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crowd-kit's Introduction

Crowd-Kit: Computational Quality Control for Crowdsourcing

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Crowd-Kit is a powerful Python library that implements commonly-used aggregation methods for crowdsourced annotation and offers the relevant metrics and datasets. We strive to implement functionality that simplifies working with crowdsourced data.

Currently, Crowd-Kit contains:

  • implementations of commonly-used aggregation methods for categorical, pairwise, textual, and segmentation responses
  • metrics of uncertainty, consistency, and agreement with aggregate
  • loaders for popular crowdsourced datasets

Installing

Installing Crowd-Kit is as easy as pip install crowd-kit

Getting Started

This example shows how to use Crowd-Kit for categorical aggregation using the classical Dawid-Skene algorithm.

First, let us do all the necessary imports.

from crowdkit.aggregation import DawidSkene
from crowdkit.datasets import load_dataset

import pandas as pd

Then, you need to read your annotations into Pandas DataFrame with columns task, performer, label. Alternatively, you can download an example dataset.

df = pd.read_csv('results.csv')  # should contain columns: task, performer, label
# df, ground_truth = load_dataset('relevance-2')  # or download an example dataset

Then you can aggregate the performer responses as easily as in scikit-learn:

aggregated_labels = DawidSkene(n_iter=100).fit_predict(df)

More usage examples

Implemented Aggregation Methods

Below is the list of currently implemented methods, including the already available (โœ…) and in progress (๐ŸŸก).

Categorical Responses

Method Status
Majority Vote โœ…
Dawid-Skene โœ…
Gold Majority Vote โœ…
M-MSR โœ…
Wawa โœ…
Zero-Based Skill โœ…
GLAD โœ…
BCC ๐ŸŸก

Textual Responses

Method Status
RASA โœ…
HRRASA โœ…
ROVER โœ…

Image Segmentation

Method Status
Segmentation MV โœ…
Segmentation RASA โœ…
Segmentation EM โœ…

Pairwise Comparisons

Method Status
Bradley-Terry โœ…
Noisy Bradley-Terry โœ…

Citation

@inproceedings{HCOMP2021/CrowdKit,
  author    = {Ustalov, Dmitry and Pavlichenko, Nikita and Losev, Vladimir and Giliazev, Iulian and Tulin, Evgeny},
  title     = {{A General-Purpose Crowdsourcing Computational Quality Control Toolkit for Python}},
  year      = {2021},
  booktitle = {The Ninth AAAI Conference on Human Computation and Crowdsourcing: Works-in-Progress and Demonstration Track},
  series    = {HCOMP~2021},
  eprint    = {2109.08584},
  eprinttype = {arxiv},
  eprintclass = {cs.HC},
  url       = {https://www.humancomputation.com/assets/wips_demos/HCOMP_2021_paper_85.pdf},
  language  = {english},
}

Questions and Bug Reports

License

ยฉ YANDEX LLC, 2020-2022. Licensed under the Apache License, Version 2.0. See LICENSE file for more details.

crowd-kit's People

Contributors

losik avatar alexdrydew avatar varfolomeii avatar dustalov avatar tulinev avatar yulian-gilyazev avatar arcadia-devtools avatar shadchin avatar

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