in TensorBoard.

Logging MXNet Data for Visualization in TensorBoard Overview MXBoard provides a set of APIs for logging MXNet data for visualization in TensorBoard. T

Amazon Web Services - Labs 327 Dec 05, 2022
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
👋🦊 Xplique is a Python toolkit dedicated to explainability, currently based on Tensorflow.

👋🦊 Xplique is a Python toolkit dedicated to explainability, currently based on Tensorflow.

DEEL 343 Jan 02, 2023
Interactive convnet features visualization for Keras

Quiver Interactive convnet features visualization for Keras The quiver workflow Video Demo Build your model in keras model = Model(...) Launch the vis

Keplr 1.7k Dec 21, 2022
A library for debugging/inspecting machine learning classifiers and explaining their predictions

ELI5 ELI5 is a Python package which helps to debug machine learning classifiers and explain their predictions. It provides support for the following m

2.6k Dec 30, 2022
A library that implements fairness-aware machine learning algorithms

Themis ML themis-ml is a Python library built on top of pandas and sklearnthat implements fairness-aware machine learning algorithms. Fairness-aware M

Niels Bantilan 105 Dec 30, 2022
Python implementation of R package breakDown

pyBreakDown Python implementation of breakDown package (https://github.com/pbiecek/breakDown). Docs: https://pybreakdown.readthedocs.io. Requirements

MI^2 DataLab 41 Mar 17, 2022
Code for "High-Precision Model-Agnostic Explanations" paper

Anchor This repository has code for the paper High-Precision Model-Agnostic Explanations. An anchor explanation is a rule that sufficiently “anchors”

Marco Tulio Correia Ribeiro 735 Jan 05, 2023
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
⬛ Python Individual Conditional Expectation Plot Toolbox

⬛ PyCEbox Python Individual Conditional Expectation Plot Toolbox A Python implementation of individual conditional expecation plots inspired by R's IC

Austin Rochford 140 Dec 30, 2022
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
Neural network visualization toolkit for tf.keras

Neural network visualization toolkit for tf.keras

Yasuhiro Kubota 262 Dec 19, 2022
PyTorch implementation of DeepDream algorithm

neural-dream This is a PyTorch implementation of DeepDream. The code is based on neural-style-pt. Here we DeepDream a photograph of the Golden Gate Br

121 Nov 05, 2022
Making decision trees competitive with neural networks on CIFAR10, CIFAR100, TinyImagenet200, Imagenet

Neural-Backed Decision Trees · Site · Paper · Blog · Video Alvin Wan, *Lisa Dunlap, *Daniel Ho, Jihan Yin, Scott Lee, Henry Jin, Suzanne Petryk, Sarah

Alvin Wan 556 Dec 20, 2022
Implementation of linear CorEx and temporal CorEx.

Correlation Explanation Methods Official implementation of linear correlation explanation (linear CorEx) and temporal correlation explanation (T-CorEx

Hrayr Harutyunyan 34 Nov 15, 2022
Convolutional neural network visualization techniques implemented in PyTorch.

This repository contains a number of convolutional neural network visualization techniques implemented in PyTorch.

1 Nov 06, 2021