Metadata-Version: 2.1
Name: rake-new2
Version: 1.0.3
Summary: A Python library that enables smooth keyword extraction from any text using the RAKE(Rapid Automatic Keyword Extraction) algorithm.
Home-page: https://github.com/BALaka-18/rake_new2
Author: Balaka Biswas
Author-email: balaka2605@gmail.com
License: MIT
Platform: UNKNOWN
Classifier: License :: OSI Approved :: MIT License
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.7
Classifier: Operating System :: OS Independent
Requires-Python: >=3.6
Description-Content-Type: text/markdown
Requires-Dist: nltk

# rake_new2

rake_new2 is a Python library that enables simple and fast keyword extraction from any text. As the name implies, this library works on the RAKE(Rapid Automatic Keyword Extraction) algorithm. 

It tries to determine the key phrases in a text by calculating the co-occurrences of every word in a key phrase and also its frequency in the entire text.

## New in this version

1. Handles repetitive keywords/key-phrases

2. Handles consecutive punctuations.

3. Handles HTML tags in text : The user is allowed an option to choose if they want to keep HTML tags as keywords too.

## Installation

Use the package manager [pip](https://pip.pypa.io/en/stable/) to install rake_new2.

```bash
pip install rake_new2
```

## Quick Start

```python
from rake_new2 import Rake

text = "Red apples are good in taste."
text2 = "<h1> Hello world !</h1>"
rk,rk_new1,rk_new2 = Rake(),Rake(keep_html_tags=True),Rake(keep_html_tags=False)

# Case 1
# Initialize
rk.get_keywords_from_raw_text(text)
kw_s = rk.get_keywords_with_scores()  
# Returns keywords with degree scores : {(1.0, 'taste'), (1.0, 'good'), (4.0, 'red apples')}
kw = rk.get_ranked_keywords() 
# Returns keywords only : ['red apples', 'taste', 'good']
f = rk.get_word_freq()
# Returns word frequencies as a Counter object : {'red': 1, 'apples': 1, 'good': 1, 'taste': 1}
deg = rk.get_kw_degree()
# Returns word degrees as defaultdict object : {'red': 2.0, 'apples': 2.0, 'good': 1.0, 'taste': 1.0}

# Case 2 : Sample case for testing the 'keep_html_tags' parameter. Default = False
print("\nORIGINAL TEXT : {}".format(text))
# Sub Case 1 : Keeping the HTMLtags
rk_new1.get_keywords_from_raw_text(text2)
kw_s1 = rk_new1.get_keywords_with_scores()
kw1 = rk_new1.get_ranked_keywords()
print("Keeping the tags : ",kw1)

# Sub Case 2 : Eliminating the HTML tags
rk_new2.get_keywords_from_raw_text(text2)
kw_s2 = rk_new2.get_keywords_with_scores()
kw2 = rk_new2.get_ranked_keywords()
print("Eliminating the tags : ",kw2)

'''OUTPUT >>
ORIGINAL TEXT : <h1> Hello world !</h1>
Keeping the tags and not ranked :  {'h1', 'hello'}
Eliminating the tags and ranked :  {'hello world'} 
'''
```


## Debugging
You might come across a stopwords error.

It implies that you do not have the stopwords corpus downloaded from NLTK. 

To download it, use the command below.

```python
python -c "import nltk; nltk.download('stopwords')"
```

## Contributing
Pull requests are welcome. For major changes, please open an issue first to discuss what you would like to change.

Please make sure to update tests as appropriate.

## License
[MIT](https://choosealicense.com/licenses/mit/)

