Skip to main content

Animated version of classic word cloud for time-series text data

Project description

pypi python License: MIT

AnimatedWordCloud

Animated version of classic word cloud for time-series text data

Classic word cloud graph does not consider the time variation in text data. Animated word cloud improves on this and displays text datasets collected over multiple periods in a single MP4 file. The core framework for the animation of word frequencies was developed by Michael Cane in the WordsSwarm project. AnimatedWordCloud makes the codes efficiently work on various text datasets of the Latin alphabet languages.

Installation

It requires Python 3.8, Box2D, beautifulsoup4, pygame, PyQt6 - visualization, Arabica and ftfy for text preprocessing.

To install using pip, use:

pip install AnimatedWordCloud

AnimatedWordCloud has been tested with PyCharm community ed. It's recommended to use this IDE and run .py files instead .ipynb.

Usage

  • Import the library:
from AnimatedWordCloud import animated_word_cloud
  • Generate frames:

animated_word_cloud generates 90 png word cloud images per period. It scales word frequencies to display word clouds on text datasets of different sizes. Frames are stored in the working directory in the newly created .post_processing/frames folder. It currently provides unigram frequencies (bigram frequencies will be added later). It reads dates in:

  • US-style: MM/DD/YYYY (2013-12-31, Feb-09-2009, 2013-12-31 11:46:17, etc.)
  • European-style: DD/MM/YYYY (2013-31-12, 09-Feb-2009, 2013-31-12 11:46:17, etc.) date and datetime formats.

It automatically cleans data from punctuation and numbers on input. It can also remove the standard list(s) of stopwods for languages in the NLTK corpus of stopwords.

def animated_word_cloud(text: str,         # Text
                        time: str,         # Time
                        date_format: str,  # Date format: 'eur' - European, 'us' - American
                        ngram: int,        # N-gram order, 1 = unigram     
                        freq: str ,        # Aggregation period: 'Y'/'M'
                        stopwords: [],     # Languages for stop words
                        skip: []           # Remove additional stop words 
) 

To apply the method, use:

import pandas as pd
data = pd.read_csv("data.csv")
animated_word_cloud(text = data['text'],                         # Read text column
                    time = data['date'],                         # Read date column
                    date_format = 'us',                          # Specify date format
                    ngram = 1,                                   # Show individual word frequencies
                    freq ='Y',                                   # Yearly frequency
                    stopwords = ['english', 'german','french'],  # Clean from English, German and French stop words
                    skip = ['good', 'bad','yellow'])             # Remove 'good', 'bad', and 'yellow' as additional stop words                                                               
  • Create video from frames:

Download the ffmpeg folder and the frames2video.bat file from here and place them into the postprocessing folder. Next, run frames2video.bat, which will generate a wordSwarmOut.mp4 file, which is the desired output.

AnimatedWordCloud

Documentation, examples and tutorials

Data Storytelling with Animated Word Clouds

  • For more examples of coding, read these tutorials: TBA

Here are examples of animated word clouds:

Research trends in Economics Youtube

European Central Bankers' speeches Youtube


Please visit here for any questions, issues, bugs, and suggestions.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

AnimatedWordCloud-1.0.7.tar.gz (35.1 MB view hashes)

Uploaded Source

Built Distribution

AnimatedWordCloud-1.0.7-py3-none-any.whl (35.3 MB view hashes)

Uploaded Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page