Analyse data from open card sorting
Project description
Cardsort analysis
A package that helps UX researchers quickly analyse data from cardsorting exercises.
More precisely, it helps you to:
- Create dendrograms
- Extract user-generated category-labels
- Using data exports from kardsort.com
Table of Contents
Documentation
Quick start
Installation
$ pip install cardsort
Usage
cardsort
can be used to create dendrograms and extract user-generated category-labels:
from cardsort import analysis
import pandas as pd
path = "example-data.csv" # data with columns: card_id, card_label, category_id, category_label, user_id
df = pd.read_csv(path)
Create a dendrogram that summarizes user-generated clusters
analysis.create_dendrogram(df)
Output
Learn which category labels users gave to clusters
cards = ['Banana', 'Apple']
analysis.get_cluster_labels(df, cards)
Output
['Healthy snacks', 'Snacks', 'Fruits', 'Food']
Accepted data
- This package works with data exports from kardsort.com (Export format 'Casolysis Data (.csv) - Recommended')
- This data equals the following structure:
card_id, card_label, category_id, category_label, user_id
Advanced usage
See documentation
Contributing
Interested in contributing? Check out the contributing guidelines. Please note that this project is released with a Code of Conduct. By contributing to this project, you agree to abide by its terms.
License
cardsort
was created by Katharina Kloppenborg and is licensed under the terms of the MIT license.
Credits
cardsort
was created with cookiecutter
and the py-pkgs-cookiecutter
template.
Project details
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