Wikipedia Analysis Toolkit
Project description
Knolml-Analysis-Package
The aim of this project is to do various types of analysis on knolml which can be used by a reseracher who is working on wikipedia data.
Analysis1: Controversy Analysis using wiki-links
To measure the relative controversy level of various wiki-links present in a wikipedia article.
Input Format: python3 script_name input_file_name
Example: python3 controversy_analysis.py 2006_Westchester_County_torna.knolml
Analysis2: Contributions of an author over a given period of time in a wikipedia article
To find contributions of an author in terms of words, sentences, bytes etc over a given period of time (given starting and ending dates)
Input Format: python3 script_name input_file_name start_date(YYYY-MM-DD) end_date(YYYY-MM-DD) --flag(sentences/bytes/wikilinks/words)
Example: python3 author_contribution.py 2006_Westchester_County_torna.knolml 2000-01-01 2010-01-01 --bytes
Analysis3: Ranking all the authors based on their contribution to a given paragraph
To rank all the authors of a wikipedia article based on their contribution to a particular paragraph present in the article. The paragraph will be given as input to the program.
Input Format: python3 script_name input_file_name
Example: python3 rank_authors_based_on_para_contr.py 2006_Westchester_County_torna.knolml
Analysis4: Finding knowledge gaps in a wikipedia article
A wikipedia article represents knowledge about some related topics, like a wikipedia article on IIT Ropar may be talking about placements of IIT Ropar in a particular section. But, in this section there was no information regarding a new branch say Biotechnology which was newly introduced. So, can we write a Python program that can tell that the information regarding placements of Biotechnology is missing from the IIT Ropar wikipedia page? Or in general can we tell that there is a knowledge gap in a wikipedia article?
Steps to find external knowledge gaps:-
- Select a book from books folder as input file for segmentation and run python3 start_segmentation.py books/[book_name]
- Segments would be written in segmentaion_result.csv file
- Now we will do external segmentation using segmentaion_result.csv, run python3 find_external_gaps.py
- You can find the External Knowledge gaps in external_gaps.txt file
Steps to train word2vec (Optional):-
- You are already provided with a trained word2vec (wrdvecs-text8.bin), you have to delete it first
- Once the trained model is deleted, supply a coprus with name text8 and simply run the code
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Hashes for kml-analysis-parasKumarSahu-0.0.18.tar.gz
Algorithm | Hash digest | |
---|---|---|
SHA256 | dc336bcf056e8739912b7efc352e3ad85b155aad7bf481ed40d488c7d3669b9d |
|
MD5 | 532a70c98decd93bfb428feee2f16351 |
|
BLAKE2b-256 | 01d75578ea797c78f8c2f2afb6e99a8d09210354e730fac98bff7184ee464ffa |
Hashes for kml_analysis_parasKumarSahu-0.0.18-py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | ae93f293eb8101134791dd27675e194120815c079415d1d91197a28c7834dd70 |
|
MD5 | c269e4e2791ff1503960f0d4fd24f926 |
|
BLAKE2b-256 | 96391fb7d1c914c3a0e79225af436d6fecef68e1aa4c71491e24d31b8f1e1f3f |